This document summarizes a study on quantum phase transitions in small spinless fermion systems and their comparison to infinitely large systems. The study evaluates a one-dimensional model of spinless fermions with nearest neighbor interactions. For small system sizes, certain evolutionary behaviors were observed as the number of sites increased, though no direct phase transitions could be analyzed due to limitations of computer capabilities. The document outlines the model, methodology using Hamiltonian matrices, and presents some initial results on systems with interaction strength U=0.
Decohering environment and coupled quantum states and internal resonance in ...Alexander Decker
This document summarizes research on coupled quantum systems and decoherence. It discusses decoherence occurring when a quantum system interacts with its environment, preventing quantum superposition states from interfering. Decoherence is important for the emergence of classical physics from quantum mechanics. The document also summarizes studies on coupled quantum dots, electron-phonon coupling in nanostructures, cooling of weakly coupled quantum systems, and protecting quantum gates from decoherence through dynamical decoupling techniques.
The document discusses the GRID Extra Dimensions Theory, which proposes that:
- Space and time are quantized into discrete units called quantum cells around the size of the Planck length.
- New non-local dimensions called the GRID exist between these quantum cells and are responsible for quantum phenomena like entanglement.
- These extra dimensions allow for instantaneous "spooky action at a distance" by enabling immediate signaling between quantum cells, bypassing the speed of light.
Quantum mechanics is the science of the very small that explains the behavior of matter and energy at the atomic and subatomic level. Some key aspects of quantum mechanics include wave-particle duality, Heisenberg's uncertainty principle, Schrodinger's wave equation, quantum superposition, quantum entanglement, and more. Many experiments such as the double slit experiment provide evidence of these quantum effects.
1) Quantum entanglement is a property where quantum states of objects cannot be described independently, even if separated spatially. A practical example involves two cups of hot chocolate where tasting one instantly reveals the other's state.
2) Bra-ket notation is used to describe quantum states as vectors or functionals in a Hilbert space. Operators act on these states to model physical quantities.
3) A qubit is the quantum analogue of a classical bit, existing in superposition of states |0> and |1>. Quantum computers use entanglement between qubits to perform computations in parallel.
The document provides an overview of the EPR paradox proposed by Einstein, Podolsky and Rosen in 1935. The key points are:
1) The EPR paradox uses a thought experiment involving two entangled particles to argue that quantum mechanics provides an incomplete description of physical reality.
2) By measuring properties of one particle, corresponding properties of the distant entangled particle can be known instantaneously, appearing to violate relativistic constraints on information transfer.
3) While Einstein believed there were "hidden variables" not accounted for in quantum mechanics, experiments have verified quantum mechanics and shown that measurements do not reveal pre-existing states.
Translation of four dimensional axes anywhere within the spatial and temporal boundaries of the universe would require quantitative values from convergence between parameters that reflect these limits. The presence of entanglement and volumetric velocities indicates that the initiating energy for displacement and transposition of axes would be within the upper limit of the rest mass of a single photon which is the same order of magnitude as a macroscopic Hamiltonian of the modified Schrödinger wave function. The representative metaphor is that any local 4-D geometry, rather than displaying restricted movement through Minkowskian space, would instead expand to the total universal space-time volume before re-converging into another location where it would be subject to cause-effect. Within this transient context the contributions from the anisotropic features of entropy and the laws of thermodynamics would be minimal. The central operation of a fundamental unit of 10-20 J, the hydrogen line frequency, and the Bohr orbital time for ground state electrons would be required for the relocalized manifestation. Similar quantified convergence occurs for the ~1012 parallel states within space per Planck’s time which solve for phase-shift increments where Casimir and magnetic forces intersect. Experimental support for these interpretations and potential applications is considered. The multiple, convergent solutions of basic universal quantities suggest that translations of spatial axes into adjacent spatial states and the transposition of four dimensional configurations any where and any time within the universe may be accessed but would require alternative perspectives and technologies.
Oxford graduate lectures on "Quantum Chromodynamics and LHC phenomenology" Pa...juanrojochacon
- The document discusses the renormalization group and asymptotic freedom in quantum chromodynamics (QCD).
- It explains how the renormalization group allows the dependence of the running QCD coupling constant on energy scale to be determined. The coupling decreases with increasing scale, a phenomenon known as asymptotic freedom.
- While asymptotic freedom means QCD becomes a free theory at very high energies, confinement is observed at low energies where perturbation theory breaks down. Non-perturbative methods are needed to understand confinement fully.
Quantum mechanics describes quantum states that can exist in superposition, where an element can exist in multiple states simultaneously. When measured, the element collapses into a single definite state. Quantum computing uses this principle of superposition, where qubits can represent 0 and 1 simultaneously, allowing massive parallelism that exceeds classical computers.
Decohering environment and coupled quantum states and internal resonance in ...Alexander Decker
This document summarizes research on coupled quantum systems and decoherence. It discusses decoherence occurring when a quantum system interacts with its environment, preventing quantum superposition states from interfering. Decoherence is important for the emergence of classical physics from quantum mechanics. The document also summarizes studies on coupled quantum dots, electron-phonon coupling in nanostructures, cooling of weakly coupled quantum systems, and protecting quantum gates from decoherence through dynamical decoupling techniques.
The document discusses the GRID Extra Dimensions Theory, which proposes that:
- Space and time are quantized into discrete units called quantum cells around the size of the Planck length.
- New non-local dimensions called the GRID exist between these quantum cells and are responsible for quantum phenomena like entanglement.
- These extra dimensions allow for instantaneous "spooky action at a distance" by enabling immediate signaling between quantum cells, bypassing the speed of light.
Quantum mechanics is the science of the very small that explains the behavior of matter and energy at the atomic and subatomic level. Some key aspects of quantum mechanics include wave-particle duality, Heisenberg's uncertainty principle, Schrodinger's wave equation, quantum superposition, quantum entanglement, and more. Many experiments such as the double slit experiment provide evidence of these quantum effects.
1) Quantum entanglement is a property where quantum states of objects cannot be described independently, even if separated spatially. A practical example involves two cups of hot chocolate where tasting one instantly reveals the other's state.
2) Bra-ket notation is used to describe quantum states as vectors or functionals in a Hilbert space. Operators act on these states to model physical quantities.
3) A qubit is the quantum analogue of a classical bit, existing in superposition of states |0> and |1>. Quantum computers use entanglement between qubits to perform computations in parallel.
The document provides an overview of the EPR paradox proposed by Einstein, Podolsky and Rosen in 1935. The key points are:
1) The EPR paradox uses a thought experiment involving two entangled particles to argue that quantum mechanics provides an incomplete description of physical reality.
2) By measuring properties of one particle, corresponding properties of the distant entangled particle can be known instantaneously, appearing to violate relativistic constraints on information transfer.
3) While Einstein believed there were "hidden variables" not accounted for in quantum mechanics, experiments have verified quantum mechanics and shown that measurements do not reveal pre-existing states.
Translation of four dimensional axes anywhere within the spatial and temporal boundaries of the universe would require quantitative values from convergence between parameters that reflect these limits. The presence of entanglement and volumetric velocities indicates that the initiating energy for displacement and transposition of axes would be within the upper limit of the rest mass of a single photon which is the same order of magnitude as a macroscopic Hamiltonian of the modified Schrödinger wave function. The representative metaphor is that any local 4-D geometry, rather than displaying restricted movement through Minkowskian space, would instead expand to the total universal space-time volume before re-converging into another location where it would be subject to cause-effect. Within this transient context the contributions from the anisotropic features of entropy and the laws of thermodynamics would be minimal. The central operation of a fundamental unit of 10-20 J, the hydrogen line frequency, and the Bohr orbital time for ground state electrons would be required for the relocalized manifestation. Similar quantified convergence occurs for the ~1012 parallel states within space per Planck’s time which solve for phase-shift increments where Casimir and magnetic forces intersect. Experimental support for these interpretations and potential applications is considered. The multiple, convergent solutions of basic universal quantities suggest that translations of spatial axes into adjacent spatial states and the transposition of four dimensional configurations any where and any time within the universe may be accessed but would require alternative perspectives and technologies.
Oxford graduate lectures on "Quantum Chromodynamics and LHC phenomenology" Pa...juanrojochacon
- The document discusses the renormalization group and asymptotic freedom in quantum chromodynamics (QCD).
- It explains how the renormalization group allows the dependence of the running QCD coupling constant on energy scale to be determined. The coupling decreases with increasing scale, a phenomenon known as asymptotic freedom.
- While asymptotic freedom means QCD becomes a free theory at very high energies, confinement is observed at low energies where perturbation theory breaks down. Non-perturbative methods are needed to understand confinement fully.
Quantum mechanics describes quantum states that can exist in superposition, where an element can exist in multiple states simultaneously. When measured, the element collapses into a single definite state. Quantum computing uses this principle of superposition, where qubits can represent 0 and 1 simultaneously, allowing massive parallelism that exceeds classical computers.
Quantum mechanics deals with quanta, or discrete units of energy, as described by quantum theory. Some key points of quantum mechanics are:
1) Energy comes in discrete units called quanta rather than continuously.
2) Elementary particles exhibit both wave-like and particle-like properties.
3) The movement of particles is inherently random due to the uncertainty principle, which states that the more precisely one property (like position or momentum) is known, the less precisely the other can be known.
Gravitational quantum mechanics: a theory for explaining spacetime. This a seminar on several scientific papers about quantum gravity Phenomenology which has been gathered several important outcomes.
Multi-particle Entanglement in Quantum States and EvolutionsMatthew Leifer
Slides from my first ever seminar presentation given when I was a first year Ph.D. student. University of Bristol Applied Mathematics Seminar 2001. Brief introduction to entanglement and discussion of local unitary invariants.
Could humans recognize odor by phonon assisted tunnelingVorname Nachname
This document discusses a proposed physical mechanism for how humans could recognize odors through phonon-assisted tunneling. The mechanism involves inelastic electron tunneling between donor and acceptor sites in olfactory receptors that is mediated by the absorption or emission of odorant molecule phonons. The document evaluates the viability of this proposed mechanism using theoretical models and estimates of parameter values. It finds that the mechanism is physically plausible and consistent with observed features of the sense of smell, provided olfactory receptors have certain general properties that allow electron transfer on appropriate timescales.
Oxford graduate lectures on "Quantum Chromodynamics and LHC phenomenology" Pa...juanrojochacon
The document discusses the historical motivation for quantum chromodynamics (QCD). It describes how the discovery of many new strongly interacting particles in the mid-20th century led to the proposal of quarks as fundamental constituents. Quarks were proposed to have a new quantum number called color to explain experimental observations. Deep inelastic scattering experiments provided evidence that quarks are real particles and not just mathematical entities. The document outlines the basic properties of QCD, including its SU(3) symmetry and how this allows color-singlet hadrons to form from quarks.
This document reports on two experiments: 1) all-optical molecular alignment and orientation of OCS molecules using a two-color pump-probe laser setup, and 2) generation of single attosecond pulses from argon atoms using high harmonic generation and double optical gating. For the first experiment, alignment was clearly observed but unambiguous orientation was not observed, pointing to a need for further testing. For the second experiment, a single attosecond pulse was clearly generated through exploitation of high harmonic generation and double optical gating.
1) The document proposes an alternative cosmological model where dark matter and dark energy are described as forms of ether, analogous to Mach's principle of inertia.
2) In this model, dark matter arises from the QCD vacuum or "sea" of quark-antiquark pairs and gluons at the confinement scale, while dark energy corresponds to the zero-point energy of the QCD vacuum.
3) The model aims to replace the standard LambdaCDM model, treating the expanding universe as a dynamically stable "biking" Einstein universe where the running cosmological constant compensates for the effect of gravity at all epochs.
1. The document provides an overview and review of topics covered on the AP Physics B exam related to modern physics, including the photoelectric effect, Bohr model of the atom, and nuclear physics.
2. It describes Einstein's explanation of the photoelectric effect involving photons and how it resolved issues not explained by classical wave theory.
3. It also explains the Bohr model of the hydrogen atom, including Bohr's assumptions and how it leads to quantized electron orbits that can explain atomic emission spectra.
This document discusses whether quantum mechanics is involved in the early evolution of the universe and if a Machian relationship between gravitons and gravitinos can help answer this question. It proposes that:
1) Gravitons and gravitinos carry information and their relationship, described as a Mach's principle, conserves this information from the electroweak era to today. This suggests quantum mechanics may not be essential in early universe formation.
2) A minimum amount of initial information, such as a small value for Planck's constant, is needed to set fundamental cosmological parameters and could be transferred from a prior universe.
3) Early spacetime may have had a pre-quantum state with low entropy and degrees of freedom
This document discusses Lagrangian mechanics, which is a reformulation of classical mechanics introduced by Joseph-Louis Lagrange in 1788. It defines key terms like generalized coordinates, degrees of freedom, and the Lagrangian equation. Generalized coordinates are the minimum number of variables needed to specify a system's configuration. Degrees of freedom refer to the number of independent parameters defining a system's configuration. The Lagrangian is a function of generalized coordinates and their time derivatives, containing dynamic information. Examples are provided of calculating degrees of freedom for different particle systems and setting up the Lagrangian equation to derive equations of motion for mass-spring and simple pendulum systems.
Quantum entanglement allows two particles to be correlated in such a way that measuring one particle instantly affects the state of the other, even when separated by large distances. Einstein was skeptical of this "spooky action at a distance," but experiments have confirmed that quantum entanglement violates locality by demonstrating correlations between distant particles that match predictions. While information is not actually transmitted faster than light, the measurement of one particle's properties, such as spin, instantly determines the properties of the entangled particle regardless of distance.
The problem of radiation reaction in classical electrodynamics arises due to divergences in describing point particles, but Wheeler-Feynman electrodynamics provides a divergence-free theory by describing direct interactions between charged particles without fields, though it is difficult to solve due to its time-symmetric nature requiring knowledge of global trajectories.
Introduction to Classical Mechanics:
UNIT-I : Elementary survey of Classical Mechanics: Newtonian mechanics for single particle and system of particles, Types of the forces and the single particle system examples, Limitation of Newton’s program, conservation laws viz Linear momentum, Angular Momentum & Total Energy, work-energy theorem; open systems (with variable mass). Principle of Virtual work, D’Alembert’s principle’ applications.
UNIT-II : Constraints; Definition, Types, cause & effects, Need, Justification for realizing constraints on the system
Heuristic approach for quantized space & timeEran Sinbar
This document discusses important questions about fundamental physics concepts like the speed of light, Heisenberg's uncertainty principle, and Einstein's theory of relativity. It proposes that space and time are quantized at the Planck scale to explain these phenomena. Key points:
1) Space is made of discrete 3D "quanta" of space the size of the Planck length, and time is quantized in units of the Planck time.
2) Between these quanta are additional dimensions that allow energy and information to flow faster than light.
3) Quantization explains limits like the speed of light and Heisenberg's uncertainty principle by removing the possibility of exactly locating a particle within a quantum of space or
Quantized fabric of space and time theoryEran Sinbar
1. The universe is proposed to be quantized, with both space and potentially time divided into discrete quantum particles at the Planck scale.
2. New dimensions are theorized to exist between these quantum particles that do not obey standard physical laws.
3. These new dimensions could enable phenomena like entanglement and tunneling by allowing nonlocal interactions between quantum particles instantaneously.
The document summarizes a student's work modeling electron states in silicon for quantum computing applications. The student created a simulation to calculate the wavefunctions of two electrons in quantum dots and determine their interaction strength. The simulation was later modified to focus on calculating the quadrupole interaction between electrons, which is believed to be more robust for quantum information manipulation than exchange interaction. Results from the simulation using realistic parameters agreed with current research, suggesting the quadrupole interaction is viable for quantum computing. The student gained valuable research experience and the project provided insights into pursuing a PhD in related topics.
This document describes a theoretical study of graphene membrane rupture under strong electric fields using molecular dynamics simulations. The study examined pristine and defective graphene membranes of various sizes under electric fields of varying strengths, both with and without ion bombardment, to determine the cause of experimental membrane ruptures. The simulations found that electric fields alone did not rupture membranes. Ion bombardment was shown to be able to rupture membranes if ions possessed kinetic energies of approximately 0.7 electronvolts upon impact. Sequential ion bombardment, mimicking experimental conditions, was also found to potentially rupture membranes through accumulated damage.
This document discusses the incompatibility between classical mechanics and electromagnetism. It shows that under a Galilean transformation, the wave equation governing electromagnetic waves takes on a different form in different reference frames, violating Galilean invariance. This means that the laws of electromagnetism depend on the choice of reference frame. As such, classical mechanics and electromagnetism cannot be unified without modifications to account for this issue.
Quantum mechanics deals with quanta, or discrete units of energy, as described by quantum theory. Some key points of quantum mechanics are:
1) Energy comes in discrete units called quanta rather than continuously.
2) Elementary particles exhibit both wave-like and particle-like properties.
3) The movement of particles is inherently random due to the uncertainty principle, which states that the more precisely one property (like position or momentum) is known, the less precisely the other can be known.
Gravitational quantum mechanics: a theory for explaining spacetime. This a seminar on several scientific papers about quantum gravity Phenomenology which has been gathered several important outcomes.
Multi-particle Entanglement in Quantum States and EvolutionsMatthew Leifer
Slides from my first ever seminar presentation given when I was a first year Ph.D. student. University of Bristol Applied Mathematics Seminar 2001. Brief introduction to entanglement and discussion of local unitary invariants.
Could humans recognize odor by phonon assisted tunnelingVorname Nachname
This document discusses a proposed physical mechanism for how humans could recognize odors through phonon-assisted tunneling. The mechanism involves inelastic electron tunneling between donor and acceptor sites in olfactory receptors that is mediated by the absorption or emission of odorant molecule phonons. The document evaluates the viability of this proposed mechanism using theoretical models and estimates of parameter values. It finds that the mechanism is physically plausible and consistent with observed features of the sense of smell, provided olfactory receptors have certain general properties that allow electron transfer on appropriate timescales.
Oxford graduate lectures on "Quantum Chromodynamics and LHC phenomenology" Pa...juanrojochacon
The document discusses the historical motivation for quantum chromodynamics (QCD). It describes how the discovery of many new strongly interacting particles in the mid-20th century led to the proposal of quarks as fundamental constituents. Quarks were proposed to have a new quantum number called color to explain experimental observations. Deep inelastic scattering experiments provided evidence that quarks are real particles and not just mathematical entities. The document outlines the basic properties of QCD, including its SU(3) symmetry and how this allows color-singlet hadrons to form from quarks.
This document reports on two experiments: 1) all-optical molecular alignment and orientation of OCS molecules using a two-color pump-probe laser setup, and 2) generation of single attosecond pulses from argon atoms using high harmonic generation and double optical gating. For the first experiment, alignment was clearly observed but unambiguous orientation was not observed, pointing to a need for further testing. For the second experiment, a single attosecond pulse was clearly generated through exploitation of high harmonic generation and double optical gating.
1) The document proposes an alternative cosmological model where dark matter and dark energy are described as forms of ether, analogous to Mach's principle of inertia.
2) In this model, dark matter arises from the QCD vacuum or "sea" of quark-antiquark pairs and gluons at the confinement scale, while dark energy corresponds to the zero-point energy of the QCD vacuum.
3) The model aims to replace the standard LambdaCDM model, treating the expanding universe as a dynamically stable "biking" Einstein universe where the running cosmological constant compensates for the effect of gravity at all epochs.
1. The document provides an overview and review of topics covered on the AP Physics B exam related to modern physics, including the photoelectric effect, Bohr model of the atom, and nuclear physics.
2. It describes Einstein's explanation of the photoelectric effect involving photons and how it resolved issues not explained by classical wave theory.
3. It also explains the Bohr model of the hydrogen atom, including Bohr's assumptions and how it leads to quantized electron orbits that can explain atomic emission spectra.
This document discusses whether quantum mechanics is involved in the early evolution of the universe and if a Machian relationship between gravitons and gravitinos can help answer this question. It proposes that:
1) Gravitons and gravitinos carry information and their relationship, described as a Mach's principle, conserves this information from the electroweak era to today. This suggests quantum mechanics may not be essential in early universe formation.
2) A minimum amount of initial information, such as a small value for Planck's constant, is needed to set fundamental cosmological parameters and could be transferred from a prior universe.
3) Early spacetime may have had a pre-quantum state with low entropy and degrees of freedom
This document discusses Lagrangian mechanics, which is a reformulation of classical mechanics introduced by Joseph-Louis Lagrange in 1788. It defines key terms like generalized coordinates, degrees of freedom, and the Lagrangian equation. Generalized coordinates are the minimum number of variables needed to specify a system's configuration. Degrees of freedom refer to the number of independent parameters defining a system's configuration. The Lagrangian is a function of generalized coordinates and their time derivatives, containing dynamic information. Examples are provided of calculating degrees of freedom for different particle systems and setting up the Lagrangian equation to derive equations of motion for mass-spring and simple pendulum systems.
Quantum entanglement allows two particles to be correlated in such a way that measuring one particle instantly affects the state of the other, even when separated by large distances. Einstein was skeptical of this "spooky action at a distance," but experiments have confirmed that quantum entanglement violates locality by demonstrating correlations between distant particles that match predictions. While information is not actually transmitted faster than light, the measurement of one particle's properties, such as spin, instantly determines the properties of the entangled particle regardless of distance.
The problem of radiation reaction in classical electrodynamics arises due to divergences in describing point particles, but Wheeler-Feynman electrodynamics provides a divergence-free theory by describing direct interactions between charged particles without fields, though it is difficult to solve due to its time-symmetric nature requiring knowledge of global trajectories.
Introduction to Classical Mechanics:
UNIT-I : Elementary survey of Classical Mechanics: Newtonian mechanics for single particle and system of particles, Types of the forces and the single particle system examples, Limitation of Newton’s program, conservation laws viz Linear momentum, Angular Momentum & Total Energy, work-energy theorem; open systems (with variable mass). Principle of Virtual work, D’Alembert’s principle’ applications.
UNIT-II : Constraints; Definition, Types, cause & effects, Need, Justification for realizing constraints on the system
Heuristic approach for quantized space & timeEran Sinbar
This document discusses important questions about fundamental physics concepts like the speed of light, Heisenberg's uncertainty principle, and Einstein's theory of relativity. It proposes that space and time are quantized at the Planck scale to explain these phenomena. Key points:
1) Space is made of discrete 3D "quanta" of space the size of the Planck length, and time is quantized in units of the Planck time.
2) Between these quanta are additional dimensions that allow energy and information to flow faster than light.
3) Quantization explains limits like the speed of light and Heisenberg's uncertainty principle by removing the possibility of exactly locating a particle within a quantum of space or
Quantized fabric of space and time theoryEran Sinbar
1. The universe is proposed to be quantized, with both space and potentially time divided into discrete quantum particles at the Planck scale.
2. New dimensions are theorized to exist between these quantum particles that do not obey standard physical laws.
3. These new dimensions could enable phenomena like entanglement and tunneling by allowing nonlocal interactions between quantum particles instantaneously.
The document summarizes a student's work modeling electron states in silicon for quantum computing applications. The student created a simulation to calculate the wavefunctions of two electrons in quantum dots and determine their interaction strength. The simulation was later modified to focus on calculating the quadrupole interaction between electrons, which is believed to be more robust for quantum information manipulation than exchange interaction. Results from the simulation using realistic parameters agreed with current research, suggesting the quadrupole interaction is viable for quantum computing. The student gained valuable research experience and the project provided insights into pursuing a PhD in related topics.
This document describes a theoretical study of graphene membrane rupture under strong electric fields using molecular dynamics simulations. The study examined pristine and defective graphene membranes of various sizes under electric fields of varying strengths, both with and without ion bombardment, to determine the cause of experimental membrane ruptures. The simulations found that electric fields alone did not rupture membranes. Ion bombardment was shown to be able to rupture membranes if ions possessed kinetic energies of approximately 0.7 electronvolts upon impact. Sequential ion bombardment, mimicking experimental conditions, was also found to potentially rupture membranes through accumulated damage.
This document discusses the incompatibility between classical mechanics and electromagnetism. It shows that under a Galilean transformation, the wave equation governing electromagnetic waves takes on a different form in different reference frames, violating Galilean invariance. This means that the laws of electromagnetism depend on the choice of reference frame. As such, classical mechanics and electromagnetism cannot be unified without modifications to account for this issue.
This document outlines a graduate student's thesis work on multi-scale modeling of micro-coronas. There are wide variations in both time and length scales involved in plasma modeling, from picoseconds to hours/days and from molecular to macroscopic scales. A multi-scale modeling technique of domain decomposition is proposed, using microscopic models locally where needed and macroscopic models for the rest. The goals are to develop a modeling tool that can span micro- to macro-scales and simulate plasmas in complex geometries. Challenges include bridging between scales and incorporating particle and fluid models.
Molecular dynamics (MD) is a computer simulation technique that uses Newton's laws of motion to model molecular systems. MD allows studying kinetics and thermodynamic properties by simulating molecular motions over time. The key components of an MD simulation include force fields, integration algorithms, boundary conditions like periodic boundary conditions, and ensembles like NVE, NVT, NPT. Limitations include the approximations in force fields and sampling limitations. Enhanced sampling techniques help address some limitations. MD has many applications and continues to provide insights into molecular behavior.
1. The thesis proposes a new method for creating coherent superpositions among the ground states of a tripod atom using three frequency-chirped laser pulses. It shows that two different population redistribution mechanisms can be achieved by changing the sign of the Raman detuning of one pulse, while avoiding significant atomic excitation.
2. It proposes a method for writing and storing optical phase information in the populations of the ground states of a tripod atom using the same three chirped pulse arrangement. The phase difference between the two Raman resonant pulses maps the population of the third ground state, allowing long storage times.
3. It demonstrates that a pair of pulses, one constant frequency and one chirped, establishes maximum
This document is a final report for a study project on using quantum tunneling to explain olfaction in animals. It discusses theories of how smell receptors in the nose detect different odors at a molecular level. The report summarizes the process of quantum tunneling and how it applies to electron transport. It also reviews two main theories of olfaction - the lock and key model where odor molecules precisely fit receptor sites, and an alternate "swipe card" model where vibration frequencies also carry identifying information during smell detection through a process of inelastic electron tunneling. The report aims to understand these molecular mechanisms in more detail to help explain the phenomenon of smell.
This document provides an introduction to quantum computing, including key concepts like qubits, superposition, entanglement, and quantum gates. It discusses how quantum computing could provide significant speedups over classical computing for problems like optimization, encryption, and protein folding. However, building large-scale quantum computers faces challenges like preventing decoherence, developing operating conditions that maintain quantum states, verifying operations, and performing error correction on quantum bits. The document outlines various quantum computing concepts and applications but acknowledges that further advances are needed to develop practical quantum machines.
This document reports on a computational physics coursework project that simulated the dynamics of lattice polymers using Monte Carlo methods. It investigated different types of moves, including pivot moves and flip moves. Pivot moves alone did not allow long polymers to reach equilibrium. Introducing interactions between monomer types increased the fractal dimension in a temperature-dependent way, consistent with protein denaturing. The results supported the ability to model complex polymers like surfactants and DNA.
The Effect of RF Power on ion current and sheath current by electrical circui...irjes
Plasma is very important in the development of technology as it is applied in many electronic devices
such as global positioning system (GPS). In addition, fusion and process of plasma requires important elements,
namely, the electron energy distribution. However, plasma glow is a relatively new research field in physics.
There has not been found any previous study on the electric plasma modeling. Thus, this study was aimed to
study plasma modeling especially to find out what was the difference in the number of density and the
temperature of the electron in the plasma glow before and after heated and to discover how was the distribution
of electron and ion in the plasma. This research was conducted at Brawijaya University, Malang, Indonesia in
the Faculty of Science. This exploration began in the middle of June 2013. The data collection and data analysis
were done during a year around until August 2014. In this research, characteristics of plasma were studied to
build model of plasma. It utilized MATLAB dialect program examination framework which result in the
distribution of temperature and current density. The findings show that there has been a large increase in the
number of U, U2 with power, while figures of U1 is stable until middle of curve and then decrease as u but u2
after increase at point then stable. The differences appearing are probably due to the simplifying assumptions
considered in the present model. There was a curve between current in sheath and plasma. And time and sheath
current increased in the beginning then decreased before they experienced another increase.
Quantum mechanics provides a mathematical description of the wave-particle duality of matter and energy at small atomic and subatomic scales. It differs significantly from classical mechanics, as phenomena such as superconductivity cannot be explained using classical mechanics alone. Key aspects of quantum mechanics include wave-particle duality, the uncertainty principle, and discrete energy levels determined by Planck's constant and frequency.
Molecular dynamics (MD) simulations follow the motions and interactions of atoms and molecules over time. MD allows investigation of complex systems like fluids, polymers, and proteins. It is commonly used to study phenomena in liquids, solids, soft matter, and astrophysics. Popular MD software packages include GROMACS, CHARMM, AMBER, NAMD, and LAMMPS. While powerful, MD has limitations such as small system sizes and neglecting quantum mechanical effects.
The Monte Carlo Method of Random Sampling in Statistical PhysicsIOSR Journals
The Monte Carlo technique of random sampling was reviewed in this work. It plays an important role in Statistical Mechanics as well as in scientific computation especially when problems have a vast phase space. The purpose of this paper is to review a general method, suitable to fast electronic computing machines, for calculating the properties of any system which may be considered as composed of interacting particles. Concepts such as phase transition, the Ising model,ergodicity, simple sampling, Metropolis algorithm, quantum Monte Carlo and Non-Boltzmann sampling were discussed. The applications of Monte Carlo method in other areas of study aside Statistical Physics werealso mentioned.
A Technique for Partially Solving a Family of Diffusion Problemsijtsrd
Our aim in this paper is to expose the interesting role played by differ integral specifically, semi derivatives and semi integrals in solving certain diffusion problems. Along with the wave equation and Laplace equation, the diffusion equation is one of the three fundamental partial differential equation of mathematical physics. I will not discuss convential solutions of the diffusion equation at all. These range from closed form solutions for very simple model problems to computer methods for approximating the concentration of the diffusing substance on a network of points. Such solutions are described extensively in the literature .My purpose, rather, is to expose a technique for partially solving a family of diffusion problems, a technique that leads to a compact equation which is first order partially and half order temporally. I shall show that, for semi finite systems initially at equilibrium, our semi differential equation leads to a relationship between the intensive variable and the flux at the boundary. Use of this relationship then obviates the need to solve the original diffusion equation in those problems for which this behavior at the boundary is of primary importance. I shall, in fact, freely make use of the general properties established for differ integral operators as if all my functions were differ integrable. Dr. Ayaz Ahmad "A Technique for Partially Solving a Family of Diffusion Problems" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-6 , October 2018, URL: http://www.ijtsrd.com/papers/ijtsrd18576.pdf
This study examines transport phenomena in an inhomogeneous quantum spin chain composed of two different semi-infinite spin chains connected at a junction. The study finds that relaxation dynamics within the light cone propagating from the junction occurs at different rates in different regions. Close to the light cone boundaries, a stationary current is rapidly approached, while near the junction the current continues decreasing slowly without reaching a steady state. This indicates two qualitatively different behaviors coexist - intermediate ballistic regions with fast relaxation and slow relaxation regions near the junction.
The document provides an index for a course on transport phenomena, outlining topics over 12 weeks that cover concepts like Newton's law of viscosity, shell momentum balance, boundary layers, and mass transfer. Key aspects of transport phenomena are discussed, including the governing equations for momentum, heat, and mass transfer as well as the boundary layer concept. Dimensionless groups and their importance in understanding similarity between different transport processes are also highlighted.
Computational chemistry uses computers to simulate chemical systems and solve equations that model their properties. It is considered a third pillar of scientific investigation, along with theory and experiment. There are several computational methodologies including quantum mechanics, molecular mechanics, and molecular dynamics. Computational chemistry software can be used to optimize molecular geometries, map potential energy surfaces, perform conformational analyses, and calculate many other molecular properties and reaction kinetics. These methods have improved significantly with increasing computer power over the past few decades.
The document discusses three proposed research projects:
1) Studying quantum phases such as supersolidity and quantum glass in ultra-cold atoms confined in optical lattices, to support future experiments.
2) Extending diagrammatic quantum Monte Carlo techniques to calculate properties of multi-species boson and fermion systems.
3) Investigating vector and chiral spin liquid phases in type-II multiferroic materials using computational and analytical approaches, to better understand and control their properties for applications.
This paper was published by my former Supervisor and involves partly my calculations and the concepts used during my MSci Thesis at University College London.
1. The study of quantum phase transitions in small systems and their
comparison to infinitely large systems approaching the thermodynamic limit
University of Kent – School of Physical Sciences
Supervised by Dr. Sam Carr
Figure 1 – diagram representing a general diagram of the model which this
report will be evaluating.
Luke Moore – lm464@kent.ac.uk, 12958887
13/02/2015
2. Luke Moore, lm464 University of Kent, Canterbury
1
Abstract
The model being evaluated in this report is a one dimensional model of spinless fermions, it is known
that for an infinitely large system that this model experiences a phase transition as a function of the
hopping probability, and interaction strength between the particles of the system. The question is
whether a phase transition can occur for large but not infinitely large systems, we will be looking for
indications of this behaviour from results of small system sizes. Attempting to find behaviour which
will indicate a phase transition does occur for large systems. This research found that a phase
transition is a complicated behaviour that requires a system size of larger than the maximum
capabilities of the computers at our disposal. This meant that no phase transitions could be analysed
directly from the graphs in this report. However, certain evolutionary aspects became clear as the
value of the number of sites, L, was increased revealing some interesting behaviours in these small
quantum system sizes. Some of these could not be explained and remain a mysterious phenomenon.
Acknowledgements
I would like to take this opportunity to thank all of those who have assisted me in my work over the
duration of this research project. Most notably is my Supervisor Dr. Sam Carr, whom has spent a lot
of time working with me on this project, from teaching me the basics which would allow me to
understand the model I would be working on, to interpreting the results. Dr. Sam Carr’s supervision
and guidance on this project has been invaluable and without him my work would have never
progressed as far as it has. Thank you.
3. Luke Moore, lm464 University of Kent, Canterbury
2
Contents
1. Title Page
2. Abstract and Acknowledgements( page 1)
3. Contents Page (page 2)
4. Introduction and methodology(page 3 - 7)
a. Chapter 1 – Many body quantum physics
b. Chapter 2 - The model being evaluated
c. Chapter 3 – Constructing a Hamiltonian Matrix for the model
d. Chapter 4 – Why the solutions are important
5. Results and Discussion (page 8 - 18)
6. Analysis of U = 0.00 (page 19 - 20)
7. Conclusions(page 21 - 22)
8. Bibliography (page 23)
9. Appendix (page 24 - 33)
4. Luke Moore, lm464 University of Kent, Canterbury
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Introduction and Methodology
Chapter 1 – Many body quantum physics
A Many body system is a system with many particles/bodies in it. The significance of systems like this
is that objects observed and used in real life are themselves composed of a large number of
particles. Therefore, from analysing these systems we can develop a greater understanding of
phenomena that we see in real life. A quantum system means that it is composed of quantum
particles, e.g. electrons, as opposed to a classical system which would be composed of physical
objects such as snooker balls for example. A primary characteristic of a quantum system is that it is a
system whose behaviour is governed entirely by quantum mechanics. Examples of quantum
mechanical behaviours are the Heisenberg uncertainty principle, and the De Broglie wavelength of
particles in the system. The Heisenberg uncertainty principle says that there is a theoretical limit on
the level of precision it is possible to achieve with regards to measuring both the momentum and
position of a particle such as an electron. The De Broglie wavelength is a property of a moving
particle which governs its likelihood of diffracting through a gap and becoming delocalised.
∆𝑥∆𝑝 ≥
ℏ
2
This is the Heisenberg uncertainty principle in equation form [1]
𝜆 =
ℎ
𝑝
This is the De Broglie equation, which calculates a particles de Broglie wavelength. [1]
ℏ =
ℎ
2𝜋
, ℎ = 6.626 × 10−34
𝐽𝑠 [1]
Large quantum systems experience changes such as phase transitions, this will be a focus of this
project. A phase transition is a point at which a system undergoes a major change in properties as a
result of the altering of a particular physical parameter of the system. This parameter is almost
always temperature, and the phase transition is a change of state i.e. Liquid to gas or solid to liquid.
Phase transitions are important because they are observable in everyday life, the most commonly
known is the phase transition of water from ice to water liquid, and then to steam. Phase transitions
are able to reveal interesting properties of a material, and until the phase transition is analysed it is
unknown whether and interesting properties exist and can be utilised in other areas. A thermal
phase transition is the result of a struggle between the system attempting to maximise its entropy
and minimise the energy of its state. The phase transitions analysed in this report however will be
quantum phase transitions, a quantum phase transition is a transition which occurs at the zero of
temperature, at absolute zero. Quantum phase transitions are unique as they are the result of the
altering of a parameter other than temperature. For a quantum phase transition the struggle is
between the kinetic and potential energy of the particles, this struggle is what results in the phase
transition.
Another reason phase transitions are so important is because new phases of matter can be
discovered, and these phases need to be analysed to determine whether or not any interesting
properties can be found, and put to use in real life. This project will attempt to determine whether
or not small systems modelled by a computer can show signs of a phase transition. The answer to
this question will be interesting because it is known that for many particles that the system does
undergo a phase transition, but what is not known is how complex a system must be in order to
experience behaviour of this nature. How many particles are required? Whether we can find
evidence of a phase transition for extremely small system sizes? I will attempt to find answers to
these questions.
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Chapter 2 – The Model being evaluated
I am going to be evaluating a model of spinless fermions, in this model each particle can only interact
with the particles immediately adjacent to it. This is because the sites are simplified models of
atoms, atoms which have electrons orbiting around them. The electron orbitals of adjacent atoms
overlap with each other, but do not reach to the next atom along the chain. This is because of the
exponential decay of the electron orbital with distance. This means that an electron will mainly
move from its current orbital to the orbital of the adjacent atom. An electron moving from its
current orbital to the orbital of the atom to the other side of the adjacent atom is much less
probable and hence will be neglected in this model. Additionally, the coulomb repulsion between
adjacent atoms decays as 1/distance, this means that the largest value is from the adjacent particle,
and all other contributions to coulomb repulsion are much smaller and are being neglected in this
model. Each particle has a certain probability of “hopping” from its current position to its
neighbouring position. This probability is given by –t. There will be an interaction strength between
two adjacent particles is given by, u. In this model each atom/site can only be in one of two
situations, either having a fermion sitting on the site or not. Only one fermion can be on a particular
site at any one time. This model is outlined in the diagram below, which shall be known as figure 1.
Figure 1 – diagram representing the model to be evaluated
This model will be varied in size and the number of particles will be set to N =L/2, this will allow us to
find evidence of phase transitions which only occur for N=L/2. The phase transitions will only occur
for N = L/2 because when N = L/2 for an even value of L then no hopping can take place as all
particles are in a fixed position with a particle to either side of its empty neighbouring sites.
Therefore if a particle was to hop, then it would now experience an interaction strength of U, this
would increase the energy of the state and would not be beneficial. For large positive interaction
strength, u, the fermions should not be next to each other as this would require a large amount of
energy and thus this arrangement would be less stable. This is because the arrangement will always
try to be in the lowest energy state possible. Whereas for small values of u, I would expect the
fermions to flow through the lattice like structure and show properties which are not unlike those of
a metal. Metals have a large number of delocalised electrons flowing within their atomic structure,
so the system described by small values of u, should approximate the metallic lattice rather well. I
will be finding out if I can see these properties for a small quantum system. These systems will be
evaluated so their phase transition can be analysed, one of the main aims of this research is to find
phase transitions for these small system sizes. One of the main aims of my research will be to
determine the primary characteristics which define a phase transition.
The method used to find the lowest energy eigenvalues of this system will be the Jacobi routine from
“Numerical Recipes in C, Second Edition, pages 467 – 469” [3]. The Jacobi routine will determine the
eigenvalues of the system for varying the value of u, this will then be plotted using gnu plot, as a way
6. Luke Moore, lm464 University of Kent, Canterbury
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of determining the lowest energy state of the system for any particular value of u. The next step in
the program will be to apply periodic boundary conditions, this means that the system becomes
circular and the site to the right of the Lth
site in the chain is the first site in the chain. This allows
more interesting properties to be discovered as a fermion on the Lth
site in the chain now has an
energy cost of u if there is a particle on the first site in the chain at the same time.
Chapter 3 – Constructing a Hamiltonian Matrix for the Model
For a particular number of sites and number of particles a Hamiltonian matrix can be formed to
represent the model, I will illustrate this through a simple example, which I will then extrapolate to
allow me to form a Hamiltonian for any number of particles on any number of sites.
Example; L = 3 sites and N will be fixed at 2.
The key features of the system being considered are;
That the system is one dimensional
A fermion can only move to its nearest neighbour
“Hopping” cannot take place between sites where a fermion already exists, fermions are
indistinguishable due to the Pauli exclusion principle
The probability of a fermion “hopping” to its nearest neighbour is given as –t
The interaction between neighbouring fermions is u
The number of fermions in the system are fixed at 2
The number of sites that the fermion can be on are set at 3
Periodic boundary conditions are not being considered in this system
The system is shown below;
These are all the possible orientations that particles can be found in in this particular system. These
orientations are referred to as states.
So, in order to construct the Hamiltonian matrix it is necessary to understand what properties each
individual state possess and how one state could be turned into another state.
State 1 has two particles on neighbouring sites, this means that it has an interaction energy of u,
additionally it could become identical to state 2 if the particle on the central site were to hop to the
rightmost site.
State 2 has two particles, one on the leftmost site and one on the rightmost site, as periodic
boundary conditions are not being applied to this system there is no interaction energy to be taken
7. Luke Moore, lm464 University of Kent, Canterbury
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into account. However, State 2 could become identical to state 1 if the particle on the rightmost site
were to hop to the central site, or state 2 could become identical to state 3 if the particle on the
leftmost site were to hop onto the central site.
State 3 has two particles, one on the rightmost site, and one on the central site. State 3 could
become identical to state 2 if the particle on the central site were to hop to the leftmost site.
This system can be represented by a 3 x 3 Hamiltonian matrix, each element of the matrix has a
value based on the energy of the individual site, or based on its probability of becoming one of the
other sites. As explained below;
𝐻̿ = (
𝐸𝑛𝑒𝑟𝑔𝑦 𝑜𝑓 𝑠𝑡𝑎𝑡𝑒 1 𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 2 𝑓𝑟𝑜𝑚 1 𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 3 𝑓𝑟𝑜𝑚 1
𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 1 𝑓𝑟𝑜𝑚 2 𝐸𝑛𝑒𝑟𝑔𝑦 𝑜𝑓 𝑠𝑡𝑎𝑡𝑒 2 𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 3 𝑓𝑟𝑜𝑚 2
𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 1 𝑓𝑟𝑜𝑚 3 𝑝𝑟𝑜𝑏 𝑜𝑓 𝑐ℎ𝑎𝑛𝑔𝑖𝑛𝑔 𝑡𝑜 𝑠𝑡𝑎𝑡𝑒 2 𝑓𝑟𝑜𝑚 3 𝐸𝑛𝑒𝑟𝑔𝑦 𝑜𝑓 𝑠𝑡𝑎𝑡𝑒 3
)
This system is then represented by the Hamiltonian matrix;
(
𝑢 −𝑡 0
−𝑡 0 −𝑡
0 −𝑡 𝑢
) = 𝐻̿
This method can be extrapolated and used to construct a Hamiltonian of any size from any sized
system, if desired the particle number wouldn’t even need to be fixed. The number of particles can
be allowed to change and this allows a more general Hamiltonian matrix to be formed which covers
a more general system for a particular number of sites. Later in this project the particle number will
be allowed to change, and the Hamiltonian will be written by the computer program which has been
written in the C programming language.
How to find the solutions of the Hamiltonian matrix
The first step is to find the eigenvalues of this Hamiltonian matrix and then to find the associated
eigenvectors of each eigenvalue, this is done using the following method;
Eigenvalues fit the following formula
𝑑𝑒𝑡(𝐻̿ − 𝜆𝐼) = 0 [2]
This says that the determinant of {(the Hamiltonian matrix) – (the eigenvalue multiplied by the
identity matrix)} = 0, this equation will always be true for any eigenvalue.
The eigenvalues that were found from the worked example from Chapter 2 are; 𝜆1, 𝜆2, 𝜆3.
Where, 𝜆1, 𝜆2, 𝜆3, are all functions of u.
𝜆1 = 𝑢, 𝜆2 =
𝑢 + √𝑢2 + 8𝑡2
2
, 𝜆3 =
𝑢 − √𝑢2 + 8𝑡2
2
The eigenvectors are then found using a similar equation than that used for finding eigenvalues, it is;
(𝐻̿ − 𝜆𝐼)𝜓 = 0 [2]
Where; ψ is the eigenvector of eigenvalue λ. [2]
8. Luke Moore, lm464 University of Kent, Canterbury
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An Eigenvector has the unique property that its magnitude has to be exactly 1, it is a unit vector to
represent the state of the system corresponding to a particular eigenvalue. [2]
Although this was the method used to solve small systems by hand, the program used in this report
will be using the method of exact diagonalization via the Jacobi algorithm. Exact diagonalization
works by performing iterative rotations on the Hamiltonian matrix which represents the system to
be solved. This is computed until every term except those on the main diagonal of the matrix are
zero, the values on the main diagonal of this matrix are the eigenvalues of the Hamiltonian matrix
and are the solutions of the system. The energies of each of the states of the system. For more
information on the exact diagonalization process, refer to this paper.[3]
Chapter 4 – Why the solutions are important
The eigenvalues of the Hamiltonian matrix are the energies of each of the states. In this project we
will be mainly interested in the lowest 2 or 3 energy eigenvalues. This is because the lowest energy
eigenvalue represents the state of the system at zero temperature, the energy of the ground state of
the system. It is these energy values that we can use to plot graphs to determine whether a
quantum phase transition is expected for a particular system, with L sites and N particles, although a
phase transition will only occur for N = L/2 otherwise it is not possible. The computer program used
in this report will vary the value of the interaction strength and recalculate the energy values for a
given range, in this report this range will be 0.00 <= U <= 4.00, all results will be output to data files
and the values will then be used to pot graphs to show the behaviour of a particular system for
varying the value of U. These graphs will show us if there is any evidence of a phase transition, or if
any other interesting behaviour can be learnt from the graphs. The numbers produced by the
program are important for mathematically representing the behaviour of the states of the system
under differing values of the interaction strength between the particles.
The reason we care so much about analysing these systems, which only exist under physical
conditions not seen in everyday life is, because we know relatively little about them. For materials
observed and used regularly in everyday life we know a lot about how they behave under all sorts of
conditions. For example consider water, we know that at standard pressure of 1 atmosphere and at
room temperature about 22 degrees Celsius, water has a certain density, and a specific heat
capacity, we know that water boils at 100 degrees Celsius and freezes at 0 degrees Celsius. In
comparison, the phase transition of a small quantum many body system, does it have a phase
transition? If not, how big does the system need to be in order for the system to experience one?
When a system does experience a phase transition what are the characteristics that can be observed
on a graph which would indicate that a phase transition is occurring? It becomes clear that when
considering a classical substance we have a lot of answers, but for a quantum many body system we
seem to only have the questions. This is why this is important work, because until we find these
answers we don’t know what special properties any of these states might have, what uses they
could have in the real world. All these questions relate back to the solutions which can be found
from running simulations like the one outlined in this report.
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Results and Discussion
For this model, there is an equation which exactly describes the Energy of a state, however this
equation is only valid for a system at U = 0. The equation is shown below;
𝜀 = −2 cos 𝑘 - Equation 1
𝑓𝑜𝑟 𝑁 𝑖𝑠 𝑜𝑑𝑑, 𝑘 =
2𝜋𝑛
𝐿
– Equation 2
𝑓𝑜𝑟 𝑁 𝑖𝑠 𝑒𝑣𝑒𝑛, 𝑘 =
2𝜋 (𝑛+0.5)
𝐿
– Equation 3
N is the total number of particles. n = 0, 1, 2 …., L-1. L = number of sites
Graph 1 – This graph shows how the Energy of a state varies at the value of U = 0, for a system of any
size.
I will illustrate that the equations work by using the example of L = 6, N = 3;
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As N is odd, this means that the N is odd formula for k will be applied from above;
n = 0;
𝜀0 = −2 cos (2𝜋 ×
0
6
) = −2.000
n = 1;
𝜀1 = −2 cos (2𝜋 ×
1
6
) = −1.000
n = 2;
𝜀2 = −2 cos (2𝜋 ×
2
6
) = 1.000
n = 3;
𝜀3 = −2 cos (2𝜋 ×
3
6
) = 2.000
n = 4;
𝜀4 = −2 cos (2𝜋 ×
4
6
) = 1.000
n = 5;
𝜀5 = −2 cos (2𝜋 ×
5
6
) = −1.000
These points have been circled on the graph on the previous page, to make it clear how the formula
can be applied to any system of any size.
The lowest three single particle energies are; -1.000, -1.000 and -2.000, these combine to give the
lowest energy eigenvalue at u = 0;
−2.000 − 1.000 − 1.000 = −4.000
The number of particles gives you the number of lowest single particle energies to be summed to
give the lowest energy eigenvalue for this system.
In the graph however, -4.000 is divided by the particle number, N = 3;
So in the graph at u = 0 the lowest energy eigenvalue is given by;
−
4.000
3
= −1.333 = 𝐸
Actual value is E = -1.333.
Therefore the equation works for L = 6, N = 3, and it works in general for any values of L and N.
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Graphs 2 – 10 all include periodic boundary conditions.
Odd values of L
Graph 2 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for
L=3 sites and N = 2 particles. The third lowest energy eigenvalue line is completely obscured by the
second lowest eigenvalue line, indicating that this system has two identical eigenvalues.
The blue and red lines as shown in graph 2 are exactly parallel, to 6 decimal places of precision.
This is the graph for 3 sites and 2 particles with periodic boundary conditions, this graph shows the
lowest energy eigenvalue in red and the second and third lowest energy eigenvalues are given by the
blue line, as the green line is completely obscured by the blue line. This was a surprise when this
graph was first observed as it was expected that the three lowest energy eigenvalues would all
experience a different energy. However after the system was analysed by using equation 1 from
above and the method outlined in the worked example it became clear that this was the correct
observation, and that for all odd values of L the second and third lowest energy eigenvalues will
always be identical. This will be confirmed by graph 4, which shows exactly the same characteristics
as graph 2. Both the lines in graph 2 are linear with respect to U, this is because no matter what
state the system is in the system will always experience an energy cost of U, this was realised after
the graph was plotted, this unfortunately makes the graph not very interesting, as both lines on the
graph represent the same energy cost and just have different values at U = 0.00.
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Graph 4 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for
L=5 sites and N = 3 particles. The third lowest energy eigenvalue line is completely obscured by the
second lowest eigenvalue line, indicating that this system has two identical eigenvalues.
This is the graph for 5 sites and 3 particles with periodic boundary conditions, this graph shows the
lowest energy eigenvalue in red and the second and third lowest energy eigenvalues are given by the
blue line, as the green line is completely obscured by the blue line. This graph verifies the
characteristic identified for L = an odd number of sites, as stated in the analysis of graph 2. Graphs 6
and 8 in the appendix section also show this trend. However there is a notable difference between
this graph and the graph for L = 3, that in this graph the eigenvalues are not parallel, the separation
of the red and blue lines changes with U, this was plotted in the graph below, as the difference
between the lowest and second lowest eigenvalues for graph 4. Even though for odd L the system
will always experience an energy cost of at least U as the system is now more complex the difference
between the lowest energy and second lowest energy eigenvalues is now able to vary with U due to
the possibility of a linear combination of states being the lowest energy state, as opposed to a single
simple state.
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Difference between the lowest and second lowest eigenvalues for graph 4.
This graph displays a smooth curve which shows that the difference between the lowest and second
lowest eigenvalues decreases for increasing positive values of U. This is expected as for large positive
values of U the lowest and second lowest energy eigenvalues become degenerate. This means that
they become equal and that the lowest energy state of the system becomes a linear combination of
both the lowest and second lowest energy eigenstates. At U = 0.00, the difference is approx. equal
to - 0.74, this changes slowly for U<0.5, then the difference changes at a more rapid rate until
reaching a difference of approx. - 0.64 at a value of U = 4.00. For larger values of L the difference still
changes as a function of U, however the difference is smaller at U = 0.00. Additionally, the shape of
the graph of the difference between the lowest and second lowest eigenvalues always assumes the
same basic shape, as an elongated ‘S’ shape. The graphs for L = 7 and 9 can be found in the appendix
section of this report, and the difference between the lowest and second lowest eigenvalues can be
seen to be smaller for larger values of L, this leads us to believe that for larger system sizes the
system is more heavily influenced by the changing value of the interaction strength U. Due to the
interaction, U, being more important for larger L the system experiences the characteristics of
degeneracy more rapidly. For larger L the graphs clearly show the lowest and second lowest
eigenvalues becoming very close together even for a small range of U.
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Even values of L
Graph 3 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for L
= 4 sites and N = 2 particles. This graph shows an interesting property, which is that one of the
eigenvalues is entirely independent of the value of U. The green line represents a constant zero
eigenvalue.
Difference for graph 3
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Graph 5 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for L
= 6 sites and N = 3 particles. This graph shows that at small values of U, values which approach zero,
the green line and blue line tend toward the same value. However, unlike with the graphs for an odd
value of L here the green value diverges from the blue line and actually tends towards the red line
for large values of U. thereby demonstrating a degeneracy at large U values.
Graph 7 - This graph shows how the eigenvalues of the system vary as the value of U is varied, for L =
8 sites and N = 4 particles. This graph shows that at small values of U, values which approach zero,
the green line and blue line tend toward the same value. However, unlike with the graphs for an odd
value of L here the green value diverges from the blue line and actually tends towards the red line
for large values of U. thereby demonstrating a degeneracy at large U values.
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Graph 9 - This graph shows how the eigenvalues of the system vary as the value of U is varied, for L =
10 sites and N = 5 particles. This graph shows that at small values of U, values which approach zero,
the green line and blue line tend toward the same value. However, unlike with the graphs for an odd
value of L here the green value diverges from the blue line and actually tends towards the red line
for large values of U. thereby demonstrating a degeneracy at large U values.
Graph 10 - This graph shows how the eigenvalues of the system vary as the value of U is varied, for L
= 12 sites and N = 6 particles. This graph shows that at small values of U, values which approach
zero, the green line and blue line tend toward the same value. However, unlike with the graphs for
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16
an odd value of L here the green value diverges from the blue line and actually tends towards the
red line for large values of U. thereby demonstrating a degeneracy at large U values.
Analysis of graphs 3, 5, 7, 9, 10
Graphs 3, 5, 7 9, 10 all show very similar properties, I will begin my analysis by first mentioning the
similarities and explaining them, I will then mention the differences and attempt to explain why
these differences occur.
Similarities
Firstly at the value of U = 0.00, the second and third lowest eigenvalues are approximately equal,
and in every case the second lowest rapidly diverges from the third lowest energy eigenvalue. This
shows that for small or negative U values the second and third lowest energy eigenvalues are
approximately degenerate. For small or attractive values of U the particles are free to move with
minimal change in energy. This would indicate that at small or negative values of U that the system
has metallic behaviour.
Secondly, the lowest energy eigenvalue has a value of approximately -1.5 → -1.3 at values of U =
0.00, the lowest energy eigenvalue then tends towards the second lowest energy eigenvalue, and at
U = 4.00, the lowest and second lowest energy eigenvalues are very close together, such that the
difference in energy is between 0.8 (L=4)and 0.05(L=12). This behaviour indicates that for large
positive values of U that the lowest and second lowest energy eigenvalues become approximately
degenerate, by having almost exactly the same energy. This occurs as the lowest and second lowest
energy eigenvalues of the system are both linear combinations of the two states in the degeneracy
illustration below, and just combine in different quantities to give a different overall energy.
However, for large values of U this difference is almost zero, as the dominant factor deciding the
energy of the system is the value of U, as opposed to the specific amounts of each state contributing
to each energy value. This means that for infinitely large values of U irrespective of the size, the
lowest and second lowest energy eigenvalues are approximately equal. That being said increasing
the value of L does result in the near convergence of the lowest and second lowest energy
eigenvalues sooner than would be the case for smaller L values.
Degeneracy illustration
Degeneracy occurs as a result of 2 states such as these having the same energy level, states such as
these can only occur for N = L/2. These states display a symmetry which shows that there is no
difference in energy between these states and therefore the system should have no preference
between the two. For large values of U this is the case, the reason why the lowest and second lowest
energy eigenvalues tend towards each other is that the system includes both of these states in
different quantities, this results in a difference in energy for small or negative values of U. As U
increases a point is reached at which there is a minimal energy difference between the lowest
18. Luke Moore, lm464 University of Kent, Canterbury
17
energy state and the second lowest energy state, however the two cannot move between each
other as this requires a large energy cost due to the number of intermediate states the particles
would have to move through in order to change from one to another. This limit at which the
particles are essentially stuck and cannot change to another state is called ‘broken symmetry’, this is
a term used in quantum mechanics to describe this situation.
Another similarity was shown in the graphs of the energy difference between the lowest and second
lowest energy eigenvalues, all graphs showed the same shape, this shape was likened to an
elongated ‘S’. All graphs showed this general shape, although for increasing L the difference was
smaller at U = 0.00, and significantly smaller for U = 4.00. The graph for L = 4 is shown above, but the
graphs for larger values of L are in the appendix section of this report.
Differences and evolution
One of the main differences is that the graph for L = 4 displays an eigenvalue of exactly 0.00, and is
completely independent of U. This was analysed and it was concluded that the only way this was
possible was if the state corresponding to the second lowest energy eigenvalue was a linear
combination of the two states shown in the degeneracy illustration on the previous page. This linear
combination was very specific, it was exactly +1 of the first and -1 of the second. This is the only
possible way to achieve a zero eigenvalue, which is very peculiar behaviour. However the mystery is
then why none of the other values of L exhibit this interesting property, all the even values of L with
N = L/2 should be able to show the same result, but the only graph to display a zero eigenvalue is L =
4. This is a mystery and it is one that we have not yet been able to explain. In theory we could think
of no reason why there could be no analogy between L = 4 and L > 4 sites. As for larger values of the
number of sites it can be shown that states can be made which are extremely similar to those from
the degeneracy illustration from the previous page. Additionally, a linear combination of these
should in theory be capable of producing a zero eigenvalue as observed with L=4. Why this is not the
case is unknown.
As L was increased several evolutionary features became apparent, an interesting one was that at a
value of U = 0.00 the value of the lowest eigenvalue/ particle became smaller, at L = 4 this value was
approximately -1.414, however, for L = 12 this value was approximately -1.288. This shows as the
number of sites in the system was increased the energy per site also decreased. This is because for
the number of sites being infinite the value of the amount of energy per site assumes its minimum
value of approximately -0.64 (= -2/π, see chapter “Analysis of U = 0.00” for full explanation),
therefore as L is increased the value of the energy per site is going to become closer and closer to
this value until L = infinity.
The limit of the computer I was using for running my program was L = 8, so before I could get results
for L = 10 and L = 12 I had time to calculate predictions of the values I had expected for L = 10 based
on the trend from L = 4, 6 and 8. My prediction is shown in the table below and a comparison with
the true value is also shown.
L Eigenvalue at U = 0.00 New value/previous value
4 -1.414 -
6 -1.333 94.3% = ((-1.333/-1.414)*100)
8 -1.307 98.0% = ((-1.307/-1.333)*100)
10 -1.29 (Predicted) 98% = (predicted)
10 -1.294 (Actual) 99.0% = ((-1.294/-1.307)*100)
12 -1.26 (Predicted) 98% = (predicted)
12 -1.288 (Actual) 99.5% = ((-1.288/-1.294)*100)
19. Luke Moore, lm464 University of Kent, Canterbury
18
This shall be referred to as Table 1.
This shows that my predictions were very close to the actual values of the Eigenvalues at U = 0.00.
To predict a value of L = 10, I had noticed that the ratio of the new value/ previous value seems to
increase as L increases, this led me to the prediction that a ratio of 98% or above would be required
as an estimate, this would then be applied to the value for L = 8. L = 12 was more difficult as I only
had a prediction as my previous value, this meant a greater error would propagate into my
prediction for L = 12. Never the less, in order to predict a reasonable value for L = 12 I had to assume
that the value I had predicted for L = 10 was correct to a reasonable degree of accuracy, and apply
my multiplying factor to this predicted value. Even though my predictions were not perfect they
were good approximations to the correct values, within 1 – 2 % of the correct values, which is an
impressive level of accuracy for a prediction which was made with only 3 true data points.
Another evolutionary feature of the graphs is the rate of convergence between the lowest and
second lowest energy eigenvalues, from the graph for L = 6 it can be seen that the line
corresponding to the second lowest energy eigenvalue diverges from the third lowest energy
eigenvalue rapidly for U> 0.00. However, the lowest and second lowest energy eigenvalues don’t
converge for the range 0.00 <= U <= 4.00, although it can be seen that the two lines would continue
to become closer and closer until near convergence is achieved at a value of U>4.00. This trend is
followed exactly by the graph for L = 8 as well, L = 8 shows far more rapid near convergence than did
L = 6, this would indicate that as the number of sites increases, the lowest energy eigenvalue
increases its dependency on the value of U. As the number of particles in the system increases,
logically the system will become more dependent on the value of the interaction strength between
these particles. Therefore it would be expected for L = 10 near convergence would occur even
sooner and for L = 12 sooner still. In fact the graph displaying L = 12 results converges to within a
value of 0.06 for the range 0.00<=U<=4.00, this would suggest that if larger values of L could be
simulated then convergence would occur in the range of 0.00 <= U <= 4.00. However due to the
computational load of running the program for larger values of L this was not a possibility.
20. Luke Moore, lm464 University of Kent, Canterbury
19
Analysis of U = 0.00
This graph shows the U = 0.00 values for L = 4, 6, 8, 10, 12 sites with N = L/2.
The importance of this graph is that it can predict the energy per site and the energy per particle at
the value of L = infinity.
This is done by first evaluating what happens to the value of K when L tends to infinity;
𝐾 =
2𝑛𝜋
𝐿
As L becomes infinite, K becomes a continuous variable and can assume any possible value from –
π/2 → π/2. K can assume any value in this range as this is the range in which the result of -2cosk = a
negative value. The reason we are only interested in the negative values is that we are looking for
the lowest energy states, and the lowest energy state will occur when every one of the negative
particle energies are satisfied, resulting in the maximum negative value of energy.
This has the effect of meaning that we now use an integral to evaluate graph 1;
1
2𝜋
∫ −2𝑐𝑜𝑠𝑘 𝑑𝑘
𝜋
2
−
𝜋
2
= −
1
𝜋
∫ 𝑐𝑜𝑠𝑘 𝑑𝑘
𝜋
2
−
𝜋
2
=
−1
𝜋
[𝑠𝑖𝑛𝑘]
−
𝜋
2
𝜋
2
=
−1
𝜋
(1 − (−1)) = −
2
𝜋
y = -0.7663x - 1.2162
R² = 0.9768
-1.44
-1.42
-1.4
-1.38
-1.36
-1.34
-1.32
-1.3
-1.28
-1.26
0 0.05 0.1 0.15 0.2 0.25 0.3
E/N
1/L
U=0.00, for L becomes infinite
Series1
Linear (Series1)
21. Luke Moore, lm464 University of Kent, Canterbury
20
This is the energy per site.
However as the number of particles is given by N = L/2 then, the energy per particle is equal to;
=
−4
𝜋
= −1.27 …
The y axis intercept of the U=0.000, as L becomes infinite graph is should be equal to the value of the
energy per particle at L = infinity. The graph predicts the value to be approximately -1.2162.
However the actual value is -4/π = -1.2732…
This means that the graph we plotted using the points for L = 4, 6, 8, 10, and 12 has accurately
predicted the value for L becomes infinity to within an accuracy of 5%. That level of accuracy even
though we extrapolated from a maximum number of sites of L = 12 to infinity is rather surprising. It
would be expected that there would be a significant degree of error due to such a large
extrapolation using relatively few data points. In spite of this the graph has given a very accurate
approximation to the energy per particle of an infinitely large system, this energy is the energy per
particle of the system in the thermodynamic limit, L = infinity.
22. Luke Moore, lm464 University of Kent, Canterbury
21
Conclusions
In conclusion, we began this project expecting to find evidence of a quantum phase transition for
small system sizes, however due to the limitations of the computers at our disposal for this project
we were unable to model a system large enough to show evidence of a phase transition. However,
this doesn’t mean that some interesting features were not discovered as a result of the data
collected in this report. The results gathered in this report were split into the odd values of L and the
even values of L, both sets of graphs showed trends specific to whether L was odd or even.
The graphs for L is odd showed that for the case of N=(L+1)/2, then the second lowest and third
lowest energy eigenvalues of the system were equal and the lines representing the data points were
superimposed on each other. Whereas the line representing the lowest energy eigenvalue was
significantly lower and in most cases assumed a very similar shape to the line representing the
second and third lowest energy eigenvalues. However he only case in which the lines were exactly
parallel was for L = 3, N = 2, in all other cases the lines became progressively closer with increasing
value of U. The lines became closer as a result of degeneracy between states of the system, as U
became very large the result was that the difference I energy between the two lowest energy states
became very small until a point at which the lines were almost exactly on top of each other and the
lines could move no closer. This behaviour occurs as the lowest and second lowest energy
eigenvalues result from linear combinations of certain states in the system. The reason for the small
difference in energy between the states is due to the different amounts of each state contributing to
the overall eigenvalue.
The graphs for L is even showed that for N = L/2 at the value of U = 0.00 the second and third lowest
energy eigenvalues were approximately equal, however these two values rapidly diverged. Whereas
the lowest energy eigenvalue showed a different behaviour and increased tending towards the
second lowest energy eigenvalue for the range 0.00 <= U <= 4.00. At the value of 4.00 the difference
between the lowest and second lowest energy eigenvalues was much smaller than for U = 0.00. The
reason for the lowest energy eigenvalue becoming approximately equal to the second lowest energy
eigenvalue is due to the existence of a two-fold degeneracy. A two-fold degeneracy means that
there are two combinations of states each with approximately the same energy. The lowest and
second lowest energy eigenvalues are not the energies of a single state, they are a linear
combination of states in different amounts. For large positive values of U the difference between the
two lowest energy eigenvalues is very small as the two approach the same energy level due to the
effects of the two-fold degeneracy. What is important to note is that although these two linear
combinations have approximately the same energy the system cannot simply flow from one to the
other, there is a broken symmetry between the two lowest energy eigenvalues. The reason for this
broken symmetry is that during a hop from one state to another only one particle can move.
Therefore in order to change from one state to another as shown in the degeneracy illustration on
page 16, the system would need to first move through some higher energy intermediate states in
order to change into the other. This requires a lot of energy and is very unlikely to happen. In fact for
an infinitely large system the only way to accomplish this change would be via an infinite number of
intermediate states and the energy cost would be so large that the probability of it occurring for
infinitely many sites and infinite particles is zero, it cannot happen.
Although some characteristics of the graphs can be explained, there remains one feature which is a
complete mystery, this feature is the zero eigenvalue for the graph of L = 4. It is understood that if a
linear combination of one state occurs in conjunction with that of another state then a zero
23. Luke Moore, lm464 University of Kent, Canterbury
22
eigenvalue is then possible. However, what makes no sense is why a zero eigenvalue cannot occur
for larger numbers of sites with even values of L. In theory if a zero eigenvalue can exist for L = 4
then the same physics which allows this to be possible should allow it to be possible for L = 6, 8, 10
and 12 as well. The mystery is why this was not observed, what is special about the value of L = 4?
What distinguishes its behaviour from that of the larger systems with L = even number? This is
currently unknown.
The graph from the chapter of analysis of U = 0.00 allowed an estimate to be made of the energy per
particle for the thermodynamic limit, for L is infinite, a mathematical proof of the true value showed
that this value should be approximately -1.27. However, the value that was predicted from the graph
we plotted was -1.2162, this was calculated from data points for L = 4 – 12. The closeness of the
prediction from the graph with respect to the true value was surprising, given that only 5 points
were used to plot the straight line, and the straight line was extrapolated all the way from L = 12 to L
= infinity. The graph accurately predicted the value of the energy per particle for L = infinity to within
5% of the true value. That level of accuracy is staggering when one considers the small number of
data points and the lengthy extrapolation required to make the estimate.
If I had the time and resources I would like to have gathered data for larger system sizes too in order
to improve the estimate of the energy per particle in the thermodynamic limit. I would also have
liked to spend more time on determining exactly which states were included in the linear
combinations of each of the lowest energy eigenvalues of each of the graphs included in this report,
this information could have helped us to better understand the physics involved in each system size
and allowed a better understanding of behaviours. Additionally, I would have liked to keep
increasing the system size continuously until a phase transition was clearly visible on the graph. In an
ideal world I would have liked to have found some key features which indicate the presence of a
phase transition and have developed a list of criteria which must be fulfilled for a phase transition to
occur, I believe this which could vastly increase our understanding of the dynamics of quantum
phase transitions.
In conclusion, there are several continuations of this research which we would like to continue
working on in order to improve our understanding of the quantum phase transition. Unfortunately
there simply wasn’t enough time to complete everything that we would have liked to achieve. I
would like to continue this work and find the answers to the questions that remain, but as a major
limitation was limited resources, most notably computer capabilities, any continuation of this
research would not be worthwhile unless more powerful equipment was to be used. We have taken
this research as far as we could with our limited time frame and resources, and we hope to be able
to find answers to the remaining questions in future work.
24. Luke Moore, lm464 University of Kent, Canterbury
23
Bibliography
[1] Quantum Mechanics, Concepts and Applications, SECOND EDITION. Nouredine Zetelli, WILEY.
This source was used to get the Schrodinger Equation and this equation was used a lot in the early
stages of the project for solving small systems.
[2] Mathematical Methods in the Physical Sciences THIRD EDITION, Mary L. Boas. This source was
used to teach me about how to solve matrices for their eigenvalues and eigenvectors.
[3] Diagonalization- and Numerical Renormalization-Group-Based Methods for Interacting Quantum
Systems
Reinhard M. Noack∗ and Salvatore R. Manmana†,∗
∗Fachbereich Physik, Philipps-Universität Marburg, D-35032 Marburg, Germany
†Institut für Theoretische Physik III, Universität Stuttgart, Pfaffenwaldring 57, D-70550 Stuttgart,
Germany
[4] Numerical Recipes in C, The Art of Scientific Computer Programming SECOND EDITION. William H.
Press, Harvard-Smithsonian Center for Astrophysics. Saul A. Teukolsky, Department of Physics,
Cornell University. William T. Vetterling, Polaroid Corporation. Brian P. Flannery, EXXON Research
and Engineering Company. This source was used for the Jacobi routine in the computer program
used to gather results for this project. The full program is shown in the appendix of this report.
[5] THE C PROGRAMMING LANGUAGE SECOND EDITION, BRIAN W. KERNIGHAN, DENNIS M. RITCHIE.
PRENTICE HALL SOFTWARE SERIES. This source was used for learning the C computer programming
language which allowed me to write the computer code, used in this project.
25. Luke Moore, lm464 University of Kent, Canterbury
24
Appendix
The program which I have used to calculate the results from my research;
Beginning of Program - “#include <stdlib.h>
#include <stdio.h>
#include <math.h>
#include "nrutil.c"
#define ROTATE(a,i,j,k,l) g=a[i][j];h=a[k][l];a[i][j]=g-s*(h+g*tau); a[k][l]=h+s*(g-h*tau); // for use in
Jacobi
void jacobi(int n,double a[n][n], double d[n], double v[n][n], int *nrot);
int main()
{
FILE *file, *file1, *file2, *file3; // creates a file pointer for each of the files that will be needed for
the data from this program
file = fopen("results.dat","w");
file1 = fopen("results1.dat", "w");
file2 = fopen("results2.dat", "w");
file3 = fopen("results3.dat", "w");
int L,states,noparticles,NP; //defines variables
printf("L = "); scanf("%d",&L); // ask for size of lattice
printf("N = "); scanf("%d",&NP); // ask for desired number of particles
states=pow(2,L); // calculates the number of states
printf("L = %d, number of states = %dn",L,states); //writes the number of states to the screen
double Ham[states][states], e_vectors[states][states], e_values[states]; //defines variables
int state[L],newstate[L]; // defines variables
int i, i1, j,instate,outstate, rotations; // defines variables
double t,U,interaction, Constant, step, other; // defines variables
t=1.0; // defines value of t
printf("U = "); // prompts the user for the starting value of U
scanf("%lf",&U); // reads the value of U from the screen for use in the program
Constant = U; // defines the value of Constant to be U
printf("How far either side of the input value of U would you like to iterate? "); // prompts user for
range of U for the iteration
scanf("%lf", &other); // reads the value for the range from the screen
26. Luke Moore, lm464 University of Kent, Canterbury
25
printf("n"); // prints a line break to the screen
printf("What is the step in the value of U for the loop? (not less than 0.001,
although a step of 0.01 is preferred) "); // prompts the user for the division in U to be iterated
scanf("%lf", &step); //reads in the value from the screen
printf("n"); // prints a line break to the screen
for(U=Constant-other; U<=Constant+other; U=U+step) //creates the loop for U to be iterated over
{
for (i=0;i<states;i++) for (j=0;j<states;j++) Ham[i][j]=0;
for (instate=0;instate<states;instate++) // main loop in construction of Hamiltonian
{
// First define the state
for(i=0;i<L;i++)
state[i]=(instate>>i)&1;
// print start state
for(i=0;i<L;i++)
// Now start applying Hamiltonian
// First, move right terms
for(i=0;i<L;i++) // move ith element right if possible
{
for(j=0;j<L;j++) newstate[j]=state[j];
i1=i+1;
if (i1==L) i1=0;
if ((state[i]==1)&&(state[i1]==0)) // we can move
{
newstate[i]=0; newstate[i1]=1; // swap terms
// figure out numerical value of new state
outstate=0;
for (j=0;j<L;j++) outstate+=newstate[j]<<j;
Ham[instate][outstate]+=-t; // set the Hamiltonian matrix element
}
27. Luke Moore, lm464 University of Kent, Canterbury
26
} // end of moving right loop
// Now, move left terms
for(i=0;i<L;i++) // move ith element right if possible
{
for(j=0;j<L;j++) newstate[j]=state[j];
i1=i-1;
if (i1<0) i1=L-1;
if ((state[i]==1)&&(state[i1]==0)) // we can move
{
newstate[i]=0; newstate[i1]=1; // swap terms
// figure out numerical value of new state
outstate=0;
for (j=0;j<L;j++) outstate+=newstate[j]<<j;
Ham[instate][outstate]+=-t; // set the Hamiltonian matrix element
}
} // end of moving left loop
// now interaction term
interaction=0;
for(i=0;i<L-1;i++) if ((state[i]==1)&&(state[i+1]==1)) interaction+=U;
if((state[0]==1)&&(state[L-1]==1)) interaction+=U;
//printf("Interaction: %lfn",interaction);
Ham[instate][instate]+=interaction; // interaction is a diagonal matrx element
noparticles=0;
for(i=0;i<L;i++) if (state[i]==1) noparticles++;
if (noparticles!=NP)Ham[instate][instate]+=30;
} // end of main loop of construction of Hamiltonian
// Now call jacobi to find the eigenvalues
28. Luke Moore, lm464 University of Kent, Canterbury
27
jacobi(states,Ham,e_values,e_vectors, &rotations); // diagonalise a matrix Ham which is (states x
states) in size.
for(i=0;i<states;i++)
{
if(i==(states-1))
{
fprintf(file1, "%14.6lf %14.6lf n", U, e_values[i]);
}
if(i==(states-2))
{
fprintf(file2, "%14.6lf %14.6lf n", U, e_values[i]);
}
if(i==(states-3)) //makes it so only the lowest three eigenvalues are written to the file and can
then be plotted
{
fprintf(file3, "%14.6lf %14.6lf n", U, e_values[i]);
}
}
fprintf(file, "%14.6lf ", U); for(i=0;i<states;i++) if(i>=states-3) fprintf(file, "%14.6lf ", e_values[i]);
fprintf(file, "n");
for(i=0;i<states;i++)
{
for(j=0;j<states;j++)
{
//printf("%14.6lf ", e_vectors[j][i]);
//fprintf(file, "%14.6lf ", e_vectors[j][i]);
}
// printf("n");
// fprintf("n");
}
}
fclose(file);
fclose(file1);
fclose(file2);
fclose(file3);
printf("nnn");
printf("Done, please check the file results.c, then plot graph with gnuplot.
Do not attempt to open the results file, it is too big!!! n");
} // end of main program
// This is standard Jacobi subroutine from numerical recipies
void jacobi(int n,double a[n][n], double d[n], double v[n][n], int *nrot)
// to call jacobi: n = size of matrix, a is initial matrix (destroyed by the routine)
29. Luke Moore, lm464 University of Kent, Canterbury
28
// on output, d is an array of the eigenvalues, v is an matrix of the eigenvectors, and nrot gives you
how many jocobi rotations it took (in case you care!)
{
int j,iq,ip,i, k, ii, jj;
double tresh,theta,tau,t,sm,s,h,g,c,*b,*z, p;
b=vector(1,n);
z = vector(1,n);
for (ip=0;ip<n;ip++) {
for (iq=0;iq<n;iq++) v[ip][iq]=0.0;
v[ip][ip]=1.0;
}
for (ip=0;ip<n;ip++) {
b[ip]=d[ip]=a[ip][ip];
z[ip]=0.0;
}
*nrot=0;
for (i=1;i<=50;i++) {
sm=0.0;
for (ip=0;ip<n-1;ip++) {
for (iq=ip+1;iq<n;iq++)
sm += fabs(a[ip][iq]);
}
if (sm == 0.00)
{
for(ii=0;ii<n-1;ii++)
{
p=d[k=ii];
for(jj=ii+1;jj<n;jj++)
if(d[jj]>p)
p=d[k=jj];
if(k!= ii)
{
d[k]=d[ii];
d[ii] = p;
for(jj=1;jj<=n;jj++)
{
p=v[jj][ii];
v[jj][ii]=v[jj][k];
v[jj][k] = p;
}
}
}
free(z);
free(b);
30. Luke Moore, lm464 University of Kent, Canterbury
29
return;
}
if (i < 4)
tresh=0.2*sm/(n*n);
else
tresh=0.0;
for (ip=0;ip<n-1;ip++) {
for (iq=ip+1;iq<n;iq++) {
g=100.0*fabs(a[ip][iq]);
if (i > 4 && (double)(fabs(d[ip])+g) == (double)fabs(d[ip])
&& (double)(fabs(d[iq])+g) == (double)fabs(d[iq]))
a[ip][iq]=0.0;
else if (fabs(a[ip][iq]) > tresh) {
h=d[iq]-d[ip];
if ((double)(fabs(h)+g) == (double)fabs(h))
t=(a[ip][iq])/h;
else {
theta=0.5*h/(a[ip][iq]);
t=1.0/(fabs(theta)+sqrt(1.0+theta*theta));
if (theta < 0.0) t = -t;
}
c=1.0/sqrt(1+t*t);
s=t*c;
tau=s/(1.0+c);
h=t*a[ip][iq];
z[ip] -= h;
z[iq] += h;
d[ip] -= h;
d[iq] += h;
a[ip][iq]=0.0;
for (j=0;j<=ip-1;j++) {
ROTATE(a,j,ip,j,iq)
}
for (j=ip+1;j<=iq-1;j++) {
ROTATE(a,ip,j,j,iq)
}
for (j=iq+1;j<n;j++) {
ROTATE(a,ip,j,iq,j)
}
for (j=0;j<n;j++) {
ROTATE(v,j,ip,j,iq)
}
++(*nrot);
}
}
31. Luke Moore, lm464 University of Kent, Canterbury
30
}
for (ip=0;ip<n;ip++) {
b[ip] += z[ip];
d[ip]=b[ip];
z[ip]=0.0;
}
}
printf("Too many iterations in routine jacobi");
}“ - End of Program
Graphs for L is odd
Graph 6 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for
L=7 sites and N = 4 particles. The green line is completely obscured by the blue line, indicating that
this system has two identical eigenvalues.
32. Luke Moore, lm464 University of Kent, Canterbury
31
Graph 8 – This graph shows how the eigenvalues of the system vary as the value of U is varied, for
L=9 sites and N = 5 particles. The green line is completely obscured by the blue line, indicating that
this system has two identical eigenvalues.
Graphs for Even L
Difference for graph 5
33. Luke Moore, lm464 University of Kent, Canterbury
32
Difference for graph 7
Difference for graph 8
34. Luke Moore, lm464 University of Kent, Canterbury
33
Difference for graph 9