This document summarizes a laser-based Light Detection and Ranging (LIDAR) system called the Laser Obstacle Avoidance Marconi (LOAM) that was developed for obstacle warning and avoidance on manned and unmanned aircraft. LOAM uses eye-safe lasers and beam steering to scan an area around the aircraft's flight path, detecting obstacles with high accuracy in a variety of weather conditions. It was originally developed for military helicopters but this paper discusses adapting it for integration on small-to-medium unmanned aircraft to help navigate low-level flights and avoid obstacles and hazards. The paper describes LOAM's scanning pattern and field of view, how it detects, classifies and warns of obstacles, and focuses on
“Sense and avoid”-what’s required for aircraft safety?
sensor and safety
aircraft safety using sensors
sensors for safety of people and aircraft traffic
seminar presentation
descriptive presentation
Unmanned Aerial Vehicle: Review of Onboard Sensors, Application Fields, Open ...CSCJournals
Small Unmanned Aerial Vehicle (sUAV) platforms are becoming a potential source of data for many applications thanks to their onboard sensors. They can also provide more technical, environmental and economical advantages compared to classical manned aerial vehicle. This paper reports the state of the art of sUAV platforms and onboard sensors. It reviews their application fields, their open problems and their research issues.
Stealth Technology essentially deals with designs and materials engineered for the military purpose of avoiding detection by radar or any other electronic system. The concept of stealth is not new. Being able to operate without the knowledge of the enemy has always been a goal of military technology and tactics. From the late years of World War II to today, stealth has been a major factor in the improvement of reconnaissance and attack aircraft. To achieve perfect stealth for an aircraft it should be stealthy in different ways, visual, acoustics, radar, infrared, etc.
STEALTH TECHNOLOGY FOR AIRCRAFTS BASED ON MICROWAVE ABSORBER USING HONEYCOMB ...Nirmal S
Radar absorbing structure is one of the best methods for realizing the radar stealth technology. They are structures that can soak up the incident electromagnetic energy, thereby reducing the net energy available for reflection back to the radar. They have the functions of load bearing as well. Emphasis is placed on the design of broadband microwave absorber using a honeycomb structure.
“Sense and avoid”-what’s required for aircraft safety?
sensor and safety
aircraft safety using sensors
sensors for safety of people and aircraft traffic
seminar presentation
descriptive presentation
Unmanned Aerial Vehicle: Review of Onboard Sensors, Application Fields, Open ...CSCJournals
Small Unmanned Aerial Vehicle (sUAV) platforms are becoming a potential source of data for many applications thanks to their onboard sensors. They can also provide more technical, environmental and economical advantages compared to classical manned aerial vehicle. This paper reports the state of the art of sUAV platforms and onboard sensors. It reviews their application fields, their open problems and their research issues.
Stealth Technology essentially deals with designs and materials engineered for the military purpose of avoiding detection by radar or any other electronic system. The concept of stealth is not new. Being able to operate without the knowledge of the enemy has always been a goal of military technology and tactics. From the late years of World War II to today, stealth has been a major factor in the improvement of reconnaissance and attack aircraft. To achieve perfect stealth for an aircraft it should be stealthy in different ways, visual, acoustics, radar, infrared, etc.
STEALTH TECHNOLOGY FOR AIRCRAFTS BASED ON MICROWAVE ABSORBER USING HONEYCOMB ...Nirmal S
Radar absorbing structure is one of the best methods for realizing the radar stealth technology. They are structures that can soak up the incident electromagnetic energy, thereby reducing the net energy available for reflection back to the radar. They have the functions of load bearing as well. Emphasis is placed on the design of broadband microwave absorber using a honeycomb structure.
Stealth aircrafts are aircraft that use stealth technology to avoid detection by employing a combination of
features to interfere with radar as well as reduce visibility in the infrared visual, audio, and radio frequency (RF)
spectrum. While no aircraft is totally invisible to radar, stealth aircraft prevent conventional radar from detecting
or tracking the aircraft effectively, reducing the odds of a successful attack. Stealth is the combination of passive
low observable (LO) features and active emitters such as Low Probability of Intercept Radars, radios and laser
designators. These are usually combined with active defenses such as chaff, flares, and ECM. Stealth refers to
the act of trying to hide or evade detection, For airplanes, stealth first meant hiding from radar. It is not so much
a technology as a concept that incorporates a broad series of technologies and design features. This paper shows
the development of stealthy airplanes which teaches several important lessons about technology. The first is that
often many different technologies like Nano-Technology with Aerodynamics must be combined to achieve a
desired outcome. An advance in one field, such as materials or aerodynamics, must be accompanied by advances
in other fields, such as computing, constructing or electromagnetic theory. The second lesson is that sometimes
trial and error techniques are insufficient and advances in mathematical theory are necessary in order to achieve
significant advances. Finally, stealth teaches the lesson that technology is never static - a "stealth breakthrough"
may only last for a few years before an adversary finds a means of countering it. So this paper deals with how to
handle the Stealth. This paper also shows how and where to use Nano-Technology.
A Strategy for Reliability Evaluation and Fault Diagnosis of Autonomous Under...Koorosh Aslansefat
Underwater vehicles contribute significantly to exploiting great maritime resources. Autonomous vehicles are one of the various kinds of underwater vehicles which are able to perform operations without operator's interference. Autonomous underwater vehicles can be classified according to their propulsion systems. Autonomous Underwater Gliders (AUG) are among autonomous underwater vehicles which fall under the category of glide type underwater vehicles. They are designed in a way that they benefit low energy consumption and a wide survey range. Their reliable design is one of the challenges facing their manufacturing. Fault tolerance is one of the important attributes in designing reliable systems. Recognizing, evaluating and facing the faults are of great importance in designing fault tolerant systems. This paper studies underwater Glider vehicles' subsystems, considers their faults and causes, and provides a typical fault tree for these vehicles form which glider reliability and the effects of glider subsystems on its failure can be driven.
In the aftermath of the September 11, 2001 attacks on the World Trade Center Towers, and the inability of First Responders to effect a rescue of any victims above the aircraft impact points, the SKYSCRAPER EMERGENCY RESPONSE TEAM or IN-S.E.R.T., strategy was crafted with colleagues within academia, industry and government. Formulated with input from key members of the Detroit Fire Department, inclusive of the late General Manager Weylin Gildon, and the Chicago Fire Department, IN-S.E.R.T. was designed as a means to effectively rescue disaster victims trapped in historically inaccessible areas. In this case, the upper floors of a burning high-rise, while using off-the-shelf firefighting technology and modified first response rescue methodologies structured to epitomize operational simplicity. Moreover, it is to serve as a global first response template to be utilized by emergency teams in multiple countries benefitting from strict protocols of cooperation/collaboration.
IN-S.E.R.T. teams, strategically based around the world and equipped with Boeing C-17 Globemasters modestly modified for this mission, would be capable of responding to any emergency, anywhere.
This paper was presented to 18 Argonne National Laboratory scientists and 2 FEMA representatives for review on 18 October, 2001.
Copyright GHHLLC 2001-2008
248-695-0009
Micro-sized Unmanned Aerial Vehicles (UAVs) or micro Air Vehicles (MAVs),are used to acquire real-time visual information for a wide range of applications.
Island Air Defence: Challenges, Novel Surveillance Concepts and Advanced Rada...Ashwin Samales
By Yeo Siew Yam, Yeo Jiunn Wah and Henry Yip
The present-day air defence surveillance system is designed to detect threats originating from external airspace in a conventional military conflict, such as one involving multiple fast-flying fighters, helicopters and missiles. However, the operational environment has evolved to be far more challenging and complex over the past decade, with the emergence of stealthier targets that make better use of terrain to avoid detection. At the same time, there is always a desire to see further than the enemy and to obtain more information about the target. This paper aims to identify the inadequacies of the present-day air defence radar system and to propose some novel sensor solutions which include Ultra High Frequency/ Very High Frequency radar, bi-static/multi-static and passive radar, elevated sensors, High Frequency surface wave radar and non-cooperative target recognition techniques. The advantages, challenges and cost effectiveness of these advanced techniques will be analysed to develop a picture of future surveillance systems.
International Journal of Engineering and Science Invention (IJESI)inventionjournals
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Stealth aircrafts are aircraft that use stealth technology to avoid detection by employing a combination of
features to interfere with radar as well as reduce visibility in the infrared visual, audio, and radio frequency (RF)
spectrum. While no aircraft is totally invisible to radar, stealth aircraft prevent conventional radar from detecting
or tracking the aircraft effectively, reducing the odds of a successful attack. Stealth is the combination of passive
low observable (LO) features and active emitters such as Low Probability of Intercept Radars, radios and laser
designators. These are usually combined with active defenses such as chaff, flares, and ECM. Stealth refers to
the act of trying to hide or evade detection, For airplanes, stealth first meant hiding from radar. It is not so much
a technology as a concept that incorporates a broad series of technologies and design features. This paper shows
the development of stealthy airplanes which teaches several important lessons about technology. The first is that
often many different technologies like Nano-Technology with Aerodynamics must be combined to achieve a
desired outcome. An advance in one field, such as materials or aerodynamics, must be accompanied by advances
in other fields, such as computing, constructing or electromagnetic theory. The second lesson is that sometimes
trial and error techniques are insufficient and advances in mathematical theory are necessary in order to achieve
significant advances. Finally, stealth teaches the lesson that technology is never static - a "stealth breakthrough"
may only last for a few years before an adversary finds a means of countering it. So this paper deals with how to
handle the Stealth. This paper also shows how and where to use Nano-Technology.
A Strategy for Reliability Evaluation and Fault Diagnosis of Autonomous Under...Koorosh Aslansefat
Underwater vehicles contribute significantly to exploiting great maritime resources. Autonomous vehicles are one of the various kinds of underwater vehicles which are able to perform operations without operator's interference. Autonomous underwater vehicles can be classified according to their propulsion systems. Autonomous Underwater Gliders (AUG) are among autonomous underwater vehicles which fall under the category of glide type underwater vehicles. They are designed in a way that they benefit low energy consumption and a wide survey range. Their reliable design is one of the challenges facing their manufacturing. Fault tolerance is one of the important attributes in designing reliable systems. Recognizing, evaluating and facing the faults are of great importance in designing fault tolerant systems. This paper studies underwater Glider vehicles' subsystems, considers their faults and causes, and provides a typical fault tree for these vehicles form which glider reliability and the effects of glider subsystems on its failure can be driven.
In the aftermath of the September 11, 2001 attacks on the World Trade Center Towers, and the inability of First Responders to effect a rescue of any victims above the aircraft impact points, the SKYSCRAPER EMERGENCY RESPONSE TEAM or IN-S.E.R.T., strategy was crafted with colleagues within academia, industry and government. Formulated with input from key members of the Detroit Fire Department, inclusive of the late General Manager Weylin Gildon, and the Chicago Fire Department, IN-S.E.R.T. was designed as a means to effectively rescue disaster victims trapped in historically inaccessible areas. In this case, the upper floors of a burning high-rise, while using off-the-shelf firefighting technology and modified first response rescue methodologies structured to epitomize operational simplicity. Moreover, it is to serve as a global first response template to be utilized by emergency teams in multiple countries benefitting from strict protocols of cooperation/collaboration.
IN-S.E.R.T. teams, strategically based around the world and equipped with Boeing C-17 Globemasters modestly modified for this mission, would be capable of responding to any emergency, anywhere.
This paper was presented to 18 Argonne National Laboratory scientists and 2 FEMA representatives for review on 18 October, 2001.
Copyright GHHLLC 2001-2008
248-695-0009
Micro-sized Unmanned Aerial Vehicles (UAVs) or micro Air Vehicles (MAVs),are used to acquire real-time visual information for a wide range of applications.
Island Air Defence: Challenges, Novel Surveillance Concepts and Advanced Rada...Ashwin Samales
By Yeo Siew Yam, Yeo Jiunn Wah and Henry Yip
The present-day air defence surveillance system is designed to detect threats originating from external airspace in a conventional military conflict, such as one involving multiple fast-flying fighters, helicopters and missiles. However, the operational environment has evolved to be far more challenging and complex over the past decade, with the emergence of stealthier targets that make better use of terrain to avoid detection. At the same time, there is always a desire to see further than the enemy and to obtain more information about the target. This paper aims to identify the inadequacies of the present-day air defence radar system and to propose some novel sensor solutions which include Ultra High Frequency/ Very High Frequency radar, bi-static/multi-static and passive radar, elevated sensors, High Frequency surface wave radar and non-cooperative target recognition techniques. The advantages, challenges and cost effectiveness of these advanced techniques will be analysed to develop a picture of future surveillance systems.
International Journal of Engineering and Science Invention (IJESI)inventionjournals
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
International Journal of Engineering and Science Invention (IJESI) inventionjournals
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Control of aircraft from the base station using eog siganl transmissiontheijes
The International Journal of Engineering & Science is aimed at providing a platform for researchers, engineers, scientists, or educators to publish their original research results, to exchange new ideas, to disseminate information in innovative designs, engineering experiences and technological skills. It is also the Journal's objective to promote engineering and technology education. All papers submitted to the Journal will be blind peer-reviewed. Only original articles will be published.
The papers for publication in The International Journal of Engineering& Science are selected through rigorous peer reviews to ensure originality, timeliness, relevance, and readability.
Control of aircraft from the base station using eog siganl transmissiontheijes
The International Journal of Engineering & Science is aimed at providing a platform for researchers, engineers, scientists, or educators to publish their original research results, to exchange new ideas, to disseminate information in innovative designs, engineering experiences and technological skills. It is also the Journal's objective to promote engineering and technology education. All papers submitted to the Journal will be blind peer-reviewed. Only original articles will be published.
Design and Structural Analysis for an Autonomous UAV System Consisting of Sla...IOSR Journals
Abstract: An Unmanned Aerial Vehicle (UAV) is an aircraft without a human pilot. It can either be controlled manually by a pilot on the ground using a trans-receiver or it can be programmed to operate autonomously. In this proposed control system, multiple slave Micro Aerial Vehicles(MAV) are dispatched from a master UAV for surveillance. All the MAVs are synchronized with each other through the master UAV which highlights their purpose and position. The master UAV acts as a mobile base for the surveillance, it stores the data collected by the MAVs and transmits them to a remote base. A design of the UAV-MAV system and its performance analysis is presented.
Keywords- Autonomous control, Characteristics, Linux, Master / Slave Aerial Vehicles, NX 8.0 Nastran, Surveillance.
Design and Structural Analysis for an Autonomous UAV System Consisting of Sla...IOSR Journals
An Unmanned Aerial Vehicle (UAV) is an aircraft without a human pilot. It can either be controlled manually by a pilot on the ground using a trans-receiver or it can be programmed to operate autonomously. In this proposed control system, multiple slave Micro Aerial Vehicles(MAV) are dispatched from a master UAV for surveillance. All the MAVs are synchronized with each other through the master UAV which highlights their purpose and position. The master UAV acts as a mobile base for the surveillance, it stores the data collected by the MAVs and transmits them to a remote base. A design of the UAV-MAV system and its performance analysis is presented.
Comparative Study of Indoor Navigation Systems for Autonomous FlightTELKOMNIKA JOURNAL
Recently, Unmanned Aerial Vehicles (UAVs) have attracted the society and researchers due to
the capability to perform in economic, scientific and emergency scenarios, and are being employed in large
number of applications especially during the hostile environments. They can operate autonomously for
both indoor and outdoor applications mainly including search and rescue, manufacturing, forest fire
tracking, remote sensing etc. For both environments, precise localization plays a critical role in order to
achieve high performance flight and interacting with the surrounding objects. However, for indoor areas
with degraded or denied Global Navigation Satellite System (GNSS) situation, it becomes challenging to
control UAV autonomously especially where obstacles are unidentified. A large number of techniques by
using various technologies are proposed to get rid of these limits. This paper provides a comparison of
such existing solutions and technologies available for this purpose with their strengths and limitations.
Further, a summary of current research status with unresolved issues and opportunities is provided that
would provide research directions to the researchers of the similar interests.
We will introduce a development of a mini-quad rotor system for indoor application at Keokuk University. The propulsion system consists of X-UFO blade propellers and brushless direct current (DC) motors assembled on a very stiff ai rframe made of carbon fiber composite material. The attitude control system consists of a stab ility augmentation system as the inner loop control and a modern control approach as the outer lo op. The closed-loop contro l is a PID controller,which is used for the flight test to valid ate our aerodynamic mode ling. To perform an experimental flight test,basic electronics hardware will de velop in a simple configuration. We will use an AVR microcontroller as the embe dded controller,a low-cost 100 Hz AHRS for inertial sensing,infrared (IR) sensors for horizontal ranging,and an ultrasonic sensor for ground ranging. A high performance propeller system is built on an X-UFO quad rotor airframe. The developing flying robot is shown to have an automatic hovering ability with aid of a ground control system that uses mon itoring and a fail-safe system. We will introduce a new quad rotor platform for realizing autonomous navigation in unknown indoor/outdoor environments. Au tonomous waypoint navigation,obs tacle avoidance and flight control is implemented on-board. The system does not require a special environment,artificial markers or an external reference system. We will develop a monolithic,mechanically damped perception unit which is equipped with a stereo camera pair,an Inertial Measurement Unit (IMU),two processor and an FPGA board.
Development of control system for quadrotor unmanned aerial vehicle using LoR...TELKOMNIKA JOURNAL
In the past decades, there has been a growing interest in unmanned aerial vehicles (UAVs) for educational, research, business, and military purposes. The most critical data for a flight system is the telemetry data from the GPS and wireless transmitter and also from the gyroscope and accelerometer. The objective of this paper is to develop a control system for UAV using long-range wireless communication and GPS. First, Matlab simulation was conducted to obtain an optimum PID gains controller. Then LoRa wireless was evaluated during clear and rainy days. Static and dynamic points measurement was conducted to validate and optimize GPS accuracy. GeoMapping in Matlab and Google GPS GeoPlanner were then used to analyze the traveled UAV flight path.
From many past years, Stealth Technology has became very effective approach for aircraft to hide it from radar system. Especially for military operations, "Low Observable" technology is best these days. These days all countries are using "Low Observable" principles and techniques for making their aircraft, also the many countries are upgrading their old generation aircraft by making modification to hide from radar system. However, Low observable means not completely invisible but complete disappearance from radar system. Stealth technology have many advantages but besides advantages it has also some disadvantages like its development cost, flyaway cost and maintenance cost are much higher than normal aircraft. Due to capabilities of Stealth technology many countries have been developing anti stealth technology 2 These days United States of America taking advantage of stealth technology. This paper will begin by a brief history of development of stealth aircraft and short introduction of most popular stealth fighter aircrafts 2 . Vimal Kumar Yadav | Pikesh Bansal | Shivam Sharma "A Review of Stealth Technology" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-4 | Issue-4 , June 2020, URL: https://www.ijtsrd.com/papers/ijtsrd31142.pdf Paper Url :https://www.ijtsrd.com/engineering/mechanical-engineering/31142/a-review-of-stealth-technology/vimal-kumar-yadav
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
After emerging from the resources wilderness thanks to its world-class geology and industry-friendly government policies, South Australia is now a leader in Australian mining and hydrocarbon developments over the last decade.
In little more than a decade the State has gone from four operating mines to more than 20 and is rated Australia’s second most popular exploration destination.
With a comprehensive review of the Mining Act under way, the State’s attractiveness as a place for resources and energy investment is expected to be strengthened.
South Australia is now a leader in the exploration for next generation energy sources with companies such as Santos and BP leading the charge, while initiatives such as the Government’s Copper Strategy – designed to treble annual copper production to 1 mtpa – is set to establish the State as one of the world’s premier producers of the red metal.
In the energy space, uranium and nuclear energy is another area of keen interest, with the South Australian Government initiating a Royal Commission into Participation in the Nuclear Fuel Cycle in 2016.
The State has become synonymous with innovation, cutting-edge development and a remarkable rate of discovery. From uranium prospects, to geothermal energy and the buoyant hydrocarbons sector, South Australia is now a leader in the exploration for next generation energy sources.
With full support from the Department of State Development, the South Australian Resources and Energy Investment Conference will continue to showcase this burgeoning sector in 2017. From copper plays in the Gawler Craton, to iron ore and graphite developments on the Eyre Peninsula and the emergence of the State as a new hydrocarbon frontier, South Australia’s resources potential is at last being fully recognised.
The conference will feature the success stories and emerging players in the State from both minerals and oil and gas and will also tackle thorny industry issues such as infrastructure, corporate social responsibility and the future of the Woomera Prohibited Area.
Deep Behavioral Phenotyping in Systems Neuroscience for Functional Atlasing a...Ana Luísa Pinho
Functional Magnetic Resonance Imaging (fMRI) provides means to characterize brain activations in response to behavior. However, cognitive neuroscience has been limited to group-level effects referring to the performance of specific tasks. To obtain the functional profile of elementary cognitive mechanisms, the combination of brain responses to many tasks is required. Yet, to date, both structural atlases and parcellation-based activations do not fully account for cognitive function and still present several limitations. Further, they do not adapt overall to individual characteristics. In this talk, I will give an account of deep-behavioral phenotyping strategies, namely data-driven methods in large task-fMRI datasets, to optimize functional brain-data collection and improve inference of effects-of-interest related to mental processes. Key to this approach is the employment of fast multi-functional paradigms rich on features that can be well parametrized and, consequently, facilitate the creation of psycho-physiological constructs to be modelled with imaging data. Particular emphasis will be given to music stimuli when studying high-order cognitive mechanisms, due to their ecological nature and quality to enable complex behavior compounded by discrete entities. I will also discuss how deep-behavioral phenotyping and individualized models applied to neuroimaging data can better account for the subject-specific organization of domain-general cognitive systems in the human brain. Finally, the accumulation of functional brain signatures brings the possibility to clarify relationships among tasks and create a univocal link between brain systems and mental functions through: (1) the development of ontologies proposing an organization of cognitive processes; and (2) brain-network taxonomies describing functional specialization. To this end, tools to improve commensurability in cognitive science are necessary, such as public repositories, ontology-based platforms and automated meta-analysis tools. I will thus discuss some brain-atlasing resources currently under development, and their applicability in cognitive as well as clinical neuroscience.
Richard's aventures in two entangled wonderlandsRichard Gill
Since the loophole-free Bell experiments of 2020 and the Nobel prizes in physics of 2022, critics of Bell's work have retreated to the fortress of super-determinism. Now, super-determinism is a derogatory word - it just means "determinism". Palmer, Hance and Hossenfelder argue that quantum mechanics and determinism are not incompatible, using a sophisticated mathematical construction based on a subtle thinning of allowed states and measurements in quantum mechanics, such that what is left appears to make Bell's argument fail, without altering the empirical predictions of quantum mechanics. I think however that it is a smoke screen, and the slogan "lost in math" comes to my mind. I will discuss some other recent disproofs of Bell's theorem using the language of causality based on causal graphs. Causal thinking is also central to law and justice. I will mention surprising connections to my work on serial killer nurse cases, in particular the Dutch case of Lucia de Berk and the current UK case of Lucy Letby.
THE IMPORTANCE OF MARTIAN ATMOSPHERE SAMPLE RETURN.Sérgio Sacani
The return of a sample of near-surface atmosphere from Mars would facilitate answers to several first-order science questions surrounding the formation and evolution of the planet. One of the important aspects of terrestrial planet formation in general is the role that primary atmospheres played in influencing the chemistry and structure of the planets and their antecedents. Studies of the martian atmosphere can be used to investigate the role of a primary atmosphere in its history. Atmosphere samples would also inform our understanding of the near-surface chemistry of the planet, and ultimately the prospects for life. High-precision isotopic analyses of constituent gases are needed to address these questions, requiring that the analyses are made on returned samples rather than in situ.
Salas, V. (2024) "John of St. Thomas (Poinsot) on the Science of Sacred Theol...Studia Poinsotiana
I Introduction
II Subalternation and Theology
III Theology and Dogmatic Declarations
IV The Mixed Principles of Theology
V Virtual Revelation: The Unity of Theology
VI Theology as a Natural Science
VII Theology’s Certitude
VIII Conclusion
Notes
Bibliography
All the contents are fully attributable to the author, Doctor Victor Salas. Should you wish to get this text republished, get in touch with the author or the editorial committee of the Studia Poinsotiana. Insofar as possible, we will be happy to broker your contact.
Seminar of U.V. Spectroscopy by SAMIR PANDASAMIR PANDA
Spectroscopy is a branch of science dealing the study of interaction of electromagnetic radiation with matter.
Ultraviolet-visible spectroscopy refers to absorption spectroscopy or reflect spectroscopy in the UV-VIS spectral region.
Ultraviolet-visible spectroscopy is an analytical method that can measure the amount of light received by the analyte.
(May 29th, 2024) Advancements in Intravital Microscopy- Insights for Preclini...Scintica Instrumentation
Intravital microscopy (IVM) is a powerful tool utilized to study cellular behavior over time and space in vivo. Much of our understanding of cell biology has been accomplished using various in vitro and ex vivo methods; however, these studies do not necessarily reflect the natural dynamics of biological processes. Unlike traditional cell culture or fixed tissue imaging, IVM allows for the ultra-fast high-resolution imaging of cellular processes over time and space and were studied in its natural environment. Real-time visualization of biological processes in the context of an intact organism helps maintain physiological relevance and provide insights into the progression of disease, response to treatments or developmental processes.
In this webinar we give an overview of advanced applications of the IVM system in preclinical research. IVIM technology is a provider of all-in-one intravital microscopy systems and solutions optimized for in vivo imaging of live animal models at sub-micron resolution. The system’s unique features and user-friendly software enables researchers to probe fast dynamic biological processes such as immune cell tracking, cell-cell interaction as well as vascularization and tumor metastasis with exceptional detail. This webinar will also give an overview of IVM being utilized in drug development, offering a view into the intricate interaction between drugs/nanoparticles and tissues in vivo and allows for the evaluation of therapeutic intervention in a variety of tissues and organs. This interdisciplinary collaboration continues to drive the advancements of novel therapeutic strategies.
The ability to recreate computational results with minimal effort and actionable metrics provides a solid foundation for scientific research and software development. When people can replicate an analysis at the touch of a button using open-source software, open data, and methods to assess and compare proposals, it significantly eases verification of results, engagement with a diverse range of contributors, and progress. However, we have yet to fully achieve this; there are still many sociotechnical frictions.
Inspired by David Donoho's vision, this talk aims to revisit the three crucial pillars of frictionless reproducibility (data sharing, code sharing, and competitive challenges) with the perspective of deep software variability.
Our observation is that multiple layers — hardware, operating systems, third-party libraries, software versions, input data, compile-time options, and parameters — are subject to variability that exacerbates frictions but is also essential for achieving robust, generalizable results and fostering innovation. I will first review the literature, providing evidence of how the complex variability interactions across these layers affect qualitative and quantitative software properties, thereby complicating the reproduction and replication of scientific studies in various fields.
I will then present some software engineering and AI techniques that can support the strategic exploration of variability spaces. These include the use of abstractions and models (e.g., feature models), sampling strategies (e.g., uniform, random), cost-effective measurements (e.g., incremental build of software configurations), and dimensionality reduction methods (e.g., transfer learning, feature selection, software debloating).
I will finally argue that deep variability is both the problem and solution of frictionless reproducibility, calling the software science community to develop new methods and tools to manage variability and foster reproducibility in software systems.
Exposé invité Journées Nationales du GDR GPL 2024
Slide 1: Title Slide
Extrachromosomal Inheritance
Slide 2: Introduction to Extrachromosomal Inheritance
Definition: Extrachromosomal inheritance refers to the transmission of genetic material that is not found within the nucleus.
Key Components: Involves genes located in mitochondria, chloroplasts, and plasmids.
Slide 3: Mitochondrial Inheritance
Mitochondria: Organelles responsible for energy production.
Mitochondrial DNA (mtDNA): Circular DNA molecule found in mitochondria.
Inheritance Pattern: Maternally inherited, meaning it is passed from mothers to all their offspring.
Diseases: Examples include Leber’s hereditary optic neuropathy (LHON) and mitochondrial myopathy.
Slide 4: Chloroplast Inheritance
Chloroplasts: Organelles responsible for photosynthesis in plants.
Chloroplast DNA (cpDNA): Circular DNA molecule found in chloroplasts.
Inheritance Pattern: Often maternally inherited in most plants, but can vary in some species.
Examples: Variegation in plants, where leaf color patterns are determined by chloroplast DNA.
Slide 5: Plasmid Inheritance
Plasmids: Small, circular DNA molecules found in bacteria and some eukaryotes.
Features: Can carry antibiotic resistance genes and can be transferred between cells through processes like conjugation.
Significance: Important in biotechnology for gene cloning and genetic engineering.
Slide 6: Mechanisms of Extrachromosomal Inheritance
Non-Mendelian Patterns: Do not follow Mendel’s laws of inheritance.
Cytoplasmic Segregation: During cell division, organelles like mitochondria and chloroplasts are randomly distributed to daughter cells.
Heteroplasmy: Presence of more than one type of organellar genome within a cell, leading to variation in expression.
Slide 7: Examples of Extrachromosomal Inheritance
Four O’clock Plant (Mirabilis jalapa): Shows variegated leaves due to different cpDNA in leaf cells.
Petite Mutants in Yeast: Result from mutations in mitochondrial DNA affecting respiration.
Slide 8: Importance of Extrachromosomal Inheritance
Evolution: Provides insight into the evolution of eukaryotic cells.
Medicine: Understanding mitochondrial inheritance helps in diagnosing and treating mitochondrial diseases.
Agriculture: Chloroplast inheritance can be used in plant breeding and genetic modification.
Slide 9: Recent Research and Advances
Gene Editing: Techniques like CRISPR-Cas9 are being used to edit mitochondrial and chloroplast DNA.
Therapies: Development of mitochondrial replacement therapy (MRT) for preventing mitochondrial diseases.
Slide 10: Conclusion
Summary: Extrachromosomal inheritance involves the transmission of genetic material outside the nucleus and plays a crucial role in genetics, medicine, and biotechnology.
Future Directions: Continued research and technological advancements hold promise for new treatments and applications.
Slide 11: Questions and Discussion
Invite Audience: Open the floor for any questions or further discussion on the topic.
1. Abstract—The availability of powerful eye-safe laser sources and
the recent advancements in electro-optical and mechanical beam-
steering components have allowed laser-based Light Detection and
Ranging (LIDAR) to become a promising technology for obstacle
warning and avoidance in a variety of manned and unmanned aircraft
applications. LIDAR outstanding angular resolution and accuracy
characteristics are coupled to its good detection performance in a
wide range of incidence angles and weather conditions, providing an
ideal obstacle avoidance solution, which is especially attractive in
low-level flying platforms such as helicopters and small-to-medium
size Unmanned Aircraft (UA). The Laser Obstacle Avoidance
Marconi (LOAM) system is one of such systems, which was jointly
developed and tested by SELEX-ES and the Italian Air Force
Research and Flight Test Centre. The system was originally
conceived for military rotorcraft platforms and, in this paper, we
briefly review the previous work and discuss in more details some of
the key development activities required for integration of LOAM on
UA platforms. The main hardware and software design features of
this LOAM variant are presented, including a brief description of the
system interfaces and sensor characteristics, together with the system
performance models and data processing algorithms for obstacle
detection, classification and avoidance. In particular, the paper
focuses on the algorithm proposed for optimal avoidance trajectory
generation in UA applications.
Keywords—LIDAR, Low-Level Flight, Nap-of-the-Earth Flight,
Near Infra-Red, Obstacle Avoidance, Obstacle Detection, Obstacle
Warning System, Sense and Avoid, Trajectory Optimisation,
Unmanned Aircraft.
I. INTRODUCTION
OW level navigation and terrain-following operations
with UA are challenged by a variety of natural and man-
made obstacles, as well as by adverse weather conditions that
can significantly reduce the obstacles visibility. Reduced
visibility is the main factor preventing the UA pilot from
safely controlling the aircraft and from identifying possible
obstacle collision hazards. In these scenarios, radar has been
traditionally employed to automatically maintain a safe
separation from the ground by flying the aircraft at a certain
altitude above the terrain. However, state-of-the-art avionics
R. Sabatini is Associate Professor in the School of Aerospace, Mechanical
and Manufacturing Engineering, RMIT University, Melbourne, VIC 3000,
Australia. Formerly, he was a Senior Officer and Experimental Flight Test
Engineer in the Italian Air Force, Pratica di Mare AFB, 00040 Pomezia (RM),
Italy (phone: +61 3 9925 8015; e-mail: roberto.sabatini@rmit.edu.au).
A. Gardi is a doctoral research student in Aerospace Engineering in the
School of Aerospace, Mechanical and Manufacturing Engineering, RMIT
University, Melbourne, VIC 3000, Australia.
M. A. Richardson is Full Professor and Head of the Sensors and Systems
Engineering Department at Cranfield University, Defence Academy of the
United Kingdom, Shrivenham, Swindon, UK.
radars lack sufficient angular resolution to be able to detect
small natural and man-made obstacles such as trees, power
line cables and poles. The outstanding angular resolution and
accuracy characteristics of Light Detection and Ranging
(LIDAR), coupled to its good detection performance in a wide
range of incidence angles and weather conditions, provide an
ideal solution for obstacle avoidance, which is very attractive
in low-level flying Unmanned Aircraft (UA).The first laser
experiment directed towards a laser obstacle detection and
avoidance system started in 1965 with a Nd:YAG laser [1].
This system demonstrated the feasibility of using lasers to
detect obstacles such as wires. Semiconductor lasers, such as
GaAs and GaAlAs have been experimented with since 1966
[2]. These lasers radiate in the wavelength region of 0.84 to
0.9µm. The experience gained with these experimental
systems pointed out many features that are now being
incorporated into present day research. Due to eye-safety and
adverse weather (fog) propagation concerns, further
development with Nd:YAG and the various semiconductor
lasers has been substantially reduced, in favor of CO2 lasers.
One of the first heterodyne detection CO2system was the
LOWTAS, developed by UTRC. More recent developments
include CLARA, the Anglo-French compact laser radar
demonstrator program [3]; HIWA, a German system built and
tested by Eltro and Dornier [4], and OASYS, developed in the
U.S. by Northrop [5]. Current research efforts are
concentrating on 1.54µm (frequency-shifted Nd:YAG and
Er:glass) solid state lasers. One 1.54µm system has been
developed for the Italian Military Forces by Marconi S.p.A., in
cooperation with the Air Force Flight Test Centre. The
equipment, here named LOAM (Laser Obstacle Avoidance
Marconi), is a low-weight/volume navigation aid system for
rotary-wing/UA platform specifically designed to detect
potentially dangerous obstacle placed in or nearby the flight
trajectory and to warn the crew in suitable time to implement
effective avoiding maneuvers. The first airborne prototype of
LOAM was assembled in 2005 and extensive laboratory and
field tests were performed on the various sub-units, in order to
refine the system design (both hardware and software
components). Furthermore, the overall system was tested in
flight on helicopter test-bed platforms [6], [8]. Current
research is focusing on the development of a scaled LOAM
variant for small to medium size UA applications.
II.OPERATIONAL REQUIREMENTS
As discussed in [6], the first and most important
requirement for an airborne Obstacle Warning System (OWS)
to be effective is reliable detection of all relevant obstacles in
Roberto Sabatini, Alessandro Gardi, Mark A. Richardson
LIDAR Obstacle Warning and Avoidance System
for Unmanned Aircraft
L
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2. a wide envelope of conditions defined primarily by the
available laser range performance at various incidence angles
and by the system Field-of-View (FOV). These parameters
must be consistent with the aircraft dynamics envelope and
produce a very high probability of detection and a very low
false alarm rate. By all relevant obstacles, it is meant terrain
masses, buildings, poles, towers, power cables and indeed any
structure which may pose a hazard to low-level flying aircraft.
The need for a high probability of detection is obvious since
no real obstacle threat must go undetected. A low false alarm
rate is required to prevent spurious warnings that would
increase the pilot's workload unnecessarily and possibly cause
the pilot to raise his altitude without real need, thus making
him a better target in military operations requiring
electromagnetic covertness. Another operational requirement
is the minimum detection range. This will depend upon the
aircraft speed, climb angle capability (different for helicopter,
UA and airplane platforms), and pilot reaction time. As an
example, for an airplane flying straight and level at 300m/sec
and allowing a reasonable pilot reaction time and aircraft
response time of between five to ten seconds, detection ranges
of about two to three kilometers are adequate. For helicopter
and UA applications, this range is generally reduced by an
order of magnitude or more. The system should, ideally,
perform all of its required functions in all weather, day and
night. In practice however, laser radiation is not capable of all-
weather operation and the best trade-off of system
characteristics must be looked at.
III. LOAM SYSTEM DESCRIPTION
LOAM system was originally developed for military
rotorcraft platforms and, in the current study, we discuss some
of the key aspects related to its potential design evolutions for
integration in civil and military UA platforms. The general
architecture of LOAM is depicted in Fig. 1.
Fig. 1 General architecture of LOAM, adapted from [6]
LOAM is capable of detecting obstacles placed in or nearby
the aircraft trajectory, classifying/prioritizing the detected
obstacles, and providing obstacle warnings and information to
the crew (both aural and visual). As depicted in Fig. 2, the
laser beam scans periodically the area around the flight
trajectory inside a Field of View (FOV) of 40° in azimuth and
30° in elevation with field of regard capability of ±20° both on
azimuth and elevation, centered on the optical axis of the
system).
Fig. 2 LOAM Horizontal and Vertical FOV
LOAM also allows the operator to select the azimuth
orientation of the FOV among three different directions, and
in particular oriented either in the same direction of the
platform heading (normal flight envelope), or 20° left/right
with respect to the platform heading (to optimize coverage
during turning maneuvers at high angular speed). This is
represented in Fig. 3.
Fig. 3 LOAM FOV Orientation
During every scan (4 Hz repetition frequency), the laser
beam changes its orientation producing an elliptical pattern
across the FOV with the characteristics shown in Fig. 4.This
scanning pattern is well suited to detect the most dangerous
obstacles, like wires, due to the several and regularly spaced
vertical lines that it produces. Additionally, it can be obtained
by using very reliable scan mechanical devices with reduced
weight.
Fig. 4 LOAM Scan Pattern
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3. Using dedicated signal processing algorithms optimized for
low-level obstacle detection, the system holds an inherently
high capacity to detected various types of obstacle
independently from the platform motion during the frame
acquisition period, providing the possibility of reconstructing
the obstacle shape without using navigation data (stand-alone
integration) in slow-moving platforms with a benign attitude
envelope. Additionally, LOAM can be integrated with the
aircraft navigation sensors if required, especially in platforms
with high dynamics envelopes [8].LOAM performs echo
detection through an analogue process comprising an optical-
electrical conversion, a signal pre-amplification and a
threshold comparison. The signal pre-amplification is
achieved by an automatic controlled gain amplifier to increase
the system sensitivity as the elapsed time from the laser
emission increases in order to adjust the sensitivity on the
basis of the expected return signal power in connection with
the obstacle range. Furthermore, an adjustable threshold level
is provided to take into account the background conditions.
These features reduce the probability of false echo detection
due to the atmospheric back-scatter near the laser beam output
and optimize the system sensitivity in various operational
weather conditions. LOAM performs echo analysis in order to
determine the presence of possible obstacles and to determine
their geometrical characteristics and position. For this purpose,
LOAM operates through two sequential analysis processes:
Local Analysis (LAN) and Global Analysis (GAN).The LAN
process is performed on the single echoes in order to
determine range, angular coordinates and characteristics of the
obstacle portion generating them. The GAN process manages
groups of echoes, detected during a scan period, with the
related information provided by the LAN process, in order to
perform the obstacle detection as a whole and determine the
related shape and type. LOAM is capable to automatically
classify obstacles according to the following classes [8]:
1) Wire. This class groups all thin obstacles like wires and
cables (e.g., telephone/electrical cables and cableway);
2) Tree. This class groups vertical obstacles of reduced
dimensions (e.g., trees, poles and pylons);
3) Structure. This class groups extended obstacles (e.g.,
bridges, buildings and hills).
Fig. 5 represents LOAM detection algorithm structure.
Furthermore, LOAM performs automatic prioritization of the
detected obstacles in function of the risk represented
according to the relevant range, and provides the crew with
timely warnings and information of the detected obstacles in
order to allow the implementation of effective avoidance
maneuvers. For this purpose, LOAM system is able to deliver
both visual and audio warnings. LOAM information relative to
the detected obstacles can be provided on a dedicated display
(NVG compatible) whose screen represents the FOV of the
system.
Fig. 5 Structure of LOAM detection algorithm
Both 3-D and 2-D are possible, together with an altimetric
profile format. An example of a 3-D LOAM display format
implemented for the already developed helicopter applications
is shown in Fig. 6 [6]. The corresponding 2-D and altimetric
display formats are shown in Figs. 7 and 8 respectively. The
general architecture of LOAM system was described in [6].
LOAM main components are the Sensor Head Unit (SHU),
the Control Panel (CP) and the Display Unit (DU). In the
following paragraph a brief description of LOAM SHU is
given, together with an outline of the main EPU functions.
Fig. 6 LOAM 3-D Display Format
Fig. 7 LOAM 2-D Display Format
FOV centre
Platform axes
Direction of flight
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708International Scholarly and Scientific Research & Innovation 8(4) 2014
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4. Fig. 8 LOAM Altimetric Display Format
The SHU performs the following main functions [8]:
1) generates a laser beam and scan the area around the flight
trajectory;
2) detects return echoes;
3) analyzes detected echoes in order to compute range,
coordinates and local geometrical characteristics
(attributes) of the obstacles they come from;
4) communicates echo range, coordinates and attributes to
LOAM Processing Unit, or to other on board systems, via
a RS-422 high speed serial data link.
The SHU scans a laser beam in the area around the flight
trajectory, performs echo detection through an analogue
process comprising an optical-electrical conversion (by means
of an avalanche photodiode - APD), a signal pre-amplification
and a threshold comparison (adjustable threshold).The SHU
performs echo analysis in order to compute range, coordinates
(azimuth, elevation with respect to LOAM reference frame)
and local geometrical characteristics (attributes) of the
obstacles they come from. A detailed description of
LOAMSHU architecture is presented in [6]. Some key electro-
optical parameters relative to the laser sub-unit are listed in
Table I.
TABLE I
LASER PARAMETERS
Parameter Description Value
Wavelength Laser emission wavelength 1.55µm
Peak Power Laser pulse power at the laser assembly output 10 kW
Pulse Duration Laser pulse duration 3 to 5 ns
Frequency Laser pulse repetition frequency 60 kHz
IV. CALCULATION OF AVOIDANCE TRAJECTORIES
Once the obstacle has been detected and processed as
described, LOAM system triggers the generation of an
avoidance trajectory, based on the own vehicle dynamics and
the obstacle relative equation of motion. Due to the restricted
system FOV, some information, acquired in the previous
frame, may be lost successively. To keep obstacles
information when they are outside the present frame, it is
necessary to store the position of every object detected and
then update the coordinates with respect to the platform body-
fixed reference system. LOAM history function stores the data
of the obstacles for a defined time interval and deletes them
when they are outside the platform possible trajectories
(outside its flight envelope).
Since the motion data supplied from navigation system are,
like every measure, affected by an error, we evaluate how
these errors affect the positions calculated for every obstacle.
To do so, a Gaussian error is added to every data and a
statistic of the position error is calculated for obstacles near
and far from the aircraft. When the impact warning processing
establishes that the trajectory currently flown by the aircraft
has a collision risk, the algorithm searches the corrections
necessary to avoid the obstacles, and provides the pilot an
indication about the alternative (optimal) direction to fly. The
optimal trajectory is the one having the smaller possible
correction (necessary to avoid the obstacles) and which is
compatible with a safe flight path.
The original avoidance trajectories generation algorithm for
helicopter platforms was introduced in [6]. In this paper we
present the key aspects of the avoidance trajectory generation
algorithm for UA applications. The approximated dynamic
model of LOAM equipped UA platform for avoidance
trajectory generation purposes is derived by introducing the
following assumption:
• The UA is modeled as a point-mass rigid body with three
linear degrees of freedom (3DOF);
• The inertial reference system is centered on the initial
position of the UA point-mass, with the X axis pointing
eastward, the Y axis northward and the Z axis normal to
the ground;
• The UA is subject to a constant gravitational acceleration
parallel and opposite to the Z axis, and for the purpose of
our estimation we assume ݃ ൌ 9.81 ݉/ݏଶ
;
• The mass of the vehicle is considered constant along the
avoidance trajectory;
• During the avoidance maneuver, the load factor is set
close to the certified flight envelope limits of the UA. In
our case these correspond to ܰ ൌ ܰெ ൌ 2.5 for the
pull-up maneuvers and ܰ ൌ ܰெூே ൌ െ1 for the diving
maneuvers;
• The airspeed of the UA is expressed as True Air Speed
(TAS). The wind is not explicitly expressed, although
implicitly considered in the vehicle-obstacle relative
motion. In our case, the assumed initial TAS is ݒ ൌ
25 ݉/.ݏ
The resulting system of differential equations for 3DOF
vehicle dynamics is:
ە
ۖ
۔
ۖ
ۓ
௩ሶ ୀ
ಷ
ି ·௦ఊ
ఊሶ ୀ
ೡ
·ሺே·௦ఓି௦ఊሻ
ఞሶ ୀ
ೡ
·
ಿ·ೞഋ
ೞം
௫ሶ ୀ ௩·௦ఊ·௦ఞ
௬ሶ ୀ ௩·௦ఊ·௦ఞ
௭ሶ ୀ ௩·௦ఊ
(1)
where:
• FX= sum of aerodynamic/propulsive forces along X axis;
• ߛ = flight path angle;
• ߯ = track angle;
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709International Scholarly and Scientific Research & Innovation 8(4) 2014
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5. • ߤ = bank angle.
We then assume that during the entire approach to the
obstacle, the vehicle control system can provide a linear
variation of ߤ, up to the assumed maximum bank angle. This
can be expressed as:
൜
ߤ ൌ ߤ ߤሶெ · ݐ ሺߤ ߤெሻ
ߤሶ ൌ 0 ሺߤ ൌ ߤெሻ
(2)
The maximum roll rate was set at ߤሶ ெ ൌ 20 °/.ݏ The
maximum bank angle was simply calculated as:
ߤெ ൌ acos ቀ1
ܰெ
ൗ ቁ (3)
The algorithms for estimation of the obstacle absolute
motion based on differential geometry approach were
introduced in [12]. In order to provide the fast and reliable
performance required for our safety-critical task, the
avoidance trajectory generation is based on simplified
geometric shapes. In particular, given the different values of
uncertainty associated with the three cardinal directions, an
ellipsoidal avoidance volume is implemented in the algorithm.
The standard deviation of LOAM detection and tracking error
for each axis is given by:
ߪሺ,,ሻ ൌ ටߪሺೣ,,ሻ
ଶ ߪሺೣ,,ሻ
ଶ
ߪ௧ሺೣ,,ሻ
ଶ
(4)
In order to assure adequate safety levels, a separation buffer
is introduced, which inflates the ellipsoidal avoidance volume
associated with the obstacle. In particular, to provide a
confidence level of 95%, the uncertainty associated with the
position of an obstacle is calculated as twice the standard
deviation (i.e. the two-sigma) of the total obstacle detection
and tracking errors. When the distance between two detected
obstacles is comparable with the calculated uncertainty values,
or with the UA dimensions, the algorithm combines the two
obstacles in a single avoidance volume. The subsequent step
involves the selection of the optimal trajectory from the
generated set of safe trajectories, which is then fed to the
aircraft guidance subsystems. The implemented decision logic
is based on minimization of the following cost function:
ܬ ൌ ݓ௧ · ݐௌிா ݓ ሾܵܥܨ · ܶሺݐሻሿ݀ݐ െ ݓௗ ܦሺݐሻ݀ݐ (5)
where:
• ݐௌிாis the time at the minimum distance point to the
obstacle, hence it corresponds to the attainment of a safe
condition;
• ܵܥܨ ሾ
ே
· ݏሿ is the specific fuel consumption;
• ܶሺݐሻ is the thrust profile;
• ܦሺݐሻ ൌ ඨ
ሺ௫ሺ௧ሻି௫್ೞሻమ
ௗಾಿೣ
మ
ሺ௬ሺ௧ሻି௬್ೞሻమ
ௗಾಿ
మ
ሺ௭ሺ௧ሻି௭್ೞሻమ
ௗಾಿ
మ ൨ is the
distance from the ellipsoidal avoidance volume of the
obstacle;
• ݓ௧ , ݓ, ݓௗare the weightings attributed to time, fuel and
integral distance respectively.
In time-critical avoidance applications (i.e., closing-up
obstacles with high relative velocities and/or accelerations)
appropriate higher weightings are used for the time and
distance cost elements.
V. SIMULATION AND RESULTS
Simulation activities were performed to validate the
avoidance trajectory generation algorithm and to assess its
performance. A realistic three-dimensional scenario for
obstacle avoidance is depicted in Fig. 9. The UA equipped
with LOAM is flying at an altitude z = 100 m Above Ground
Level (AGL) and approaching a power transmission line
consisting of a number of wires of 10mm in diameter. The
altitude of the lowest wire is 95m AGL and the altitude of the
highest wire is 115m AGL; the wires are separated by about
6.5m vertically and 5m laterally. The transmission line lies
approximately 70m in front of the UA. The original horizontal
flight trajectory would lead to a collision with the obstacle.
Fig. 9 Representation of LOAM system wire detection from a mini-
UA
After a successful detection of all the wires, the algorithm
calculates the distances among each of them. As previously
described the algorithm then recognizes that the calculated
distances are all comparable with the UA wingspan (3 meters)
and therefore combines all the wires in a single obstacle. The
centre C position and the semi-major axis a, b, c of the
resulting ellipsoidal avoidance volume are then calculated. In
particular C = {70m, 0m, 105m}; a = 15m; b = 100m; c =
25m. A representative set of avoidance trajectories generated
following these assumptions, is depicted in Fig. 10.
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6. Fig. 10 Valid and conflicting trajectories in the UA reference system
Fig. 11 shows the separation envelopes between the UA and
the boundary surface of the ellipsoidal avoidance volume,
calculated for each point of the UA conflicting and avoidance
trajectories.
Fig. 11 Absolute distance of the generated trajectories from the
ellipsoidal avoidance volume boundary
VI. LOAM PERFORMANCE EVALUATION
The mathematical derivation of the various phenomena
affecting LOAM laser beam in all the atmospheric conditions
were derived and discussed for different applications in [7]
[11]. As detailed in [6], ground trials of LOAM
performed in order to verify the system detection performance
in various weather conditions, and to test the validity of the
mathematical models used for performance calculations.
was particularly important for preparing LOAM
test activity. It is in fact necessary to define a criteria for
determining the system detection range performances in the
worst environmental conditions, and with the worst obstacle
scenarios (i.e., small wires with low reflectivity), even without
in the UA reference system
shows the separation envelopes between the UA and
the boundary surface of the ellipsoidal avoidance volume,
for each point of the UA conflicting and avoidance
Absolute distance of the generated trajectories from the
oidal avoidance volume boundary
VALUATION
The mathematical derivation of the various phenomena
laser beam in all the atmospheric conditions
r different applications in [7]-
LOAM system were
in order to verify the system detection performance
in various weather conditions, and to test the validity of the
mathematical models used for performance calculations. This
LOAM system flight
in fact necessary to define a criteria for
determining the system detection range performances in the
worst environmental conditions, and with the worst obstacle
scenarios (i.e., small wires with low reflectivity), even without
performing real tests in t
experimental data collected in fear weather and with average
obstacles). Mathematical modeling
LOAM system detection performance
order to derive the involved parameters and estim
LOAM system detection performance
the flight testing. The modeling
Analogously, the following definitions are adopted
type obstacle in line with
requirements:
− Diameter: 5 mm ≤D
− Shape: Twisted or round
− Reflection: Purely diffuse (Lambertian)
− Reflectivity: ≥ 20% (θ
The reference environmental parameters
− Visibility: V ≥ 800 m
− Humidity: RH ≤ 100%
− Temperature: T ≤ 50 °C
− Rain: Light/Medium/Heavy
− Background: PB = 50 W/m
Ground trials of LOAM system were performed in order to
verify the system detection performance in various weather
conditions, and to test the validity of the mathematical models
used for performance calculations.
important for preparing LOAM
fact necessary to define a criteria for determining the system
detection range performances in the worst environmental
conditions, and with the wor
wires with low reflectivity), even without performing real tests
in these conditions (i.e., using experimental data collected in
fear weather and with average obstacles).
modeling and ground testing of
were therefore required in order to give proper weights to the
parameters playing a role in realistic operational scenarios,
and to determine the target LOAM detection performances to
be demonstrated in flight.
involved.
Fig. 12 Detection performance models and ground test
As the ground test activities permitted to validate the
models developed, it was then possible to identify reference
sets of obstacle, background and atmospheric parameters
giving the absolute minimum performance of
This is illustrated in Fig. 13.
performing real tests in these conditions (i.e., using
experimental data collected in fear weather and with average
modeling and ground testing of
detection performance are therefore required in
derive the involved parameters and estimate the target
detection performances to be demonstrated in
modeling activities are detailed in [6].
definitions are adopted for a wire
in line with LOAM system operational
DW≤ 70 mm
wisted or round
Purely diffuse (Lambertian)
θ = 0)
The reference environmental parameters are the following:
800 m
100%
50 °C
Light/Medium/Heavy
= 50 W/m2
srµm
system were performed in order to
verify the system detection performance in various weather
conditions, and to test the validity of the mathematical models
rformance calculations. This was particularly
LOAM flight test activity. It was in
fact necessary to define a criteria for determining the system
detection range performances in the worst environmental
conditions, and with the worst obstacle scenarios (i.e., small
wires with low reflectivity), even without performing real tests
in these conditions (i.e., using experimental data collected in
fear weather and with average obstacles). Mathematical
and ground testing of LOAM detection performance
were therefore required in order to give proper weights to the
parameters playing a role in realistic operational scenarios,
and to determine the target LOAM detection performances to
be demonstrated in flight. Fig. 12 illustrates the process
formance models and ground test
As the ground test activities permitted to validate the
models developed, it was then possible to identify reference
sets of obstacle, background and atmospheric parameters
the absolute minimum performance of LOAM system.
. Obviously, the successive flight
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7. test activities were performed only in a small portion of
LOAM operational envelopes, but the results obtained could
be extended to the entire envelopes by using the validated
mathematical models.
Fig. 13 Minimum detection performance calculation
For initial design calculations, the wire obstacle detection
capability of LOAMis modelled by the following simplified
Signal to Noise Ratio (SNR) equation:
( )NEPDRRP
deLLAE
SNR
D
W
R
rTrp
+
=
−
απ
ργ
2
2
4
(6)
where:
EP = output laser pulse energy
Ar = receiver aperture
LT = transmission losses (including beam shaping)
Lr = reception losses (including optical filter)
γ = atmospheric extinction coefficient
dW = wire diameter
ρ = wire reflectivity
PD = pulse duration
R = obstacle range
α = beam divergence (l /e2)
D = initial beam diameter
NEP = noise equivalent power
The extinction coefficient (γ) is calculated as described in
[8], including the propagation in rainy conditions. This
approach (ESLM model) is particularly useful because it
provides a means of relating the atmospheric transmission of
the ith
window to the atmospheric visibility, relative humidity
and rainfall-rate (i.e., readily measurable parameters). The first
assumption made [8] is that variations in the transmission are
caused by changes in the water content of the air. Specifically,
changes in the concentration of H2O cause changes in the
absorption, and changes in the size and number of water
droplets with humidity cause changes in the scattered
component. This is a valid assumption since the other
atmospheric constituents have a reasonably constant effect on
the transmittance of a given atmospheric window.
It is customary to express the number of H2O molecules
encountered by the beam of light in terms of the number of
precipitable millimeters of water in the path. Specifically, the
depth of the layer of water that would be formed if all the
water molecules along the propagation path were condensed in
a container having the same cross-sectional area as the beam is
the amount of precipitable water. A cubic meter of air having
an absolute humidity of ρ grams per m3
would yield
condensed water that cover a l m2
area and have a depth of:
ρ3
10−
=′w (7)
where w' is the precipitable water having units of mm per
meter of path length. For a path length of z meters eq. 12
becomes:
zw ⋅= −
ρ3
10 (8)
where w is now the total precipitable water in millimeters. The
value of ρ, the density of water vapor, can be obtained using
the following equation [6], which is convenient for computer
code implementation:
( )
⋅−
−⋅
⋅= 16.273
ln31.5
16.27322.25
8.1322
T
T
T
e
T
RH
ρ
(9)
where RH is the relative humidity (as a fraction), and T is the
absolute temperature (°K). Two empirical expressions,
developed by Langer [9], can be used to calculate the
absorptive transmittance τai for the ith
window for any given
value of the precipitable water content. These expressions are:
wA
ai
i
e−
=τ , for iww < (10)
i
w
w
k i
iai
β
τ
= , for iww > (11)
where Ai, ki, βi and wi are constants whose values for each
atmospheric window are listed in [8]. For LOAM laser
wavelength (λ = 1550nm - 4th
atmospheric window), Ai =
0.211, ki= 0.802, βi = 0.111 and wi = 1.1. In summary, (10)
and (11), together with (8) and (9), provide information that
can be used to obtain an estimate of the absorptive
transmittance (τai) of laser beams having wavelengths that fall
within the various atmospheric windows. The results apply to
horizontal paths in the atmosphere near sea-level and for
varying relative humidity. To obtain the total atmospheric
transmittance we must multiply τai by τsi(i.e., the transmittance
due to scattering only).
Based on rigorous mathematical approaches, the scattering
properties of the atmosphere due to the aerosol particles are
difficult to quantify, and it is difficult to obtain an analytic
expression for the scattering coefficient that will yield
accurate values over a wide variety of conditions. However, an
empirical relationship that is often used to model the scattering
coefficient has the form:
( ) 4
21
−−
+= λλλβ δ
CC (12)
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8. where C1, C2, and δ are constants determined by the aerosol
concentration and size distribution, and λ is the wavelength of
the radiation. The second term accounts for Rayleigh
scattering. Since for all wavelengths longer than about 0.3 µm
the second term is considerably less than the first, it may be
neglected. It has been found that 3031 .. ±≈δ produces
reasonable results when applied to aerosols with a range of
particle sizes. An attempt has also been made to relate δand C1
to the meteorological range. The apparent contrast Cz, of a
source when viewed at λ = 0.55µm from a distance z is by
definition:
bz
bzsz
z
R
RR
C
−
= (13)
where Rsz and Rbz are the apparent radiances of the source and
its background as seen from a distance z. For µm55.0=λ ,
the distance at which the ratio:
02.0
0
000
=
−
−
==
b
bs
bz
bzsz
z
R
RR
R
RR
C
C
V
(14)
is defined as the meteorological range V (or visual range). It
must be observed that this quantity is different from the
standard observer visibility (Vobs). Observer visibility is the
greatest distance at which it is just possible to see and identify
a target with the unaided eye. In daytime, the object used for
Vobs measurements is dark against the horizon sky (e.g., high
contrast target), whereas during night time the target is a
moderately intense light source. The International Visibility
Code (IVC) is given in Table II.
TABLE II
INTERNATIONAL VISIBILITY CODE
Designation Visibility
Dense Fog 0 – 50 m
Thick Fog 50 – 200 m
Moderate Fog 200 – 500 m
Light Fog 500 – 1 km
Thin Fog 1 – 2 km
Haze 2 – 4 km
Light Haze 4 – 10 km
Clear 10 – 20 km
Very Clear 20 – 50 km
Exceptionally Clear > 50 km
It is evident that, although the range of values for each
category is appropriate for general purposes, it is too broad for
scientific applications. Visibility is a subjective measurement
estimated by a trained observer and as such can have large
variability associated with the reported value. Variations are
created by observers having different threshold contrasts
looking at non-ideal targets. Obviously, visibility depends on
the aerosol distribution and it is very sensitive to the local
meteorological conditions. It is also dependent upon the view
angle with respect to the sun. As the sun angle approaches the
view angle, forward scattering into the line-of-sight increases
and the visibility decreases. Therefore, reports from local
weather stations may or may not represent the actual
conditions at which the experiment is taking place. Since
meteorological range is defined quantitatively using the
apparent contrast of a source (or the apparent radiances of the
source and its background) as seen from a certain distance, it
eliminates the subjective nature of the observer and the
distinction between day and night. Unfortunately, carelessness
has often resulted in using the term Visibility when
Meteorological Range is meant. To insure that there is no
confusion, Observer Visibility (Vobs) will be used in this thesis
to indicate that it is an estimate. If only Vobsis available, the
meteorological range (V) can be estimated [11] from:
( ) obsVV ⋅±≈ 3.03.1 (15)
If we assume that the source radiance is much greater than
the background radiance (i.e., Rs>>Rb) and that the
background radiance is constant (i.e., Rbo = Rbz), then the
transmittance at λ = 0.55µm (where absorption is negligible)
is given by:
02.0
0
== − V
s
sv
e
R
R β (16)
Hence, we have:
91.3ln
0
−=−=
V
R
R
s
sv
β (17)
and also:
δ
λβ −
== 1
91.3
C
V (18)
It follows from (29) that the constant C1 is given by:
δ
55.0
91.3
1 ⋅=
V
C (19)
With this result the transmittance at the centre of the ith
window is:
z
V
si
i
e
⋅
⋅−
−
=
δ
λ
τ 55.0
91.3
(20)
where λi must be expressed in microns. If, because of haze, the
meteorological range is less than 6km, the exponent δ is
related to the meteorological range by the following empirical
formula:
3
585.0 V=δ (21)
where V is in kilometers. When V≥ 6km, the exponent δ can
be calculated by:
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9. 025.10057.0 +⋅= Vδ (22)
For exceptionally good visibility δ = 1.6, and for average
visibility δ≈ 1.3. For LOAM, it is also very important to model
propagation through haze and precipitation. Haze refers to the
small particles suspended in the air. These particles consist of
microscopic salt crystals, very fine dust, and combustion
products. Their radii are less than 0.5µm. During periods of
high humidity, water molecules condense onto these particles,
which then increase in size. It is essential that these
condensation nuclei be available before condensation can take
place. Since salt is quite hygroscopic, it is by far the most
important condensation nucleus. Fog occurs when the
condensation nuclei grow into water droplets or ice crystals
with radii exceeding 0.5µm. Clouds are formed in the same
way; the only distinction between fog and clouds is that one
touches the ground whereas the other does not. By convention
fog limits the visibility to less than 1km, whereas in a mist the
visibility is greater than 1km. We know that in the early stages
of droplet growth the Mie attenuation factor K depends
strongly on the wavelength. When the drop has reached a
radius a ≈ 10 λ the value of K approaches 2, and the scattering
is now independent of wavelength, i.e., it is nonselective.
Since most of the fog droplets have radii ranging from 5 to
15µm they are comparable in size to the wavelength of
infrared radiation. Consequently the value of the scattering
cross section is near its maximum.It follows that the
transmission of fogs in either the visible or IR spectral region
is poor for any reasonable path length.This of course also
applies to clouds. Since haze particles are usually less than
0.5µm, we note that for laser beams in the IR spectral region
1<<λa and, therefore, scattering is not the dominating
attenuation mechanism. The scattering coefficient with rain,
however, depends strongly on the size of the drop and it can
be approximated by:
3
6
1025.1
a
tx
rain
∆∆
⋅= −
β (28)
where ∆x/∆t is the rainfall rate in centimeters of depth per
second and a is the radius of the drops in centimeters. Rainfall
rates for four different rain conditions and the corresponding
transmittance (due to scattering only) of a 1.8-km path are
shown in Table III [11].
TABLE III
TRANSMITTANCE OF A 1.8 KM PATH THROUGH RAIN
Rainfall (cm/h) Transmittance (1.8 km path)
0.25 0.88
1.25 0.74
2.5 0.65
10.0 0.38
These data are useful for order of magnitude estimates. In
order to obtain accurate estimates, the concentrations of the
different types of rain drops (radius) and the associated rainfall
rates should be known. In this case, the scattering coefficient
can be calculated as the sum of the partial coefficients
associated to the various rain drops.A simpler approach, used
in LOWTRAN, gives good approximations of the results
obtained for most concentrations of different rain particles.
Particularly, the scattering coefficient with rain has been
empirically related only to the rainfall rate tx ∆∆ (expressed
in mm/hour), as follows [10]:
63.0
365.0
∆
∆
⋅≈
t
x
rainβ (29)
Table IV provides representative rainfall rates which can be
used when no direct measurements are available, to obtain
order of magnitude estimations of rainβ .
TABLE IV
REPRESENTATIVE RAINFALL RATES
Rain Intensity Rainfall (mm/hour)
Mist 0.025
Drizzle 0.25
Light 1.0
Moderate 4.0
Heavy 16
Thundershower 40
Cloud-burst 100
In the presence of rain, in addition to the scattering losses,
there are, of course, losses by absorption along the path, and
these must be included in the calculation of the total
atmospheric transmittance with rain.
In order to estimate the SNR from experimental LOAM
detector current measurements (iSIG), obtained with certain
obstacle ranges (R) and incidence angles (θ), SNR was
expressed as follows:
( )
=
NOISE
SIG
i
Ri
SNR
θ,
log20 (30)
The noise current terms in (2) was modeled as:
2222
RADKBKTHNOISE iiiii +++= (31)
where:
iTH = thermal noise current
iBK = background noise current
iDK = dark noise current
iRA = receiver amplifier noise
According to LOAM design characteristics, we have:
( )BkMMPqPi AAhSBK += 22 (32)
L
k
BTH
R
BkT
Ki 4= (33)
12
105.0 −
⋅=DKi (34)
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10. 12
105.1 −
⋅=RAi (35)
where:
PS = received solar power
Ph = amplifier gain
MA = avalanche multiplier
k = noise factor of the avalanche photodiode
B = electronic bandwidth
KB = Boltzmann constant (1.39×10-23 J/°K)
Tk = absolute temperature (°K)
RL = amplifier load resistance
For calculation purposes, the iSIG (R,θ) term was modeled as:
La
h
R
aWT
SIG
RK
P
R
eDdP
i
1
4 3
23
⋅⋅=
−
λ
ηρ γ
(36)
where:
PT = transmitted power
Ph = amplifier gain
Da = aperture diameter
Ka = aperture illumination constant = ( ) 4.5
sin θ
The estimated range performances of LOAM for cable
obstacles having diameters (DW) of 5mm and 10mm, in
various visibility conditions and with all other parameters set
to the worst case are shown in Fig. 12.
Fig. 14 LOAM estimated detection range performance for wires
The false alarm probability is modeled as:
η⋅⋅
=
fa
fa
TB
P
1 (37)
where:
B = receiver bandwidth
Tfa = mean time between false alarms
η = maximum useful/nonambiguous range
The mean time between false alarms corresponds to
electrical false alarms at the receiver level. The probability to
have several false alarms on a straight line pattern is much
lower. Statistically, these phenomena are described by the
False Alarm Rate (FAR) and detection probability (Pd). If the
noise and signal distributions are known, the Signal-to-Noise
Ratio (SNR) can be estimated and the corresponding Pd and
FAR can be determined. The average FAR of LOAM system
can be written as:
−= 2
2
2
exp
32
1
n
t
I
I
FAR
τ
(38)
where:
τ = Electrical pulse length
It = Threshold current
In = Average noise current
LOAM Pd is determined using pure Gaussian statistics:
−= ∫
∞
− n
n
n
n
I
II
d
I
i
d
I
i
P
n
nt
22
exp
1
2
2
2
π
(39)
In = average signal current
in = instantaneous noise current
The false alarm probability (Pfa) is given by:
FARPfa ⋅=τ (40)
and the cumulative detection probability (PD) is given by:
( )∑=
−
−−=
m
i
iM
d
i
d
i
MD PPCP
0
11 (41)
where:
M = number of possible detections
m = minimum number of detections required
The scenario in which ground tests were performed is
shown in Fig. 15.
Fig. 15 LOAM ground tests scenario
A comparison between the SNR predicted (SNRP) with γ
calculated using the ESLM model (0.19km-1
≤γ≤ 0.22km-1
for
clear weather and 1.23km-1
≤γ≤ 2.94km-1
for rainy conditions),
assuming a background power of 10 Watt/m2
/sr/µm and ρ =
0.5, and estimated from experimental data (SNRE), is shown in
Table V.
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11. TABLE V
LOAM PREDICTED AND MEASURED
Clear Weather
V=10km V=12.5km V=15km Light
SNRP 4.90×104
4.95×104
5.02×104
3.14×10
SNRE 3.35×104
3.80×104
4.27×104
2.87×10
VII. FLIGHT TEST ACTIVITIES
Figs. 16 and 17 show LOAM prototype used for the
helicopter flight trials. Particularly, LOAM
shown in Fig. 16 and the pilot interface units are shown in Fig.
17.
Fig. 16 Sub-units of LOAM prototype
Fig. 17 Prototype pilot interface units and
Two different test-bed platforms were used for the trials:
the NH-300 and AB-212 helicopters.
LOAMSHU mounted on the AB-212.
Fig. 18 LOAM installed on AB
RED SNR
Rain
Medium Heavy
104
1.83×104
1.45×104
104
2.47×104
2.13×104
CTIVITIES
prototype used for the
LOAM sub-units are
the pilot interface units are shown in Fig.
prototype
ilot interface units and SHU assembly
bed platforms were used for the trials:
212 helicopters. Fig. 18 shows
LOAM installed on AB-212
As shown in Fig. 19, the Cockpit Display Unit (CDU) used
for the trials was installed at the centre of the AB
shield in order to be accessible to both pilot and co
the AB-212 test campaign, LOAM
was installed in the centre of the middle
accessible to both pilot and co
During the test flights, a Flight Test Engineer also operated a
computer, linked to LOAM system and displaying in real
a 3-dimensional image reconstructed using
images were also recorded for
results of this test campaign were satisfactory.
performances were in accordance with the
and LOAM detection/classification data processing algorithms
were validated. Furthermore, it was verified that
History Function was correctly implemented.
Fig. 19 Display unit installed
Fig. 20 LOAM Main Control Unit on AB
More detailed results of
activities performed on various
are presented in [6] and [8].
VIII.CONCLUSIONS AND
The challenges and opportunities asso
introduction of laser-based obstacle warning and avoidance
systems in Unmanned Aircraft (UA)
paper. Specifically, we have addressed
and software design tailoring of an existing system
MCU
he Cockpit Display Unit (CDU) used
was installed at the centre of the AB-212 glare
in order to be accessible to both pilot and co-pilot.For
LOAM Main Control Unit (MCU)
was installed in the centre of the middle-consolein a position
accessible to both pilot and co-pilot, as shown in Fig. 20.
During the test flights, a Flight Test Engineer also operated a
system and displaying in real-time
dimensional image reconstructed using LOAM data. All
recorded for post-flight data analysis. The
results of this test campaign were satisfactory. LOAM range
accordance with the model predictions
detection/classification data processing algorithms
Furthermore, it was verified that LOAM
History Function was correctly implemented.
installed on AB-212 glareshield
LOAM Main Control Unit on AB-212
More detailed results of LOAM ground and flight test
various dedicated test-bed platforms
ONCLUSIONS AND FUTURE WORK
and opportunities associated with the
obstacle warning and avoidance
Unmanned Aircraft (UA) are discussed in this
have addressed the potential hardware
design tailoring of an existing system: The Laser
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12. Obstacle Avoidance Marconi (LOAM) developed and tested
by SELEX-ES and the Italian Air Force Experimental Flight
Test Centre. In particular, some preliminary mathematical
models for UA flight dynamics and avoidance trajectory
generation have been described. The original system design,
including the requirements, the architecture, the components,
the algorithms is summarized together with the ground testing
and flight testing activities performed. Future ground and
flight tests will be performed in order to assess the
performance of LOAM system integrated on the various other
flying platforms in day/night with various
weather/environmental conditions and to optimize the ground
operator Human Machine Interface (HMI) design. For future
UA test flights, a dedicated control unit is also being designed
to be integrated in the ground-based pilot station. Its
characteristics are similar to the MCU developed and
presented in [6]. However, as this MCU has to be operated by
the ground UA pilot, in this case LOAM operating modes are
activated using two different communication data links for
Line-of-Sight (LOS) and Beyond LOS operations.
Additionally, LOAM display functions will be fully integrated
in the UA remote control position and the required LOAM
display formats displayed to the UA pilot in real-time. The
potential interfaces between LOAM and other on-
board/ground systems are also being investigated. The system
was previously implemented in a stand-alone setup [8]. It is
expected that for the high-dynamics UA applications, an
extensive integration with the developed Sense-and-Avoid
(SAA) system, described in [12], and with the low-cost multi-
sensor UA navigation and guidance system including Vision
Based Navigation (VBN) described in [13] and [14] will be
fundamental. In order to attain unrestricted access to airspace,
the UA will have to incorporate the SAA capabilities in a
comprehensive avionics architecture that should also include
the emerging Communication, Navigation, Surveillance, Air
Traffic Management (CNS/ATM) systems. Current avionics
and CNS/ATM research is therefore addressing the possible
direct integration of LOAM and other avoidance systems with
manned aircraft and UA Flight Controls/Autopilots and Flight
Management Systems [15], [16], and with the next generation
of ground-based Air Traffic Management (ATM) systems
being conceived for 4-Dimensional Trajectory Planning,
Negotiation and Validation (4-PNV) in line with the
requirements set by the SESAR (Single European Sky ATM
Research) and NextGen (Next Generation Air Transportation
System) research initiatives in Europe and in the United States
[17], [18].
ACKNOWLEDGMENT
The originaldevelopment and testing activity was funded by
the Italian Ministry of Defence (MoD) under R&D contract
No. 2097-22-12-2000. The authors wish to thank the
personnel of SELEX-ES, LOT-ORIEL, the Italian Air Force
Experimental Flight test Centre, and the Italian MoD Laser
Test Range (PILASTER) for helping in the preparation and
execution of the ground and flight test activities.
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World Academy of Science, Engineering and Technology
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