SlideShare a Scribd company logo
1 of 7
Download to read offline
International Journal of Electrical and Computer Engineering (IJECE)
Vol. 10, No. 4, August 2020, pp. 4237~4243
ISSN: 2088-8708, DOI: 10.11591/ijece.v10i4.pp4237-4243  4237
Journal homepage: http://ijece.iaescore.com/index.php/IJECE
Energy cost savings based on the UPS
Phu Tran Tin1
, Duy Hung Ha2
, Minh Tran3
, Q. S. Vu4
1
Faculty of Electronics Technology, Industrial University of Ho Chi Minh City, Vietnam
2
Wireless Communications Research Group, Faculty of Electrical and Electronics Engineering,
Ton Duc Thang University, Vietnam
3
Optoelectronics Research Group, Faculty of Electrical and Electronics Engineering,
Ton Duc Thang University, Vietnam
4
National Key Laboratory of Digital Control and System Engineering, Vietnam
Article Info ABSTRACT
Article history:
Received Dec 5, 2019
Revised Feb 21, 2020
Accepted Feb 29, 2020
Energy-saving, improving energy efficiency, and finding a new
efficient way to use energy are considered as an urgent problem in
over the world. In this paper, we consider the economics of energy
use in combination with energy storage units where two forms
of electricity exist in the power system. Then the problem of
optimizing the installation capacity (to optimize the investment costs
for energy storage) is presented and investigated in connection
with the conversion systems. The topic opens a very significant
result, including the introduction of a mathematical model to
calculate the simulation in optimizing the installation capacity of
the equipment in the system, multi-source power, as well as voltage
and power stability benefits.
Keywords:
Energy storage
Linear programming problem
Optimization
Simplex-method
Copyright © 2020 Institute of Advanced Engineering and Science.
All rights reserved.
Corresponding Author:
Duy-Hung Ha,
Wireless Communications Research Group,
Faculty of Electrical and Electronics Engineering,
Ton Duc Thang University,
Ho Chi Minh City, Vietnam.
Email: haduyhung@tdtu.edu.vn
1. INTRODUCTION
This paper considers the problem, which related to the research project to improve economic and
technical efficiency in the current period of the Russian Federation power systems. In fact, there have
a two-price mechanism exists (electricity prices vary between peak and off-peak times) it is possible to
receive some degree of energy cost savings when installing units. energy storage [1-12]. In this paper,
we proposed the followings problems as 1) The level of cost savings of how energy is achieved and how to
control the operation of the UPS to save costs; 2) The correlation of the capacity components of the load,
the capacity of the supply network, the capacity of the converter and the capacity of the energy storage to
how to save maximum cost; 3) the ability to stabilize the voltage in the system.
These problems are the aim of this paper. The investment and operation of an energy storage device
are significant for the owner of the load if it reduces energy costs. The power supply system can also finance
the investment and operation of storage devices if it helps reduce the unevenness of the network.
In optimizing energy consumption costs, it means that we will consider the issue of energy efficiency from
the owners' perspective [13, 14].
This paper develops and solves the problem of determining the minimum cost of energy
consumption when the ratios of power consumption of load components, converter power, and storage
capacity amount. Assume that energy consumers consume only active power. The load characteristics are
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243
4238
maximum during the day and vary between days in a week. The capacity of the load consists of two parts;
the fixed component includes essential loads, and the component can be changed, that is, can shift the time of
use. The unit, the load, and the power from the grid are connected to the distribution control system
(including charge/discharge and converter controllers). To solve this problem, we put the problem of solving
linear programming problems with thousands of variables. The system's working mode is simulated for
a week with a discrete distance of 12 minutes. The results of the problem have proved that the use of UPSs
brings economic efficiency of 5-25%, without taking into account the cost of the system, storage devices,
and associated energy converters. The assessment of the overall economic efficiency of this topic must be
investigated for all the above factors. In the general conclusion of the paper confirms that at present due to
the price of the variable and energy storage devices is still high compared to the cost savings brought by
the two-price mechanism, the use of such devices are inefficient. However, the topic opens a very significant
result, including the introduction of a mathematical model to calculate the simulation in optimizing
the installation capacity of the equipment in the system, multi-source power, as well as voltage and power
stability benefits. The rest of the paper is constructed as the following. The mathematical formulation is
proposed in the second section. In the third section, some numerical results and discussions are presented and
analyzed. The last section draws some conclusions from this research.
2. MATHEMATICAL FORMULATION
In this section, we give the quantities describe the problem and their limitations. First, to make it
clear, we introduce these quantities as continuous functions over time, then we take a discrete step over time,
and all quantities describe the problem become vectors whose components will be valuable at discrete points.
For UPS, bat max bat bat max bat, ( ), , ( )P P t W W t are corresponding to the capacity of the power converter suitable
to connect the unit and the grid. Instantaneous generating/receiving capacity of the unit must be synchronized
with the capacity of the inverter. The quantities describe the electrical storage part are,
bat max bat bat max( )P P t P   (1)
bat bat max0 ( )W t W  (2)
where bat bat bat
0
( ) ( ) (0)
t
W t P t dt W 
It should be noted that the maximum capacity and capacity of the battery must be taken according to
the charge/discharge limits of the battery, within which the UPS operates correctly, i.e. depending on
the charge/discharge characteristics according to the condition of the energy-saving unit. These limits are
different for each type of battery used as shown in [15]. If bat (0) 0W  , then
bat bat
0
( ) ( )
t
W t P t dt  (3)
Regarding the capacity taken from the grid net max net, ( )P P t are the maximum power allowed from
the grid and instantaneous power, we have:
net net max0 ( )P t P  (4)
For load, load ( )P t is the instantaneous power of the initial load. As mentioned above, there are two
components const ( )P t and var ( )P t as shown in the below equation:
load const var( ) ( ) ( )P t P t P t  (5)
where const ( )P t is the load component is always present and cannot be changed at use time, i.e. its graph does
not change after optimization; var ( )P t is the component may change when it is used, i.e. its graph will be
Int J Elec & Comp Eng ISSN: 2088-8708 
Energy cost savings based on the uninterruptible… (Phu Tran Tin)
4239
changed after optimization. The load energy loadW consumed from 0t  to t Т , with T the simulation
time, in this problem we simulate the system operating within a week, we have [16].
load load const var const var
0 0 0
( ) ( ) ( )
T T T
W P t dt P t dt P t dt W W       (6)
where
var var
0
( )
T
W P t dt  (7)
Power balance equation is given by:
bat net load( ) ( ) ( )P t P t P t  or var bat net const( ) ( ) ( ) ( )P t P t P t P t    (8)
We take into account the vectors 𝑃var,   𝑃bat,   𝑃net, whose elements are values corresponding to quantities
var bat net( ), ( ), ( )P t P t P t at discrete point s 1 1:{ 0; ; }k k k Nt t t t h t T    , with h is the observation step
during simulation - 12 minutes. Next, to make writing quantities simpler, we denote
var, var bat, bat net, net( ), ( ), ( )k k k k k kP P t P P t P P t   . Then we have:
var,1 bat,1 net,1
var,2 bat,2 net,2
var bat net
var, bat, net,
; ;
N N N
P P P
P P P
P P P
     
     
       
     
     
          
P P P
M M M
Suppose K (t) - the price of electricity purchased from the grid changes according to the time of use
according to a known rule. In this problem, we take the electricity price in the city of Saint-Petersburg,
May 2019. Daytime prices are 7.6 cents / kWh and at night 4.4 cents / kWh. Similarly, we include the price
vector so that we can write equations in the form of matrices. The cost for the energy storage unit will be
calculated from the capacity and the optimal battery capacity received during the simulations. The objective
function can be formulated as
net mint
f  K P (9)
The limits in (8) indicate the fact that the total power taken from the grid and the unit is equal to
the load capacity at any given time. Hence, in vector form, (7) is rewritten as
var var var, var 1 load const
10
( )
T N
t
n
n
W P t dt P h h B W W

        1 P
where 1 – Unit vectors of the corresponding size. From the hypothesis that the initial state bat (0)W of the unit
and the same bat,NW - the remaining power of the unit are equal, we get the limits:
bat bat bat bat,1 2 bat,(0) t
NW W h W B W      1 P hay bat 2 bat, bat (0)t
Nh B W W    1 P
Then (8) can be reformulated as the following
 
{
const,1
var
const,2
bat 3
net
const,N
P
P
P
 
   
          
    
  X
P
E E E P B
P
M
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243
4240
Where E – matrix unit. Finally, we have
var 1
bat 2
net 3
t
t
h B
h B
h h h
     
              
              
1 0 0 P
0 1 0 P AX B
E E E P B
(10)
where 0 – vectors have no corresponding dimensions.
In (3), we denote that the UPS and converters have no loss then
bat,n bat bat, bat max
1
0 (0) ; 1,
n
i
i
W W P h W n N

    
Or in the matrix form as
 
bat,1
bat,2
bat bat max bat
bat,
1 0 0
1 1 0
(0) (0)
1 1 1 N
P
P
W h W W
P
  
  
       
  
  
    
S
1 1
L
L
MM M O M
L
14444442 4444443
Or bat bat max bat
bat
(0) (0)W W W
h h

     1 S P 1 , then
 bat max bat
bat
bat
(0)1
(0)
W W
h W
   
       
S 1
P
S 1
Finally, we have
 var
bat max bat
bat
bat
net
(0)1
(0)
W W
h W
  
                  
      
    
00
P
S 1
P CX D
S 1
P
0 0
(11)
We re-list the entire mathematical model of the problem to be solved as
var net max load max
bat max bat bat max
net net max
0 ( )
( )
0 ( )
P t P P
P P t P
P t P
  

  
  
 var load const
bat max bat bat max
net net max
P P
P P
P
     
            
          
0 P 1
1 P 1
0 P 1
(12)
The problem (12) is formed from the problem (9) with conditions in the form of equality (10) and
inequalities (11) related to linear programming problems, and to solve problems of this type, we apply
the simplex method as in [17-21]. The total number of variables when simulating the system within a week
with a 12-minute observation step is 2520 variables.
3. NUMERICAL RESULTS AND DISCUSSION
Figure 1(a) corresponds to the case when var const( ) ( )P t P t , when the power output is
interchangeable and cannot be changed equally. As you can see, the actual UPS is almost unused (curve
bat ( )W t ). The capacity of the UPS can then be reduced to 10 kWh. The economic benefits are about 20% of
the original. Figure 1(b) corresponds to the case var const( ) 0.2 ( )P t P t . It can be seen that the UPS is used very
Int J Elec & Comp Eng ISSN: 2088-8708 
Energy cost savings based on the uninterruptible… (Phu Tran Tin)
4241
actively (maximum battery capacity is 45kWh, and its capacity is 15kW), activities consume more energy
comfortably for consumers. UPSs and converters are used very actively. Accordingly, the losses in
the equipment and the depreciation costs of these devices (not included by us) can be significant [22-25].
To verify the results graphically, we turn to relative values as shown in (13).
net max load var bat max
net max load var bat max
load max load max load max
ˆ ˆ ˆ, ,
P P P
P P P
P P P
   (13)PowerkW;EnergyBaterrykWh
1 week = 168 hours
(a)
CôngsuấtkW;NănglượngpinkWh
1 week = 168 h
(b)
Figure 1. Optimize electricity consumption costs when: a) - var const( ) ( )P t P t and b) var const( ) 0.2 ( )P t P t
In Table 1, we present the results of several dozen calculations performed for different ratios
concerning the relative values above. On the vertical axis of all graphs, the percentage of energy cost savings
percentage (hereinafter F) is consumed from the network. The third line in each cell of Table 1 gives
the ratios of the word parameters (13). As can be seen from the graphs, the increase in converter capacity
(corresponding to the capacity of the unit) reduces the cost of electricity consumption (F increases).
This result is easily predictable. However, as can be seen from the diagrams (first panel of table 1) such as
F = 25% when the load capacity of 100kW is more than 150kWh. The analysis of the first cell of table 1 has
shown that F decreases as the maximum power from the grid decrease. This is explained by the fact that,
at the maximum power allowed from the grid, there is not enough power per charge on the unit, and
of course, its efficiency is low even with the capacity of the converter as well as of the large UPS.
When the maximum power available from the grid increases, F increases linearly with the capacity of
the unit. The second cell shows the effect of quantities on the efficiency of the use of uninterruptible power
supplies. Here F also decreases as the maximum power taken from the grid decreases, and when within
the same maximum power of the grid, the constant component decreases. An analysis of the last cell
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243
4242
of the table also shows a similar result. Thus, the general conclusion is that to save significant energy costs
can only be achieved with the maximum capacity of the high grid.
Table 1. The level of economic efficiency depends on relative quantities (13)
 net max bat max
ˆ ˆ,F P P
load var
ˆP  0,2 load var
ˆP  0,3 load var
ˆP  0,5
 net max load var
ˆ ˆ,F P P
bat max
ˆP  0,1 bat max
ˆP  0,15 bat max
ˆP  0,5
 load var bat max
ˆ ˆ,F P P
net max
ˆP  0,8 net max
ˆP  0,9 net max
ˆP  1,1
4. CONCLUSION
The results show that even with reasonably simple assumptions, the use of a UPS helps to reduce
energy costs by 5-25%. At the same time, the capital cost of additional equipment (the unit and the converter
connecting it to the network) is estimated to be significant. The energy efficiency is significant (10 percent or
more) when the variable power component of the load accounts for 10 percent or more of the maximum
power taken from the grid. Therefore, the question of the efficiency of energy cost savings when using
the UPS and the two-price mechanism receives the answer (according to our research) is insignificant
because the operating costs and the costs of investing in consumer electricity storage devices are equivalent
to the costs saved by increasing electricity consumption (including saving electricity) at times of low prices
and reducing consumption. Electricity at a time of high prices. The situation is likely to change significantly
if the owner has the opportunity to use alternative (renewable) energy sources. We intend to consider this
issue further.
REFERENCES
[1] H. Chen, B. Wei and D. Ma, “Energy Storage and Management System With Carbon Nanotube Supercapacitor and
Multidirectional Power Delivery Capability for Autonomous Wireless Sensor Nodes,” in IEEE Transactions on
Power Electronics, vol. 25, no. 12, pp. 2897-2909, Dec. 2010.
[2] V. Subramanian, et al., “Printed electronics for low-cost electronic systems: Technology status and application
development,” ESSCIRC 2008 - 34th European Solid-State Circuits Conference, Edinburgh, pp. 17-24, 2008.
[3] V. A. Boicea, “Energy Storage Technologies: The Past and the Present,” in Proceedings of the IEEE, vol. 102,
no. 11, pp. 1777-1794, Nov. 2014.
Int J Elec & Comp Eng ISSN: 2088-8708 
Energy cost savings based on the uninterruptible… (Phu Tran Tin)
4243
[4] J. Yao, H. Li, Y. Liao, and Z. Chen, “An improved control strategy of limiting the DC-link voltage fluctuation for
a doubly-fed induction wind generator,” IEEE Trans. Power Electron., vol. 23, no. 3, pp. 1205–1213, May 2008.
[5] A. Timbus, M. Liserre, R. Teodorescu, P. Rodriguez, and F. Blaabjerg, “Evaluation of current controllers for
distributed power generation systems,” IEEE Trans. Power Electron., vol. 24, no. 3, pp. 654–664, Mar. 2009.
[6] L. Maharjan, S. Inoue, H. Akagi, and J. Asakura, “State-of-charge (SOC)-balancing control of a battery energy
storage system based on a cascade PWM converter,” IEEE Trans. Power Electron., vol. 24, no. 6, pp. 1628–1636,
Jun. 2009.
[7] Y. W. Li and C. N. Kao, “An accurate power control strategy for power-electronics-interfaced distributed
generation units operating in a low-voltage multibus microgrid,” IEEE Trans. Power Electron., vol. 24, no. 12,
pp. 2977–2988, Dec. 2009.
[8] I. Park, et al, “Nanoscale Patterning and Electronics on Flexible Substrate by Direct Nanoimprinting of Metallic
Nanoparticles,” Advanced Materials, vol. 20, pp. 489 – 496, 2008.
[9] A.V. Boicea, G. Chicco, and P. Mancarella, “Optimal operation at partial load of a 30 kW natural gas microturbine
cluster,” Buletinul Stiintific al Universitatii Politehnica Bucuresti, Seria C, vol. 73, no. 1, pp. 211–222, Mar. 2011.
[10] S. Shepard, “Vehicle to Grid Frequency Regulation Revenue Will Surpass $190 Million Annually by 2022,”
Boulder, CO, USA: Navigant Res., Oct. 2013.
[11] K. Yang and A. Walid, “Outage-storage tradeoff in frequency regulation for smart grid with renewables,” IEEE
Trans. Smart Grid, vol. 4, no. 1, pp. 245–252, Mar. 2013.
[12] H. Zhang, “A battery storage device for distributed hybrid-powered smart grid system and control method thereof,”
European Patent 2645522 A1, Oct. 2, 2013.
[13] Stone, R.E. and Tovey, C.A, “Erratum: The simplex and projective scaling algorithms as iteratively reweighted
least-squares methods,” SIAM Review, pp. 220–237, 1991.
[14] Vazquez, S., Lukic, S. M., Galvan, E., Franquelo, L. G. and Carrasco, J. M, “Energy storage systems for transport
and grid applications,” IEEE Transactions on Industrial Electronics, pp. 3881-3895. 2010.
[15] Guide, I, “IEEE Guide for Selecting, Charging, Testing, and Evaluating Lead-Acid Batteries Used in Stand-Alone
Photovoltaic (PV) Systems,” in IEEE Std 1361-2014 (Revision of IEEE Std 1361-2003), pp. 1-39, Jun. 2014.
[16] Demirchyan, K., Neumann, L. and Korovkin, N, “Theoretical foundations of electrical engineering,” SPB: Peter,
2009.
[17] Adler, I., Christos, P. and Rubinstein, A, “On Simplex Pivoting Rules and Complexity Theory,” International
Conference on Integer Programming and Combinatorial Optimization, arXiv: Lecture Notes in Computer Science,
pp. 13-24, 2014.
[18] Hansen, T. and Zwick, U, “An Improved Version of the Random-Facet Pivoting Rule for the Simplex Algorithm,”
Proceedings of the Forty-seventh Annual ACM Symposium on Theory of Computing, pp. 209-218, 2015.
[19] Klee, V. and Minty, G.J, “How good is the simplex algorithm?,” Los Angeles, Calif, In Shisha, Oved (ed.).
Inequalities III (Proceedings of the Third Symposium on Inequalities held at the University of California,
pp. 1-9, Sep. 1972.
[20] Schrijver, A, “Theory of Linear and Integer Programming,” New York: John Wiley & sons, 1998.
[21] Stone, R.E. and Tovey, C.A, “The simplex and projective scaling algorithms as iteratively reweighted least-squares
methods,” SIAM Review, pp. 220–237, 1991.
[22] Mirshekarpour, B. and Davari, S.A, “Efficiency Optimization and Power Management in a Stand-Alone
Photovoltaic (PV) Water Pumping System,” 7th Power Electronics, Drive Systems & Technologies Conference
(PEDSTC 2016), Tehran, Iran, pp. 427-433, 2016.
[23] Priyono, W., Wijaya, D.F., Firmansyah, E, “Study and Simulation of a Hybrid Stand-alone PV System for Rural
Telecommunications System,” 2018 3rd International Conference on Information Technology, Information Systems
and Electrical Engineering (ICITISEE), Yogyakarta, Indonesia, pp. 418-422, 2018.
[24] Ribeiro, P. F., Johnson, B. K., Crow, M. L., Arsoy, A. and Liu, Y, “Energy storage systems for advanced power
applications,” Proceedings of the IEEE, pp. 1744-1756, 2001.
[25] Tran, V.H. and Coupechoux, M, “Cost-constrained Viterbi Algorithm for Resource Allocation in Solar Base
Stations,” IEEE Transactions on Wireless Communications, pp. 1-15, 2017.

More Related Content

What's hot

A novel methodology for maximization of Reactive Reserve using Teaching-Learn...
A novel methodology for maximization of Reactive Reserve using Teaching-Learn...A novel methodology for maximization of Reactive Reserve using Teaching-Learn...
A novel methodology for maximization of Reactive Reserve using Teaching-Learn...IOSR Journals
 
11.modeling and performance analysis of a small scale direct driven pmsg base...
11.modeling and performance analysis of a small scale direct driven pmsg base...11.modeling and performance analysis of a small scale direct driven pmsg base...
11.modeling and performance analysis of a small scale direct driven pmsg base...Alexander Decker
 
Adaptive maximum power point tracking using neural networks for a photovoltai...
Adaptive maximum power point tracking using neural networks for a photovoltai...Adaptive maximum power point tracking using neural networks for a photovoltai...
Adaptive maximum power point tracking using neural networks for a photovoltai...Mellah Hacene
 
Parametric estimation in photovoltaic modules using the crow search algorithm
Parametric estimation in photovoltaic modules using the crow search algorithmParametric estimation in photovoltaic modules using the crow search algorithm
Parametric estimation in photovoltaic modules using the crow search algorithmIJECEIAES
 
Optimizing of the installed capacity of hybrid renewable energy with a modifi...
Optimizing of the installed capacity of hybrid renewable energy with a modifi...Optimizing of the installed capacity of hybrid renewable energy with a modifi...
Optimizing of the installed capacity of hybrid renewable energy with a modifi...IJECEIAES
 
Multi-Objective Aspects of Distribution Network Volt-VAr Optimization
Multi-Objective Aspects of Distribution Network Volt-VAr OptimizationMulti-Objective Aspects of Distribution Network Volt-VAr Optimization
Multi-Objective Aspects of Distribution Network Volt-VAr OptimizationPower System Operation
 
Cascade forward neural network based on resilient backpropagation for simulta...
Cascade forward neural network based on resilient backpropagation for simulta...Cascade forward neural network based on resilient backpropagation for simulta...
Cascade forward neural network based on resilient backpropagation for simulta...Mellah Hacene
 
Effect analysis of the different channel length and depth of photovoltaic the...
Effect analysis of the different channel length and depth of photovoltaic the...Effect analysis of the different channel length and depth of photovoltaic the...
Effect analysis of the different channel length and depth of photovoltaic the...IJECEIAES
 
Stochastic renewable energy resources integrated multi-objective optimal powe...
Stochastic renewable energy resources integrated multi-objective optimal powe...Stochastic renewable energy resources integrated multi-objective optimal powe...
Stochastic renewable energy resources integrated multi-objective optimal powe...TELKOMNIKA JOURNAL
 
Benchmarking study between capacitive and electronic load technic to track I-...
Benchmarking study between capacitive and electronic load technic to track I-...Benchmarking study between capacitive and electronic load technic to track I-...
Benchmarking study between capacitive and electronic load technic to track I-...IJECEIAES
 
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...IJPEDS-IAES
 
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...IOSR Journals
 
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping Systems
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping SystemsOptimum Operation of Direct Coupled Photovoltaic-Water Pumping Systems
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping Systemstheijes
 
Maximum power point tracking techniques for photovoltaic systems: a comparati...
Maximum power point tracking techniques for photovoltaic systems: a comparati...Maximum power point tracking techniques for photovoltaic systems: a comparati...
Maximum power point tracking techniques for photovoltaic systems: a comparati...IJECEIAES
 
Application of swarm intelligence algorithms to energy management of prosumer...
Application of swarm intelligence algorithms to energy management of prosumer...Application of swarm intelligence algorithms to energy management of prosumer...
Application of swarm intelligence algorithms to energy management of prosumer...IJECEIAES
 
Elk 26-6-32-1711-330
Elk 26-6-32-1711-330Elk 26-6-32-1711-330
Elk 26-6-32-1711-330Mellah Hacene
 
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...IJAPEJOURNAL
 
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...A Method for Diagnosing the Condition of Energy Elements, Control And Managem...
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...IJRES Journal
 

What's hot (20)

A novel methodology for maximization of Reactive Reserve using Teaching-Learn...
A novel methodology for maximization of Reactive Reserve using Teaching-Learn...A novel methodology for maximization of Reactive Reserve using Teaching-Learn...
A novel methodology for maximization of Reactive Reserve using Teaching-Learn...
 
11.modeling and performance analysis of a small scale direct driven pmsg base...
11.modeling and performance analysis of a small scale direct driven pmsg base...11.modeling and performance analysis of a small scale direct driven pmsg base...
11.modeling and performance analysis of a small scale direct driven pmsg base...
 
Adaptive maximum power point tracking using neural networks for a photovoltai...
Adaptive maximum power point tracking using neural networks for a photovoltai...Adaptive maximum power point tracking using neural networks for a photovoltai...
Adaptive maximum power point tracking using neural networks for a photovoltai...
 
GSA TUNED HIGH EXERGY IN PV ARRAY
GSA TUNED HIGH EXERGY IN PV ARRAYGSA TUNED HIGH EXERGY IN PV ARRAY
GSA TUNED HIGH EXERGY IN PV ARRAY
 
Solution for optimal power flow problem in wind energy system using hybrid mu...
Solution for optimal power flow problem in wind energy system using hybrid mu...Solution for optimal power flow problem in wind energy system using hybrid mu...
Solution for optimal power flow problem in wind energy system using hybrid mu...
 
Parametric estimation in photovoltaic modules using the crow search algorithm
Parametric estimation in photovoltaic modules using the crow search algorithmParametric estimation in photovoltaic modules using the crow search algorithm
Parametric estimation in photovoltaic modules using the crow search algorithm
 
Optimizing of the installed capacity of hybrid renewable energy with a modifi...
Optimizing of the installed capacity of hybrid renewable energy with a modifi...Optimizing of the installed capacity of hybrid renewable energy with a modifi...
Optimizing of the installed capacity of hybrid renewable energy with a modifi...
 
Multi-Objective Aspects of Distribution Network Volt-VAr Optimization
Multi-Objective Aspects of Distribution Network Volt-VAr OptimizationMulti-Objective Aspects of Distribution Network Volt-VAr Optimization
Multi-Objective Aspects of Distribution Network Volt-VAr Optimization
 
Cascade forward neural network based on resilient backpropagation for simulta...
Cascade forward neural network based on resilient backpropagation for simulta...Cascade forward neural network based on resilient backpropagation for simulta...
Cascade forward neural network based on resilient backpropagation for simulta...
 
Effect analysis of the different channel length and depth of photovoltaic the...
Effect analysis of the different channel length and depth of photovoltaic the...Effect analysis of the different channel length and depth of photovoltaic the...
Effect analysis of the different channel length and depth of photovoltaic the...
 
Stochastic renewable energy resources integrated multi-objective optimal powe...
Stochastic renewable energy resources integrated multi-objective optimal powe...Stochastic renewable energy resources integrated multi-objective optimal powe...
Stochastic renewable energy resources integrated multi-objective optimal powe...
 
Benchmarking study between capacitive and electronic load technic to track I-...
Benchmarking study between capacitive and electronic load technic to track I-...Benchmarking study between capacitive and electronic load technic to track I-...
Benchmarking study between capacitive and electronic load technic to track I-...
 
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...
Multi-Objective Optimization Based Design of High Efficiency DC-DC Switching ...
 
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...
Optimization Methods and Algorithms for Solving Of Hydro- Thermal Scheduling ...
 
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping Systems
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping SystemsOptimum Operation of Direct Coupled Photovoltaic-Water Pumping Systems
Optimum Operation of Direct Coupled Photovoltaic-Water Pumping Systems
 
Maximum power point tracking techniques for photovoltaic systems: a comparati...
Maximum power point tracking techniques for photovoltaic systems: a comparati...Maximum power point tracking techniques for photovoltaic systems: a comparati...
Maximum power point tracking techniques for photovoltaic systems: a comparati...
 
Application of swarm intelligence algorithms to energy management of prosumer...
Application of swarm intelligence algorithms to energy management of prosumer...Application of swarm intelligence algorithms to energy management of prosumer...
Application of swarm intelligence algorithms to energy management of prosumer...
 
Elk 26-6-32-1711-330
Elk 26-6-32-1711-330Elk 26-6-32-1711-330
Elk 26-6-32-1711-330
 
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...
Economic Load Dispatch for Multi-Generator Systems with Units Having Nonlinea...
 
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...A Method for Diagnosing the Condition of Energy Elements, Control And Managem...
A Method for Diagnosing the Condition of Energy Elements, Control And Managem...
 

Similar to Energy cost savings based on the UPS

Novel method for calculating installed capacity of stand-alone renewable ene...
Novel method for calculating installed capacity of stand-alone  renewable ene...Novel method for calculating installed capacity of stand-alone  renewable ene...
Novel method for calculating installed capacity of stand-alone renewable ene...nooriasukmaningtyas
 
Optimal energy management and storage sizing for electric vehicles
Optimal energy management and storage sizing for electric vehiclesOptimal energy management and storage sizing for electric vehicles
Optimal energy management and storage sizing for electric vehiclesPower System Operation
 
Hybrid energy storage system optimal sizing for urban electrical bus regardin...
Hybrid energy storage system optimal sizing for urban electrical bus regardin...Hybrid energy storage system optimal sizing for urban electrical bus regardin...
Hybrid energy storage system optimal sizing for urban electrical bus regardin...IJECEIAES
 
A probabilistic multi-objective approach for FACTS devices allocation with di...
A probabilistic multi-objective approach for FACTS devices allocation with di...A probabilistic multi-objective approach for FACTS devices allocation with di...
A probabilistic multi-objective approach for FACTS devices allocation with di...IJECEIAES
 
Artificial Intelligence Technique based Reactive Power Planning Incorporating...
Artificial Intelligence Technique based Reactive Power Planning Incorporating...Artificial Intelligence Technique based Reactive Power Planning Incorporating...
Artificial Intelligence Technique based Reactive Power Planning Incorporating...IDES Editor
 
Optimal Generation Scheduling of Power System for Maximum Renewable Energy...
   Optimal Generation Scheduling of Power System for Maximum Renewable Energy...   Optimal Generation Scheduling of Power System for Maximum Renewable Energy...
Optimal Generation Scheduling of Power System for Maximum Renewable Energy...IJECEIAES
 
A Technique for Shunt Active Filter meld micro grid System
A Technique for Shunt Active Filter meld micro grid SystemA Technique for Shunt Active Filter meld micro grid System
A Technique for Shunt Active Filter meld micro grid SystemIJERA Editor
 
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization Technique
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization TechniqueDynamic Economic Dispatch Assessment Using Particle Swarm Optimization Technique
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization TechniquejournalBEEI
 
stability of power flow analysis of different resources both on and off grid
stability of power flow analysis of different resources both on and off gridstability of power flow analysis of different resources both on and off grid
stability of power flow analysis of different resources both on and off gridrehman1oo
 
Fractal representation of the power demand based on topological properties of...
Fractal representation of the power demand based on topological properties of...Fractal representation of the power demand based on topological properties of...
Fractal representation of the power demand based on topological properties of...IJECEIAES
 
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING adeij1
 
Energy packet networks with energy harvesting
Energy packet networks with energy harvestingEnergy packet networks with energy harvesting
Energy packet networks with energy harvestingredpel dot com
 
Energy packet networks with energy harvesting
Energy packet networks with energy harvestingEnergy packet networks with energy harvesting
Energy packet networks with energy harvestingredpel dot com
 
Investigate the maximum power point of photovoltaic system at different envi...
Investigate the maximum power point of photovoltaic system at  different envi...Investigate the maximum power point of photovoltaic system at  different envi...
Investigate the maximum power point of photovoltaic system at different envi...IJECEIAES
 
Distribution network reconfiguration for loss reduction using PSO method
Distribution network reconfiguration for loss reduction  using PSO method Distribution network reconfiguration for loss reduction  using PSO method
Distribution network reconfiguration for loss reduction using PSO method IJECEIAES
 
Application of AHP algorithm on power distribution of load shedding in island...
Application of AHP algorithm on power distribution of load shedding in island...Application of AHP algorithm on power distribution of load shedding in island...
Application of AHP algorithm on power distribution of load shedding in island...IJECEIAES
 
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...IJECEIAES
 

Similar to Energy cost savings based on the UPS (20)

Novel method for calculating installed capacity of stand-alone renewable ene...
Novel method for calculating installed capacity of stand-alone  renewable ene...Novel method for calculating installed capacity of stand-alone  renewable ene...
Novel method for calculating installed capacity of stand-alone renewable ene...
 
Optimal energy management and storage sizing for electric vehicles
Optimal energy management and storage sizing for electric vehiclesOptimal energy management and storage sizing for electric vehicles
Optimal energy management and storage sizing for electric vehicles
 
Hybrid energy storage system optimal sizing for urban electrical bus regardin...
Hybrid energy storage system optimal sizing for urban electrical bus regardin...Hybrid energy storage system optimal sizing for urban electrical bus regardin...
Hybrid energy storage system optimal sizing for urban electrical bus regardin...
 
A probabilistic multi-objective approach for FACTS devices allocation with di...
A probabilistic multi-objective approach for FACTS devices allocation with di...A probabilistic multi-objective approach for FACTS devices allocation with di...
A probabilistic multi-objective approach for FACTS devices allocation with di...
 
Artificial Intelligence Technique based Reactive Power Planning Incorporating...
Artificial Intelligence Technique based Reactive Power Planning Incorporating...Artificial Intelligence Technique based Reactive Power Planning Incorporating...
Artificial Intelligence Technique based Reactive Power Planning Incorporating...
 
Power Quality Analysis of a Grid-connected Solar/Wind/Hydrogen Energy Hybrid ...
Power Quality Analysis of a Grid-connected Solar/Wind/Hydrogen Energy Hybrid ...Power Quality Analysis of a Grid-connected Solar/Wind/Hydrogen Energy Hybrid ...
Power Quality Analysis of a Grid-connected Solar/Wind/Hydrogen Energy Hybrid ...
 
Optimal Generation Scheduling of Power System for Maximum Renewable Energy...
   Optimal Generation Scheduling of Power System for Maximum Renewable Energy...   Optimal Generation Scheduling of Power System for Maximum Renewable Energy...
Optimal Generation Scheduling of Power System for Maximum Renewable Energy...
 
A Technique for Shunt Active Filter meld micro grid System
A Technique for Shunt Active Filter meld micro grid SystemA Technique for Shunt Active Filter meld micro grid System
A Technique for Shunt Active Filter meld micro grid System
 
40620130101002
4062013010100240620130101002
40620130101002
 
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization Technique
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization TechniqueDynamic Economic Dispatch Assessment Using Particle Swarm Optimization Technique
Dynamic Economic Dispatch Assessment Using Particle Swarm Optimization Technique
 
stability of power flow analysis of different resources both on and off grid
stability of power flow analysis of different resources both on and off gridstability of power flow analysis of different resources both on and off grid
stability of power flow analysis of different resources both on and off grid
 
Output feedback nonlinear control of three-phase grid-connected PV generator
Output feedback nonlinear control of three-phase grid-connected PV generatorOutput feedback nonlinear control of three-phase grid-connected PV generator
Output feedback nonlinear control of three-phase grid-connected PV generator
 
Fractal representation of the power demand based on topological properties of...
Fractal representation of the power demand based on topological properties of...Fractal representation of the power demand based on topological properties of...
Fractal representation of the power demand based on topological properties of...
 
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING
MODELING AND OPTIMIZATION OF PIEZOELECTRIC ENERGY HARVESTING
 
Energy packet networks with energy harvesting
Energy packet networks with energy harvestingEnergy packet networks with energy harvesting
Energy packet networks with energy harvesting
 
Energy packet networks with energy harvesting
Energy packet networks with energy harvestingEnergy packet networks with energy harvesting
Energy packet networks with energy harvesting
 
Investigate the maximum power point of photovoltaic system at different envi...
Investigate the maximum power point of photovoltaic system at  different envi...Investigate the maximum power point of photovoltaic system at  different envi...
Investigate the maximum power point of photovoltaic system at different envi...
 
Distribution network reconfiguration for loss reduction using PSO method
Distribution network reconfiguration for loss reduction  using PSO method Distribution network reconfiguration for loss reduction  using PSO method
Distribution network reconfiguration for loss reduction using PSO method
 
Application of AHP algorithm on power distribution of load shedding in island...
Application of AHP algorithm on power distribution of load shedding in island...Application of AHP algorithm on power distribution of load shedding in island...
Application of AHP algorithm on power distribution of load shedding in island...
 
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...
Study and Dimensioning of the Tanks Dedicated to a Compressed Air Energy Stor...
 

More from IJECEIAES

Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...IJECEIAES
 
Prediction of the risk of developing heart disease using logistic regression
Prediction of the risk of developing heart disease using logistic regressionPrediction of the risk of developing heart disease using logistic regression
Prediction of the risk of developing heart disease using logistic regressionIJECEIAES
 
Predictive analysis of terrorist activities in Thailand's Southern provinces:...
Predictive analysis of terrorist activities in Thailand's Southern provinces:...Predictive analysis of terrorist activities in Thailand's Southern provinces:...
Predictive analysis of terrorist activities in Thailand's Southern provinces:...IJECEIAES
 
Optimal model of vehicular ad-hoc network assisted by unmanned aerial vehicl...
Optimal model of vehicular ad-hoc network assisted by  unmanned aerial vehicl...Optimal model of vehicular ad-hoc network assisted by  unmanned aerial vehicl...
Optimal model of vehicular ad-hoc network assisted by unmanned aerial vehicl...IJECEIAES
 
Improving cyberbullying detection through multi-level machine learning
Improving cyberbullying detection through multi-level machine learningImproving cyberbullying detection through multi-level machine learning
Improving cyberbullying detection through multi-level machine learningIJECEIAES
 
Comparison of time series temperature prediction with autoregressive integrat...
Comparison of time series temperature prediction with autoregressive integrat...Comparison of time series temperature prediction with autoregressive integrat...
Comparison of time series temperature prediction with autoregressive integrat...IJECEIAES
 
Strengthening data integrity in academic document recording with blockchain a...
Strengthening data integrity in academic document recording with blockchain a...Strengthening data integrity in academic document recording with blockchain a...
Strengthening data integrity in academic document recording with blockchain a...IJECEIAES
 
Design of storage benchmark kit framework for supporting the file storage ret...
Design of storage benchmark kit framework for supporting the file storage ret...Design of storage benchmark kit framework for supporting the file storage ret...
Design of storage benchmark kit framework for supporting the file storage ret...IJECEIAES
 
Detection of diseases in rice leaf using convolutional neural network with tr...
Detection of diseases in rice leaf using convolutional neural network with tr...Detection of diseases in rice leaf using convolutional neural network with tr...
Detection of diseases in rice leaf using convolutional neural network with tr...IJECEIAES
 
A systematic review of in-memory database over multi-tenancy
A systematic review of in-memory database over multi-tenancyA systematic review of in-memory database over multi-tenancy
A systematic review of in-memory database over multi-tenancyIJECEIAES
 
Agriculture crop yield prediction using inertia based cat swarm optimization
Agriculture crop yield prediction using inertia based cat swarm optimizationAgriculture crop yield prediction using inertia based cat swarm optimization
Agriculture crop yield prediction using inertia based cat swarm optimizationIJECEIAES
 
Three layer hybrid learning to improve intrusion detection system performance
Three layer hybrid learning to improve intrusion detection system performanceThree layer hybrid learning to improve intrusion detection system performance
Three layer hybrid learning to improve intrusion detection system performanceIJECEIAES
 
Non-binary codes approach on the performance of short-packet full-duplex tran...
Non-binary codes approach on the performance of short-packet full-duplex tran...Non-binary codes approach on the performance of short-packet full-duplex tran...
Non-binary codes approach on the performance of short-packet full-duplex tran...IJECEIAES
 
Improved design and performance of the global rectenna system for wireless po...
Improved design and performance of the global rectenna system for wireless po...Improved design and performance of the global rectenna system for wireless po...
Improved design and performance of the global rectenna system for wireless po...IJECEIAES
 
Advanced hybrid algorithms for precise multipath channel estimation in next-g...
Advanced hybrid algorithms for precise multipath channel estimation in next-g...Advanced hybrid algorithms for precise multipath channel estimation in next-g...
Advanced hybrid algorithms for precise multipath channel estimation in next-g...IJECEIAES
 
Performance analysis of 2D optical code division multiple access through unde...
Performance analysis of 2D optical code division multiple access through unde...Performance analysis of 2D optical code division multiple access through unde...
Performance analysis of 2D optical code division multiple access through unde...IJECEIAES
 
On performance analysis of non-orthogonal multiple access downlink for cellul...
On performance analysis of non-orthogonal multiple access downlink for cellul...On performance analysis of non-orthogonal multiple access downlink for cellul...
On performance analysis of non-orthogonal multiple access downlink for cellul...IJECEIAES
 
Phase delay through slot-line beam switching microstrip patch array antenna d...
Phase delay through slot-line beam switching microstrip patch array antenna d...Phase delay through slot-line beam switching microstrip patch array antenna d...
Phase delay through slot-line beam switching microstrip patch array antenna d...IJECEIAES
 
A simple feed orthogonal excitation X-band dual circular polarized microstrip...
A simple feed orthogonal excitation X-band dual circular polarized microstrip...A simple feed orthogonal excitation X-band dual circular polarized microstrip...
A simple feed orthogonal excitation X-band dual circular polarized microstrip...IJECEIAES
 
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...A taxonomy on power optimization techniques for fifthgeneration heterogenous ...
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...IJECEIAES
 

More from IJECEIAES (20)

Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...
 
Prediction of the risk of developing heart disease using logistic regression
Prediction of the risk of developing heart disease using logistic regressionPrediction of the risk of developing heart disease using logistic regression
Prediction of the risk of developing heart disease using logistic regression
 
Predictive analysis of terrorist activities in Thailand's Southern provinces:...
Predictive analysis of terrorist activities in Thailand's Southern provinces:...Predictive analysis of terrorist activities in Thailand's Southern provinces:...
Predictive analysis of terrorist activities in Thailand's Southern provinces:...
 
Optimal model of vehicular ad-hoc network assisted by unmanned aerial vehicl...
Optimal model of vehicular ad-hoc network assisted by  unmanned aerial vehicl...Optimal model of vehicular ad-hoc network assisted by  unmanned aerial vehicl...
Optimal model of vehicular ad-hoc network assisted by unmanned aerial vehicl...
 
Improving cyberbullying detection through multi-level machine learning
Improving cyberbullying detection through multi-level machine learningImproving cyberbullying detection through multi-level machine learning
Improving cyberbullying detection through multi-level machine learning
 
Comparison of time series temperature prediction with autoregressive integrat...
Comparison of time series temperature prediction with autoregressive integrat...Comparison of time series temperature prediction with autoregressive integrat...
Comparison of time series temperature prediction with autoregressive integrat...
 
Strengthening data integrity in academic document recording with blockchain a...
Strengthening data integrity in academic document recording with blockchain a...Strengthening data integrity in academic document recording with blockchain a...
Strengthening data integrity in academic document recording with blockchain a...
 
Design of storage benchmark kit framework for supporting the file storage ret...
Design of storage benchmark kit framework for supporting the file storage ret...Design of storage benchmark kit framework for supporting the file storage ret...
Design of storage benchmark kit framework for supporting the file storage ret...
 
Detection of diseases in rice leaf using convolutional neural network with tr...
Detection of diseases in rice leaf using convolutional neural network with tr...Detection of diseases in rice leaf using convolutional neural network with tr...
Detection of diseases in rice leaf using convolutional neural network with tr...
 
A systematic review of in-memory database over multi-tenancy
A systematic review of in-memory database over multi-tenancyA systematic review of in-memory database over multi-tenancy
A systematic review of in-memory database over multi-tenancy
 
Agriculture crop yield prediction using inertia based cat swarm optimization
Agriculture crop yield prediction using inertia based cat swarm optimizationAgriculture crop yield prediction using inertia based cat swarm optimization
Agriculture crop yield prediction using inertia based cat swarm optimization
 
Three layer hybrid learning to improve intrusion detection system performance
Three layer hybrid learning to improve intrusion detection system performanceThree layer hybrid learning to improve intrusion detection system performance
Three layer hybrid learning to improve intrusion detection system performance
 
Non-binary codes approach on the performance of short-packet full-duplex tran...
Non-binary codes approach on the performance of short-packet full-duplex tran...Non-binary codes approach on the performance of short-packet full-duplex tran...
Non-binary codes approach on the performance of short-packet full-duplex tran...
 
Improved design and performance of the global rectenna system for wireless po...
Improved design and performance of the global rectenna system for wireless po...Improved design and performance of the global rectenna system for wireless po...
Improved design and performance of the global rectenna system for wireless po...
 
Advanced hybrid algorithms for precise multipath channel estimation in next-g...
Advanced hybrid algorithms for precise multipath channel estimation in next-g...Advanced hybrid algorithms for precise multipath channel estimation in next-g...
Advanced hybrid algorithms for precise multipath channel estimation in next-g...
 
Performance analysis of 2D optical code division multiple access through unde...
Performance analysis of 2D optical code division multiple access through unde...Performance analysis of 2D optical code division multiple access through unde...
Performance analysis of 2D optical code division multiple access through unde...
 
On performance analysis of non-orthogonal multiple access downlink for cellul...
On performance analysis of non-orthogonal multiple access downlink for cellul...On performance analysis of non-orthogonal multiple access downlink for cellul...
On performance analysis of non-orthogonal multiple access downlink for cellul...
 
Phase delay through slot-line beam switching microstrip patch array antenna d...
Phase delay through slot-line beam switching microstrip patch array antenna d...Phase delay through slot-line beam switching microstrip patch array antenna d...
Phase delay through slot-line beam switching microstrip patch array antenna d...
 
A simple feed orthogonal excitation X-band dual circular polarized microstrip...
A simple feed orthogonal excitation X-band dual circular polarized microstrip...A simple feed orthogonal excitation X-band dual circular polarized microstrip...
A simple feed orthogonal excitation X-band dual circular polarized microstrip...
 
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...A taxonomy on power optimization techniques for fifthgeneration heterogenous ...
A taxonomy on power optimization techniques for fifthgeneration heterogenous ...
 

Recently uploaded

Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur EscortsRussian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...Call Girls in Nagpur High Profile
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCall Girls in Nagpur High Profile
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escortsranjana rawat
 
Processing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxProcessing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxpranjaldaimarysona
 
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...ranjana rawat
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduitsrknatarajan
 
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfKamal Acharya
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordAsst.prof M.Gokilavani
 
UNIT-V FMM.HYDRAULIC TURBINE - Construction and working
UNIT-V FMM.HYDRAULIC TURBINE - Construction and workingUNIT-V FMM.HYDRAULIC TURBINE - Construction and working
UNIT-V FMM.HYDRAULIC TURBINE - Construction and workingrknatarajan
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlysanyuktamishra911
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdfKamal Acharya
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxupamatechverse
 
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...ranjana rawat
 
Glass Ceramics: Processing and Properties
Glass Ceramics: Processing and PropertiesGlass Ceramics: Processing and Properties
Glass Ceramics: Processing and PropertiesPrabhanshu Chaturvedi
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSSIVASHANKAR N
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...ranjana rawat
 

Recently uploaded (20)

Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
 
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur EscortsRussian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
Russian Call Girls in Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
 
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
 
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
 
Processing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxProcessing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptx
 
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANJALI) Dange Chowk Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduits
 
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
 
Roadmap to Membership of RICS - Pathways and Routes
Roadmap to Membership of RICS - Pathways and RoutesRoadmap to Membership of RICS - Pathways and Routes
Roadmap to Membership of RICS - Pathways and Routes
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
 
UNIT-V FMM.HYDRAULIC TURBINE - Construction and working
UNIT-V FMM.HYDRAULIC TURBINE - Construction and workingUNIT-V FMM.HYDRAULIC TURBINE - Construction and working
UNIT-V FMM.HYDRAULIC TURBINE - Construction and working
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdf
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptx
 
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
The Most Attractive Pune Call Girls Budhwar Peth 8250192130 Will You Miss Thi...
 
Glass Ceramics: Processing and Properties
Glass Ceramics: Processing and PropertiesGlass Ceramics: Processing and Properties
Glass Ceramics: Processing and Properties
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
 

Energy cost savings based on the UPS

  • 1. International Journal of Electrical and Computer Engineering (IJECE) Vol. 10, No. 4, August 2020, pp. 4237~4243 ISSN: 2088-8708, DOI: 10.11591/ijece.v10i4.pp4237-4243  4237 Journal homepage: http://ijece.iaescore.com/index.php/IJECE Energy cost savings based on the UPS Phu Tran Tin1 , Duy Hung Ha2 , Minh Tran3 , Q. S. Vu4 1 Faculty of Electronics Technology, Industrial University of Ho Chi Minh City, Vietnam 2 Wireless Communications Research Group, Faculty of Electrical and Electronics Engineering, Ton Duc Thang University, Vietnam 3 Optoelectronics Research Group, Faculty of Electrical and Electronics Engineering, Ton Duc Thang University, Vietnam 4 National Key Laboratory of Digital Control and System Engineering, Vietnam Article Info ABSTRACT Article history: Received Dec 5, 2019 Revised Feb 21, 2020 Accepted Feb 29, 2020 Energy-saving, improving energy efficiency, and finding a new efficient way to use energy are considered as an urgent problem in over the world. In this paper, we consider the economics of energy use in combination with energy storage units where two forms of electricity exist in the power system. Then the problem of optimizing the installation capacity (to optimize the investment costs for energy storage) is presented and investigated in connection with the conversion systems. The topic opens a very significant result, including the introduction of a mathematical model to calculate the simulation in optimizing the installation capacity of the equipment in the system, multi-source power, as well as voltage and power stability benefits. Keywords: Energy storage Linear programming problem Optimization Simplex-method Copyright © 2020 Institute of Advanced Engineering and Science. All rights reserved. Corresponding Author: Duy-Hung Ha, Wireless Communications Research Group, Faculty of Electrical and Electronics Engineering, Ton Duc Thang University, Ho Chi Minh City, Vietnam. Email: haduyhung@tdtu.edu.vn 1. INTRODUCTION This paper considers the problem, which related to the research project to improve economic and technical efficiency in the current period of the Russian Federation power systems. In fact, there have a two-price mechanism exists (electricity prices vary between peak and off-peak times) it is possible to receive some degree of energy cost savings when installing units. energy storage [1-12]. In this paper, we proposed the followings problems as 1) The level of cost savings of how energy is achieved and how to control the operation of the UPS to save costs; 2) The correlation of the capacity components of the load, the capacity of the supply network, the capacity of the converter and the capacity of the energy storage to how to save maximum cost; 3) the ability to stabilize the voltage in the system. These problems are the aim of this paper. The investment and operation of an energy storage device are significant for the owner of the load if it reduces energy costs. The power supply system can also finance the investment and operation of storage devices if it helps reduce the unevenness of the network. In optimizing energy consumption costs, it means that we will consider the issue of energy efficiency from the owners' perspective [13, 14]. This paper develops and solves the problem of determining the minimum cost of energy consumption when the ratios of power consumption of load components, converter power, and storage capacity amount. Assume that energy consumers consume only active power. The load characteristics are
  • 2.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243 4238 maximum during the day and vary between days in a week. The capacity of the load consists of two parts; the fixed component includes essential loads, and the component can be changed, that is, can shift the time of use. The unit, the load, and the power from the grid are connected to the distribution control system (including charge/discharge and converter controllers). To solve this problem, we put the problem of solving linear programming problems with thousands of variables. The system's working mode is simulated for a week with a discrete distance of 12 minutes. The results of the problem have proved that the use of UPSs brings economic efficiency of 5-25%, without taking into account the cost of the system, storage devices, and associated energy converters. The assessment of the overall economic efficiency of this topic must be investigated for all the above factors. In the general conclusion of the paper confirms that at present due to the price of the variable and energy storage devices is still high compared to the cost savings brought by the two-price mechanism, the use of such devices are inefficient. However, the topic opens a very significant result, including the introduction of a mathematical model to calculate the simulation in optimizing the installation capacity of the equipment in the system, multi-source power, as well as voltage and power stability benefits. The rest of the paper is constructed as the following. The mathematical formulation is proposed in the second section. In the third section, some numerical results and discussions are presented and analyzed. The last section draws some conclusions from this research. 2. MATHEMATICAL FORMULATION In this section, we give the quantities describe the problem and their limitations. First, to make it clear, we introduce these quantities as continuous functions over time, then we take a discrete step over time, and all quantities describe the problem become vectors whose components will be valuable at discrete points. For UPS, bat max bat bat max bat, ( ), , ( )P P t W W t are corresponding to the capacity of the power converter suitable to connect the unit and the grid. Instantaneous generating/receiving capacity of the unit must be synchronized with the capacity of the inverter. The quantities describe the electrical storage part are, bat max bat bat max( )P P t P   (1) bat bat max0 ( )W t W  (2) where bat bat bat 0 ( ) ( ) (0) t W t P t dt W  It should be noted that the maximum capacity and capacity of the battery must be taken according to the charge/discharge limits of the battery, within which the UPS operates correctly, i.e. depending on the charge/discharge characteristics according to the condition of the energy-saving unit. These limits are different for each type of battery used as shown in [15]. If bat (0) 0W  , then bat bat 0 ( ) ( ) t W t P t dt  (3) Regarding the capacity taken from the grid net max net, ( )P P t are the maximum power allowed from the grid and instantaneous power, we have: net net max0 ( )P t P  (4) For load, load ( )P t is the instantaneous power of the initial load. As mentioned above, there are two components const ( )P t and var ( )P t as shown in the below equation: load const var( ) ( ) ( )P t P t P t  (5) where const ( )P t is the load component is always present and cannot be changed at use time, i.e. its graph does not change after optimization; var ( )P t is the component may change when it is used, i.e. its graph will be
  • 3. Int J Elec & Comp Eng ISSN: 2088-8708  Energy cost savings based on the uninterruptible… (Phu Tran Tin) 4239 changed after optimization. The load energy loadW consumed from 0t  to t Т , with T the simulation time, in this problem we simulate the system operating within a week, we have [16]. load load const var const var 0 0 0 ( ) ( ) ( ) T T T W P t dt P t dt P t dt W W       (6) where var var 0 ( ) T W P t dt  (7) Power balance equation is given by: bat net load( ) ( ) ( )P t P t P t  or var bat net const( ) ( ) ( ) ( )P t P t P t P t    (8) We take into account the vectors 𝑃var,   𝑃bat,   𝑃net, whose elements are values corresponding to quantities var bat net( ), ( ), ( )P t P t P t at discrete point s 1 1:{ 0; ; }k k k Nt t t t h t T    , with h is the observation step during simulation - 12 minutes. Next, to make writing quantities simpler, we denote var, var bat, bat net, net( ), ( ), ( )k k k k k kP P t P P t P P t   . Then we have: var,1 bat,1 net,1 var,2 bat,2 net,2 var bat net var, bat, net, ; ; N N N P P P P P P P P P                                            P P P M M M Suppose K (t) - the price of electricity purchased from the grid changes according to the time of use according to a known rule. In this problem, we take the electricity price in the city of Saint-Petersburg, May 2019. Daytime prices are 7.6 cents / kWh and at night 4.4 cents / kWh. Similarly, we include the price vector so that we can write equations in the form of matrices. The cost for the energy storage unit will be calculated from the capacity and the optimal battery capacity received during the simulations. The objective function can be formulated as net mint f  K P (9) The limits in (8) indicate the fact that the total power taken from the grid and the unit is equal to the load capacity at any given time. Hence, in vector form, (7) is rewritten as var var var, var 1 load const 10 ( ) T N t n n W P t dt P h h B W W          1 P where 1 – Unit vectors of the corresponding size. From the hypothesis that the initial state bat (0)W of the unit and the same bat,NW - the remaining power of the unit are equal, we get the limits: bat bat bat bat,1 2 bat,(0) t NW W h W B W      1 P hay bat 2 bat, bat (0)t Nh B W W    1 P Then (8) can be reformulated as the following   { const,1 var const,2 bat 3 net const,N P P P                         X P E E E P B P M
  • 4.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243 4240 Where E – matrix unit. Finally, we have var 1 bat 2 net 3 t t h B h B h h h                                     1 0 0 P 0 1 0 P AX B E E E P B (10) where 0 – vectors have no corresponding dimensions. In (3), we denote that the UPS and converters have no loss then bat,n bat bat, bat max 1 0 (0) ; 1, n i i W W P h W n N       Or in the matrix form as   bat,1 bat,2 bat bat max bat bat, 1 0 0 1 1 0 (0) (0) 1 1 1 N P P W h W W P                          S 1 1 L L MM M O M L 14444442 4444443 Or bat bat max bat bat (0) (0)W W W h h       1 S P 1 , then  bat max bat bat bat (0)1 (0) W W h W             S 1 P S 1 Finally, we have  var bat max bat bat bat net (0)1 (0) W W h W                                   00 P S 1 P CX D S 1 P 0 0 (11) We re-list the entire mathematical model of the problem to be solved as var net max load max bat max bat bat max net net max 0 ( ) ( ) 0 ( ) P t P P P P t P P t P            var load const bat max bat bat max net net max P P P P P                               0 P 1 1 P 1 0 P 1 (12) The problem (12) is formed from the problem (9) with conditions in the form of equality (10) and inequalities (11) related to linear programming problems, and to solve problems of this type, we apply the simplex method as in [17-21]. The total number of variables when simulating the system within a week with a 12-minute observation step is 2520 variables. 3. NUMERICAL RESULTS AND DISCUSSION Figure 1(a) corresponds to the case when var const( ) ( )P t P t , when the power output is interchangeable and cannot be changed equally. As you can see, the actual UPS is almost unused (curve bat ( )W t ). The capacity of the UPS can then be reduced to 10 kWh. The economic benefits are about 20% of the original. Figure 1(b) corresponds to the case var const( ) 0.2 ( )P t P t . It can be seen that the UPS is used very
  • 5. Int J Elec & Comp Eng ISSN: 2088-8708  Energy cost savings based on the uninterruptible… (Phu Tran Tin) 4241 actively (maximum battery capacity is 45kWh, and its capacity is 15kW), activities consume more energy comfortably for consumers. UPSs and converters are used very actively. Accordingly, the losses in the equipment and the depreciation costs of these devices (not included by us) can be significant [22-25]. To verify the results graphically, we turn to relative values as shown in (13). net max load var bat max net max load var bat max load max load max load max ˆ ˆ ˆ, , P P P P P P P P P    (13)PowerkW;EnergyBaterrykWh 1 week = 168 hours (a) CôngsuấtkW;NănglượngpinkWh 1 week = 168 h (b) Figure 1. Optimize electricity consumption costs when: a) - var const( ) ( )P t P t and b) var const( ) 0.2 ( )P t P t In Table 1, we present the results of several dozen calculations performed for different ratios concerning the relative values above. On the vertical axis of all graphs, the percentage of energy cost savings percentage (hereinafter F) is consumed from the network. The third line in each cell of Table 1 gives the ratios of the word parameters (13). As can be seen from the graphs, the increase in converter capacity (corresponding to the capacity of the unit) reduces the cost of electricity consumption (F increases). This result is easily predictable. However, as can be seen from the diagrams (first panel of table 1) such as F = 25% when the load capacity of 100kW is more than 150kWh. The analysis of the first cell of table 1 has shown that F decreases as the maximum power from the grid decrease. This is explained by the fact that, at the maximum power allowed from the grid, there is not enough power per charge on the unit, and of course, its efficiency is low even with the capacity of the converter as well as of the large UPS. When the maximum power available from the grid increases, F increases linearly with the capacity of the unit. The second cell shows the effect of quantities on the efficiency of the use of uninterruptible power supplies. Here F also decreases as the maximum power taken from the grid decreases, and when within the same maximum power of the grid, the constant component decreases. An analysis of the last cell
  • 6.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 10, No. 4, August 2020 : 4237 - 4243 4242 of the table also shows a similar result. Thus, the general conclusion is that to save significant energy costs can only be achieved with the maximum capacity of the high grid. Table 1. The level of economic efficiency depends on relative quantities (13)  net max bat max ˆ ˆ,F P P load var ˆP  0,2 load var ˆP  0,3 load var ˆP  0,5  net max load var ˆ ˆ,F P P bat max ˆP  0,1 bat max ˆP  0,15 bat max ˆP  0,5  load var bat max ˆ ˆ,F P P net max ˆP  0,8 net max ˆP  0,9 net max ˆP  1,1 4. CONCLUSION The results show that even with reasonably simple assumptions, the use of a UPS helps to reduce energy costs by 5-25%. At the same time, the capital cost of additional equipment (the unit and the converter connecting it to the network) is estimated to be significant. The energy efficiency is significant (10 percent or more) when the variable power component of the load accounts for 10 percent or more of the maximum power taken from the grid. Therefore, the question of the efficiency of energy cost savings when using the UPS and the two-price mechanism receives the answer (according to our research) is insignificant because the operating costs and the costs of investing in consumer electricity storage devices are equivalent to the costs saved by increasing electricity consumption (including saving electricity) at times of low prices and reducing consumption. Electricity at a time of high prices. The situation is likely to change significantly if the owner has the opportunity to use alternative (renewable) energy sources. We intend to consider this issue further. REFERENCES [1] H. Chen, B. Wei and D. Ma, “Energy Storage and Management System With Carbon Nanotube Supercapacitor and Multidirectional Power Delivery Capability for Autonomous Wireless Sensor Nodes,” in IEEE Transactions on Power Electronics, vol. 25, no. 12, pp. 2897-2909, Dec. 2010. [2] V. Subramanian, et al., “Printed electronics for low-cost electronic systems: Technology status and application development,” ESSCIRC 2008 - 34th European Solid-State Circuits Conference, Edinburgh, pp. 17-24, 2008. [3] V. A. Boicea, “Energy Storage Technologies: The Past and the Present,” in Proceedings of the IEEE, vol. 102, no. 11, pp. 1777-1794, Nov. 2014.
  • 7. Int J Elec & Comp Eng ISSN: 2088-8708  Energy cost savings based on the uninterruptible… (Phu Tran Tin) 4243 [4] J. Yao, H. Li, Y. Liao, and Z. Chen, “An improved control strategy of limiting the DC-link voltage fluctuation for a doubly-fed induction wind generator,” IEEE Trans. Power Electron., vol. 23, no. 3, pp. 1205–1213, May 2008. [5] A. Timbus, M. Liserre, R. Teodorescu, P. Rodriguez, and F. Blaabjerg, “Evaluation of current controllers for distributed power generation systems,” IEEE Trans. Power Electron., vol. 24, no. 3, pp. 654–664, Mar. 2009. [6] L. Maharjan, S. Inoue, H. Akagi, and J. Asakura, “State-of-charge (SOC)-balancing control of a battery energy storage system based on a cascade PWM converter,” IEEE Trans. Power Electron., vol. 24, no. 6, pp. 1628–1636, Jun. 2009. [7] Y. W. Li and C. N. Kao, “An accurate power control strategy for power-electronics-interfaced distributed generation units operating in a low-voltage multibus microgrid,” IEEE Trans. Power Electron., vol. 24, no. 12, pp. 2977–2988, Dec. 2009. [8] I. Park, et al, “Nanoscale Patterning and Electronics on Flexible Substrate by Direct Nanoimprinting of Metallic Nanoparticles,” Advanced Materials, vol. 20, pp. 489 – 496, 2008. [9] A.V. Boicea, G. Chicco, and P. Mancarella, “Optimal operation at partial load of a 30 kW natural gas microturbine cluster,” Buletinul Stiintific al Universitatii Politehnica Bucuresti, Seria C, vol. 73, no. 1, pp. 211–222, Mar. 2011. [10] S. Shepard, “Vehicle to Grid Frequency Regulation Revenue Will Surpass $190 Million Annually by 2022,” Boulder, CO, USA: Navigant Res., Oct. 2013. [11] K. Yang and A. Walid, “Outage-storage tradeoff in frequency regulation for smart grid with renewables,” IEEE Trans. Smart Grid, vol. 4, no. 1, pp. 245–252, Mar. 2013. [12] H. Zhang, “A battery storage device for distributed hybrid-powered smart grid system and control method thereof,” European Patent 2645522 A1, Oct. 2, 2013. [13] Stone, R.E. and Tovey, C.A, “Erratum: The simplex and projective scaling algorithms as iteratively reweighted least-squares methods,” SIAM Review, pp. 220–237, 1991. [14] Vazquez, S., Lukic, S. M., Galvan, E., Franquelo, L. G. and Carrasco, J. M, “Energy storage systems for transport and grid applications,” IEEE Transactions on Industrial Electronics, pp. 3881-3895. 2010. [15] Guide, I, “IEEE Guide for Selecting, Charging, Testing, and Evaluating Lead-Acid Batteries Used in Stand-Alone Photovoltaic (PV) Systems,” in IEEE Std 1361-2014 (Revision of IEEE Std 1361-2003), pp. 1-39, Jun. 2014. [16] Demirchyan, K., Neumann, L. and Korovkin, N, “Theoretical foundations of electrical engineering,” SPB: Peter, 2009. [17] Adler, I., Christos, P. and Rubinstein, A, “On Simplex Pivoting Rules and Complexity Theory,” International Conference on Integer Programming and Combinatorial Optimization, arXiv: Lecture Notes in Computer Science, pp. 13-24, 2014. [18] Hansen, T. and Zwick, U, “An Improved Version of the Random-Facet Pivoting Rule for the Simplex Algorithm,” Proceedings of the Forty-seventh Annual ACM Symposium on Theory of Computing, pp. 209-218, 2015. [19] Klee, V. and Minty, G.J, “How good is the simplex algorithm?,” Los Angeles, Calif, In Shisha, Oved (ed.). Inequalities III (Proceedings of the Third Symposium on Inequalities held at the University of California, pp. 1-9, Sep. 1972. [20] Schrijver, A, “Theory of Linear and Integer Programming,” New York: John Wiley & sons, 1998. [21] Stone, R.E. and Tovey, C.A, “The simplex and projective scaling algorithms as iteratively reweighted least-squares methods,” SIAM Review, pp. 220–237, 1991. [22] Mirshekarpour, B. and Davari, S.A, “Efficiency Optimization and Power Management in a Stand-Alone Photovoltaic (PV) Water Pumping System,” 7th Power Electronics, Drive Systems & Technologies Conference (PEDSTC 2016), Tehran, Iran, pp. 427-433, 2016. [23] Priyono, W., Wijaya, D.F., Firmansyah, E, “Study and Simulation of a Hybrid Stand-alone PV System for Rural Telecommunications System,” 2018 3rd International Conference on Information Technology, Information Systems and Electrical Engineering (ICITISEE), Yogyakarta, Indonesia, pp. 418-422, 2018. [24] Ribeiro, P. F., Johnson, B. K., Crow, M. L., Arsoy, A. and Liu, Y, “Energy storage systems for advanced power applications,” Proceedings of the IEEE, pp. 1744-1756, 2001. [25] Tran, V.H. and Coupechoux, M, “Cost-constrained Viterbi Algorithm for Resource Allocation in Solar Base Stations,” IEEE Transactions on Wireless Communications, pp. 1-15, 2017.