Managing the Demand in a Micro Grid Based on Load Shifting with Controllable Devices Using Hybrid WFS2ACSO Technique
Abstract
:1. Introduction
- The technique adopted in this paper is proposed with WFSA and the hybrid WFS2ACSO optimization technique, which has not been contributed by other researchers.
- Previous researchers have not contributed to the rise in controllable devices in Demand Side Management with regard to summer and winter seasons while considering the methodology of DSM with the incorporation of WFSA and the hybrid WFS2ACSO optimization technique.
- Previous studies have not contributed to the comparative analysis of the validation of minimization on bill electrification, Peak to Average Ratio (PAR), and power consumption using the WFSA and the hybrid WFS2ACSO optimization technique with and without applying DSM.
- Analysis of Demand Side Management with regard to summer and winter seasons considering residential, commercial, and industrial loads with the incorporation of WFSA and the hybrid WFS2ACSO optimization technique was formulated.
- The validation of minimization on bill electrification, Peak to Average Ratio (PAR), and power consumption with and without applying DSM was performed using WFSA and the hybrid WFS2ACSO optimization technique.
- A comparative analysis of PAR was proposed for both summer and winter.
2. Problem Formulation
2.1. Problem Formulation of DSM
2.2. Minimization Function
2.3. Constraints
2.4. Calculation of Controllable Devices
- (1)
- Residential area: In the residential area, controllable devices are very low for load control based on the ratings of power consumption, and the load of home appliances is very low, such as for the washing machine, dishwasher, EV home charger, and so on.
- (2)
- Commercial area: Here, the equipment is quite high in comparison with the residential load. This includes devices such as the coffee maker, water dispenser, and so on.
- (3)
- Industrial area: In the industrial area, the ratings of power consumption are at maximum, with a minimum number of controllable devices, such as the welding machine, water heater, etc. In this area, the operating conditions are also high compared to other areas.
3. Proposed WFS2ACSO Technique Approach
WFS2ACSO Algorithm Steps
- Step 1: Initialization of dimensions, number of search agents, max iterations, upper boundary, lower boundary, awareness probability, and flight length.
- Step 2: Random generation of population or positions for the parameters at the input are arbitrarily created using below matrix X.
- Step 3: Objective function relates to an evaluation of fitness as expressed in Equation (1).
- Step 4: Position updating using ACSO
- Step 5: Calculation of successor distance
- Step 6: Calculation of life of cell
- Step 7: Stopping criteria
4. Details of the Test System
5. Results and Discussions
- Case 1: Performance of system parameters for residential area, commercial area, and industrial area under summer conditions.
- Case 2: Performance of system parameters for residential area, commercial area, and industrial area under winter conditions.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
Pload (m) | Actual usage in time m |
Xkim | Quantity of devices of kind k |
Loadf | Highest peak of final load curve |
Power consumption in hour h | |
Reducible load margin in hour h | |
Change in load deviation | |
objh | Objective curve in hour h |
xkh | Number of devices of kind k in hour h |
P11(t) | Position of the particle |
Xnew | New position |
X | Current position |
Xk | Best position |
DSM | Demand Side Management |
MG | Micro Grid |
WFSA | Wingsuit Flying Search Algorithm |
ACSO | Artificial Cell Swarm Optimization |
PSO | Particle Swarm Optimization |
ALO | Ant Lion Optimization |
MG | Micro Grid |
HEMS | Home Energy Management Systems |
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Researchers | Optimization Technique/Mode Used | Achievements or Findings | Contributions |
---|---|---|---|
Guelpa, E [1] | Linear programming | Thermal scheduling of building | The author proposed DSM to control the district heating networks |
Tang, R [2] | Game theory | Electricity bill and peak demand reduction | An interactive model wasdeveloped to communicate between grid and building |
Khan, A et al. [3] | Multiple knapsacks | Reduction inpeak energy consumption, carbon emissions | The authors implemented a priority-based DSM strategy by load shifting technique |
Su, H [4] | Dynamic pricing strategy | Forecastingof load demand, customer response analysis | Development of data-driven DSM |
Yilmaz, S [5] | Clustering analysis technique | To improve electricity demand profiles | The authors proposed a novel clustering technique to forecast and enhance the load profiles |
Walzberg J [6] | Stochastic approach | To estimate environmental impact | The authors proposed a life cycle assessment to estimate the environmental impacts |
Luo, X et al. [7] | Integrated demand and supply management strategy | Reduction inenergy consumption and energy storage | Neglected the PAR and user comfort |
Pilz, M [8] | Dynamic game approach | Reduction inforecasting errors | An extensive analysis was developed to reduce the forecasting errors |
Rehman, S et al. [9] | Model predictive control | Reduction ingeneration cost and emissions | Neglected the PAR and user comfort |
Jha, S [10] | DSM strategy | Voltage control in Micro Grid | The author implemented a battery energy storage system for voltage controlling in islanded Micro Grid |
Qin, H [11] | Linear programming | To reduce the power mismatches | Proposed a stochastic unit commitment problem to reduce the power mismatches |
Surajkumar [12] | Heuristic technique | To mitigate the integration issues | Implementation of renewable energy source to the grid with minimization of issues |
Logenthiran, T [13] | Particle Swarm Optimization | Minimization of electricity bill, energy consumption, and PAR | User comfort not taken into account Convergence time washigher and more parameters |
Bharathi, C et al. [14] | Genetic Algorithm | Minimization of power consumption | User comfort, PAR, and energy saving wereneglected |
Khalid, A [15] | Hybrid Bacterial Foraging and Genetic Algorithm | Energy savings and PAR reduction | User comfort neglected |
Singh, M.; Jha, R [16] | TLBO technique | Peak reduction and usability index | User comfort and energy saving wereneglected |
Padmini, S [17] | Flower Pollination Technique | To reduce the congestion | The author proposed an optimization technique for rescheduling of generators to reduce the congestion |
Venkatesh, B.; Padmini, S [18] | Ant Lion Optimization | Reduction inelectricity bill, energy consumption, and PAR | The author implemented an Ant Lion Optimization to minimize the electricity bill, energy consumption, and PAR |
Sharma, A.; Saxena, A [19] | Whale Optimization Algorithm | Minimization of peak load and energy savings | User comfort and PAR wereneglected |
Kumar, K [20] | Artificial Fish Swarm Optimization | To reduce the cost of power generation | The author proposed a day-ahead scheduling problem of generation and storage facility |
Huang, H [21] | Artificial Fish Swarm Optimization | To reduce the energy consumption | Proposed an algorithm for the reduction inenergy consumption patterns |
Padmini, S [22] | Evolutionary programming | Maximization of the profit of GENCO | The author developed an optimal bidding scheme to increase the profits of GENCO |
Padmini, S [23] | Locational marginal pricing | Maximization of the profit of GENCO | The author developed an optimal bidding scheme to increase the profits of GENCO |
Covic, N [25] | Wingsuit Flying Search | Reduction inthe optimization criterion | The author proposed a novel technique for the Wingsuit Flying Search Optimization criterion |
Chatterjee, S [26] | Artificial Cell Swarm Optimization | Reduction inthe optimization criterion | The author proposed a novel technique based on Artificial Cell Division process |
Ahmed, E.M et al. [28] | PSO and Strawberry Optimization Algorithm(SOA) | Minimization of electricity bill, energy consumption | The author proposed a joint implementation of PSO snd SOA to minimize the electricity bill and energy consumption |
Omar, A.I et al. [29] | Hybrid Optimization Model | To reduce energy consumption | The author developed a Hybrid Optimization Model to reduce the energy consumption in buildings |
Mohammed, S.S et al. [30] | Modified placement algorithm | Minimization of plug-in electric vehicle charging costs | The author implemented an interrupted charging schedule to minimize the charging costs |
Li Y et al. [31] | CPLEX solver | To maintain the balance between energy supply and demand | The author developed an integrated demand response program to maintain the balance between energy supply and demand |
Sarkar et al. [32] | Multi-setup-multi-delivery (MSMD) concept | Development of sustainable biofuel supply chain | Reduction inefficient energy affectedthe supply chain for biofuels |
Vandana et al. [33] | Two-echelon supply chain | Energy and carbon dioxide minimization | To enable the coordination of supply chain successfully with reduced CO2 emissions. |
Proposed method | Hybrid WFS2ACSO technique | Minimization of electricity bill, energy consumption, and PAR | Parameter free and convergence in fewer iterations
|
S. No. | Name of the Device | Rating of the Device (Watts) |
---|---|---|
1 | Light | 40 |
2 | Fan | 75 |
3 | TV | 100 |
4 | Charger | 7 |
5 | Washing machine | 400 |
6 | Mixie | 500 |
7 | Iron box | 750 |
8 | Grinder | 300 |
9 | Motor | 740 |
S. No. | Name of the Device | Rating of the Device (Watts) |
---|---|---|
1 | Water dispenser | 450 |
2 | Dryer | 230 |
3 | Kettle | 650 |
4 | Oven | 750 |
5 | Coffeemaker | 180 |
6 | Fan | 300 |
7 | Air conditioner | 500 |
8 | Lights | 2000 |
9 | EV charging | 700 |
S. No. | Name of the Device | Rating of the Device (Watts) |
---|---|---|
1 | Water heater | 500 |
2 | Welding machine | 1600 |
3 | Fan/AC | 750 |
4 | Air furnace | 1100 |
5 | Induction motor | 1500 |
6 | DC motor | 1000 |
7 | Water pump | 720 |
8 | Boiler | 470 |
9 | Chilling plant | 1200 |
Time (h) | Tariff(USD/Wh) |
---|---|
24–1 | 0.0865 |
1–2 | 0.0811 |
2–3 | 0.0825 |
3–4 | 0.0810 |
4–5 | 0.0814 |
5–6 | 0.0813 |
6–7 | 0.0834 |
7–8 | 0.0935 |
8–9 | 0.12 |
9–10 | 0.0919 |
10–11 | 0.1227 |
11–12 | 0.2069 |
12–13 | 0.2682 |
13–14 | 0.2735 |
14–15 | 0.1381 |
15–16 | 0.1731 |
16–17 | 0.1642 |
17–18 | 0.0983 |
18–19 | 0.0863 |
19–20 | 0.0887 |
20–21 | 0.0835 |
21–22 | 0.1644 |
22–23 | 0.1619 |
23–24 | 0.0887 |
Method | Cost of Residential Load | |||||
---|---|---|---|---|---|---|
Sunny Season | Winter Season | |||||
Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | |
WFS2ACSO (proposed) | 2689.32 | 2427.32 | 9.74 | 2663.19 | 2297.02 | 13.74 |
WFSA | 2689.32 | 2516.90 | 6.43 | 2663.19 | 2386.15 | 10.40 |
ALO [18] | 2689.32 | 2530.59 | 5.90 | 2663.19 | 2447.66 | 8.09 |
PSO [13] | 2689.32 | 2568.22 | 4.50 | 2663.19 | 2478.64 | 6.92 |
Method | Cost of Commercial Load | |||||
---|---|---|---|---|---|---|
Sunny Season | Winter Season | |||||
Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | |
WFS2ACSO (proposed) | 7301.20 | 6465.81 | 13.74 | 7034.23 | 6159.59 | 12.43 |
WFSA | 7301.20 | 6579.92 | 9.88 | 7034.23 | 6235.39 | 11.35 |
ALO [18] | 7301.20 | 6794.50 | 6.94 | 7034.23 | 6305.18 | 10.36 |
PSO [13] | 7301.20 | 6976.63 | 4.44 | 7034.23 | 6476.16 | 7.97 |
Method | Cost of Industrial Load | |||||
---|---|---|---|---|---|---|
Sunny Season | Winter Season | |||||
Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | Without DSM (USD) | With DSM (USD) | Percentage Reduction (%) | |
WFS2ACSO (proposed) | 11,853.43 | 10,259.82 | 13.44 | 10,796.65 | 9144.54 | 15.30 |
WFSA | 11,853.43 | 10,748.99 | 9.31 | 10,796.65 | 9613.93 | 10.95 |
ALO [18] | 11,853.43 | 11,211.69 | 5.41 | 10,796.65 | 9995.45 | 7.42 |
PSO [13] | 11,853.43 | 11,425.10 | 3.61 | 10,796.65 | 10,174.85 | 5.75 |
Method | Residential Load Cost | Commercial Load Cost | Industrial Load Cost | |||
---|---|---|---|---|---|---|
Sunny Season in % | Winter Season in % | Sunny Season in % | Winter Season in % | Sunny Season in % | Winter Season in % | |
WFS2ACSO (proposed) | 9.74 | 13.74 | 11.44 | 12.43 | 13.44 | 15.30 |
WFSA | 6.43 | 10.40 | 9.88 | 11.35 | 9.31 | 10.95 |
ALO [18] | 5.90 | 8.09 | 6.94 | 10.36 | 5.41 | 7.42 |
PSO [13] | 4.50 | 6.92 | 4.44 | 7.97 | 3.61 | 5.75 |
Area | Peak Load Without Applying DSM (Watts) | With Applying DSM (Watts) | Peak Deviation (Watts) | Percentage Deviation (%) |
---|---|---|---|---|
Residential | 2400 | 2300 | 100 | 4.16 |
Commercial | 4985 | 4290 | 695 | 14.01 |
Industrial | 6868 | 5487 | 1381 | 20.10 |
Area | Peak Load Without Applying DSM (Watts) | With Applying DSM (Watts) | Peak Deviation (Watts) | Percentage Deviation (%) |
---|---|---|---|---|
Residential | 2400 | 2200 | 200 | 9.09 |
Commercial | 4985 | 4290 | 695 | 14.01 |
Industrial | 6524 | 5120 | 1404 | 21.52 |
Method | Residential Load | Commercial Load | Industrial Load | |||
---|---|---|---|---|---|---|
Without Incorporation of DSM | Incorporation of DSM | Without Incorporation of DSM | Incorporation of DSM | Without Incorporation of DSM | Incorporation of DSM | |
Peak to Average Ratio (summer) | 1.924 | 1.657 | 1.854 | 1.564 | 1.754 | 1.587 |
Peak to Average Ratio (winter) | 1.684 | 1.485 | 1.784 | 1.486 | 1.871 | 1.658 |
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Venkatesh, B.; Sankaramurthy, P.; Chokkalingam, B.; Mihet-Popa, L. Managing the Demand in a Micro Grid Based on Load Shifting with Controllable Devices Using Hybrid WFS2ACSO Technique. Energies 2022, 15, 790. https://doi.org/10.3390/en15030790
Venkatesh B, Sankaramurthy P, Chokkalingam B, Mihet-Popa L. Managing the Demand in a Micro Grid Based on Load Shifting with Controllable Devices Using Hybrid WFS2ACSO Technique. Energies. 2022; 15(3):790. https://doi.org/10.3390/en15030790
Chicago/Turabian StyleVenkatesh, Banala, Padmini Sankaramurthy, Bharatiraja Chokkalingam, and Lucian Mihet-Popa. 2022. "Managing the Demand in a Micro Grid Based on Load Shifting with Controllable Devices Using Hybrid WFS2ACSO Technique" Energies 15, no. 3: 790. https://doi.org/10.3390/en15030790
APA StyleVenkatesh, B., Sankaramurthy, P., Chokkalingam, B., & Mihet-Popa, L. (2022). Managing the Demand in a Micro Grid Based on Load Shifting with Controllable Devices Using Hybrid WFS2ACSO Technique. Energies, 15(3), 790. https://doi.org/10.3390/en15030790