Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam
Abstract
:1. Introduction
- Develop an improved version of SMA to improve the search performance of SMA.
- Select a real zone in Vietnam and then access the wind and solar global atlases to collect real wind speed and solar radiation. In addition, the maximum possible data are supposed to be 120% of the collected data to run uncertainty case of wind and solar.
- Apply a variety of major power plants, such as CasHP, PSHP, WPs, SPs, and ThPs, which are considered as power sources. Their operation principles and characteristics are obtained from previous studies.
- The PSMA can find better solutions and provide more stable searchability than SMA and EO for two cases: considering certain and uncertain characteristics for wind and solar power plants.
- Optimal operation solutions for the PSHP can lead to higher profits for hybrid systems with renewable energies. The total profit can be greater for the system with the PSHP when considering both certain and uncertain wind and solar power.
- For the PSHP, optimal solutions can lead to significant profits after accounting for electric purchases. The PSHP needs to buy electricity to run pumps for storing water, and then it can sell the energy generated by discharging the stored water. The difference between the sale and purchase is the profit.
- CasHPs can reach the maximum energy and it can lead to a great profit for the whole system with many power plant types.
2. The Problem Description
2.1. The Total Profit Maximization
2.2. Constraints
2.2.1. Active Power Balance
2.2.2. Generation Limits of Power Plants
2.2.3. Pumped Storage Hydropower Plant’s Hydraulic Constraints
2.2.4. Cascaded Hydropower Plants’ Constraints
3. Improved Slime Mould Algorithm
3.1. Slime Mould Algorithm
3.2. Improved Slime Mould Algorithm
4. Numerical Results
4.1. Data, Parameter Settings, and Simulation Scebnario
- (1)
- The first simulation scenario: energy maximization of the cascaded hydropower plants:Case 1: Optimization operation of each plant;Case 2: Simultaneous optimization operation of the whole plants.
- (2)
- The second simulation scenario: maximization of the total profit of the whole system.
4.2. Results of the First Simulation Scenario
4.3. Results of the Second Simulation Scenario
4.4. Discussion on the Advantages and Disadvantages
5. Conclusions
- For the one-day energy of the cascaded hydropower plants, ISMA reached greater energy than EO and SMA by 35.92 MWh (0.96%) and 4.62 MWh (0.122%) for the simultaneous operation, and 6.43 MWh (0.164%) and 1.05 MWh (0.027%) for the separate operation.
- For the whole system’s profit, ISMA could reach a greater total profit than EO and SMA by USD 6007.5 (0.12%) and USD 650.5 (0.013%).
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Total profit of the whole system | |
Total electricity sale revenue | |
Total electricity generation cost | |
, | Load demand and electric price at the hth hour |
, | Power of the spth solar power plant and wth wind power plant at the hth hour |
Power of the casth cascaded power plant at the hth hour | |
, | Generation and pump power of the psth pumped storage hydropower plant |
Minimum and maximum generation limits of the thth thermal power plant | |
Minimum and maximum generation limits of the spth solar power plant | |
Minimum and maximum generation limits of the wth wind power plant | |
Minimum and maximum generation limits of the casth cascaded hydropower plant | |
Minimum and maximum generation limits of the psth pumped storage hydropower plant | |
The psth PSHP’s reservoir volume and discharge at the hth hour | |
The psth PSHP’s minimum and maximum reservoir volumes | |
The psth PSHP’s minimum and maximum discharges | |
The psth PSHP’s coefficients in discharge function | |
The psth PSHP’s inflow at the hth hour | |
The psth PSHP’s water storage efficiency | |
| Coefficients in power output function of the casth CasHP |
, | The casth CasHP’s reservoir volume and discharge at the hth hour |
The casth CasHP’s inflow at the hth hour | |
The new and old xth control variable in the yth solution | |
The random number within 0 and 1 | |
Fitness value of the yth and the best solutions | |
| The xth control variable in three randomly selected solutions |
The xth control variable in the best solution | |
the current and maximum iteration numbers | |
The worst solution’s fitness | |
Number of solutions or population size | |
The xth control variable randomly selected in the four best solutions |
Appendix A
th | |||||
---|---|---|---|---|---|
1 | 38.5 | 7.959 | 0.0127 | 50 | 1000 |
2 | 39 | 7.8 | 0.0135 | 50 | 1000 |
3 | 35 | 7.4 | 0.0142 | 50 | 1000 |
4 | 36 | 7.6 | 0.0143 | 50 | 1000 |
h | (th = 1) | (th = 2) | (th = 3) | (th = 4) | (w = 1) | (sp = 1) | (ps = 1) | (ps = 1) |
---|---|---|---|---|---|---|---|---|
1 | 236.51 | 225.24 | 234.38 | 217.14 | 50.42 | 0.00 | 0.00 | −300.00 |
2 | 240.93 | 227.27 | 227.87 | 226.88 | 46.40 | 0.00 | 0.00 | −300.00 |
3 | 233.84 | 225.82 | 238.36 | 221.12 | 45.12 | 0.00 | 0.00 | −300.00 |
4 | 235.68 | 226.29 | 236.94 | 217.69 | 45.12 | 0.00 | 0.00 | −300.00 |
5 | 341.05 | 327.89 | 322.39 | 320.77 | 46.40 | 0.00 | 0.00 | −300.00 |
6 | 342.51 | 318.14 | 324.27 | 321.35 | 49.06 | 1.01 | 0.00 | −300.00 |
7 | 843.62 | 796.28 | 776.71 | 765.58 | 51.81 | 18.10 | 0.00 | 0.00 |
8 | 762.84 | 729.79 | 699.98 | 691.31 | 49.06 | 49.60 | 267.68 | 0.00 |
9 | 802.53 | 757.44 | 727.04 | 725.24 | 53.22 | 80.82 | 300.00 | 0.00 |
10 | 866.87 | 825.57 | 797.89 | 781.57 | 65.46 | 106.64 | 0.00 | 0.00 |
11 | 855.24 | 812.89 | 783.02 | 777.58 | 87.12 | 125.29 | 0.00 | 0.00 |
12 | 804.08 | 767.77 | 741.10 | 725.04 | 110.77 | 134.31 | 155.68 | 0.00 |
13 | 762.50 | 722.87 | 701.76 | 688.43 | 127.84 | 133.89 | 299.38 | 0.00 |
14 | 760.98 | 720.29 | 703.61 | 694.09 | 138.35 | 123.54 | 291.76 | 0.00 |
15 | 771.23 | 729.18 | 711.64 | 695.04 | 143.81 | 103.45 | 272.74 | 0.00 |
16 | 927.48 | 879.32 | 853.25 | 839.84 | 146.59 | 73.91 | 0.00 | −300.00 |
17 | 859.88 | 815.26 | 785.28 | 773.73 | 146.59 | 38.81 | 0.00 | 0.00 |
18 | 763.69 | 716.82 | 703.63 | 688.06 | 138.35 | 6.76 | 0.00 | 0.00 |
19 | 730.23 | 694.42 | 676.96 | 661.29 | 117.89 | 0.00 | 130.98 | 0.00 |
20 | 734.71 | 688.88 | 668.91 | 659.80 | 95.28 | 0.00 | 163.82 | 0.00 |
21 | 721.41 | 686.83 | 660.51 | 647.79 | 75.77 | 0.00 | 217.96 | 0.00 |
22 | 269.25 | 259.14 | 258.56 | 256.86 | 65.38 | 0.00 | 0.00 | −300.00 |
23 | 274.27 | 262.64 | 257.51 | 259.54 | 60.67 | 0.00 | 0.00 | −300.00 |
24 | 277.17 | 264.37 | 264.72 | 257.66 | 56.12 | 0 | 0 | −300.00 |
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Ha, P.T.; Tran, D.T.; Phan, T.M.; Nguyen, T.T. Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam. Sustainability 2024, 16, 6581. https://doi.org/10.3390/su16156581
Ha PT, Tran DT, Phan TM, Nguyen TT. Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam. Sustainability. 2024; 16(15):6581. https://doi.org/10.3390/su16156581
Chicago/Turabian StyleHa, Phu Trieu, Dao Trong Tran, Tan Minh Phan, and Thang Trung Nguyen. 2024. "Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam" Sustainability 16, no. 15: 6581. https://doi.org/10.3390/su16156581
APA StyleHa, P. T., Tran, D. T., Phan, T. M., & Nguyen, T. T. (2024). Maximization of Total Profit for Hybrid Hydro-Thermal-Wind-Solar Power Systems Considering Pumped Storage, Cascaded Systems, and Renewable Energy Uncertainty in a Real Zone, Vietnam. Sustainability, 16(15), 6581. https://doi.org/10.3390/su16156581