Research on Sustainable Scheduling of Cascade Reservoirs Based on Improved Crow Search Algorithm
Abstract
:1. Introduction
2. Multi-Objective Sustainable Scheduling Model of Cascade Reservoirs
2.1. Problem Description
2.2. Model Establishment
3. PSO-CSA Algorithm Design
3.1. Introduction to the Algorithm
- Multiple crow individuals form crow populations and live as populations.
- Each individual crow can remember where he or she hides their food.
- The crows in the crow population will find and steal each other’s food by tracking.
- When an individual crow being followed discovers that it is being followed, it takes steps to confuse the other party.
- Specifically, the specific process of the CSA algorithm is as follows:
3.2. Improvement Strategy
3.2.1. The Crow Flies at Variable Speed
3.2.2. Raven Spiral Update Location Strategy
3.2.3. Crow Memory Contraction Update Strategy
3.3. Improve the Specific Solution Steps of the Algorithm
4. Results and Discussion
4.1. Overview of Engineering Background
4.2. Display of Simulation Results
4.3. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Symbol | Illustrate |
---|---|
The duration of the unit period | |
scheduling period set, | |
Reservoir set, | |
The upstream water level of the reservoir during the time period | |
The downstream level of the reservoir during the time period | |
Loss of head of reservoirs within time | |
The flow rate of generators in reservoir within the time period | |
The maximum flow rate of generators in reservoir in the time period | |
The discharge rate of the reservoir | |
The flow rate of the reservoir | |
The three-year average runoff within the river section | |
The water demand of industry within the time period of the river section | |
The water demand of agriculture within the time period of the river section | |
The water demand of residents during the time period of the river section | |
The water demand of the ecological environment during the time period of the river section | |
The amount of water provided by industry in the river section during the time period of the river section | |
The amount of water provided by agriculture in the river section during the time period of the river section | |
The amount of water provided by residents in the river section during the time period of the river section | |
The amount of water provided of the ecological environment during the time period in the river section | |
Water scarcity indicator function during the time period within a river section | |
Water shortage index function of ecological environment during the time period in the river section | |
The output coefficient of the generator of the reservoir |
Month | 1 | 2 | 3 | 4 | 5 | 6 | Total | |
Reservoir | Purpose | |||||||
A | Industry | 1000 | 1012 | 1224 | 1200 | 1200 | 1500 | |
Agriculture | 509 | 500 | 2400 | 3972 | 4675 | 5825 | ||
Domestic | 85 | 90 | 90 | 100 | 115 | 115 | ||
Ecology | 75 | 88 | 90 | 115 | 167 | 199 | ||
B | Industry | 750 | 780 | 795 | 795 | 740 | 800 | |
Agriculture | 240 | 250 | 709 | 771 | 895 | 950 | ||
Domestic | 600 | 590 | 580 | 625 | 707 | 794 | ||
Ecology | 133 | 135 | 139 | 180 | 188 | 195 | ||
Month | 7 | 8 | 9 | 10 | 11 | 12 | ||
Reservoir | Purpose | Water Demand (Unit:m3) | ||||||
A | Industry | 1400 | 1500 | 1224 | 1200 | 1000 | 1344 | 14,804 |
Agriculture | 5990 | 4614 | 1200 | 1150 | 504 | 300 | 31,641 | |
Domestic | 120 | 140 | 140 | 122 | 95 | 95 | 1307 | |
Ecology | 204 | 207 | 200 | 188 | 152 | 107 | 1792 | |
B | Industry | 820 | 950 | 890 | 825 | 825 | 755 | 9725 |
Agriculture | 945 | 900 | 864 | 752 | 400 | 295 | 7972 | |
Domestic | 790 | 787 | 746 | 690 | 605 | 610 | 8124 | |
Ecology | 199 | 195 | 180 | 172 | 150 | 145 | 2011 |
Algorithm | CSA | PSO | GA | PSO-CSA |
---|---|---|---|---|
Index | Numerical Value | |||
The optimal value | 16.06 | 16.29 | 16.72 | 15.00 |
The worst value | 16.55 | 16.50 | 17.04 | 15.74 |
The average value | 16.36 | 16.45 | 16.81 | 15.48 |
Month | 1 | 2 | 3 | 4 | 5 | 6 |
---|---|---|---|---|---|---|
Reservoir | ||||||
A | 1522.7 | 1613.4 | 3559.4 | 5216.5 | 6014.5 | 7534.7 |
B | 1591.5 | 1733.2 | 2172.0 | 2208.1 | 2420.8 | 2505.0 |
Month | 7 | 8 | 9 | 10 | 11 | 12 |
Reservoir | Water Demand (Unit:m3) | |||||
A | 7063.2 | 6110.1 | 2643.3 | 2621.8 | 1732.8 | 1769.7 |
B | 2640.0 | 2791.45 | 2614.7 | 2386.9 | 1972.3 | 1723.1 |
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Liu, X.; Lu, J.; Zou, C.; Deng, B.; Liu, L.; Yan, S. Research on Sustainable Scheduling of Cascade Reservoirs Based on Improved Crow Search Algorithm. Water 2023, 15, 578. https://doi.org/10.3390/w15030578
Liu X, Lu J, Zou C, Deng B, Liu L, Yan S. Research on Sustainable Scheduling of Cascade Reservoirs Based on Improved Crow Search Algorithm. Water. 2023; 15(3):578. https://doi.org/10.3390/w15030578
Chicago/Turabian StyleLiu, Xiaoshan, Jinyou Lu, Chaowang Zou, Bo Deng, Lina Liu, and Shaofeng Yan. 2023. "Research on Sustainable Scheduling of Cascade Reservoirs Based on Improved Crow Search Algorithm" Water 15, no. 3: 578. https://doi.org/10.3390/w15030578
APA StyleLiu, X., Lu, J., Zou, C., Deng, B., Liu, L., & Yan, S. (2023). Research on Sustainable Scheduling of Cascade Reservoirs Based on Improved Crow Search Algorithm. Water, 15(3), 578. https://doi.org/10.3390/w15030578