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Using a hybrid genetic algorithm-simulated annealing algorithm for fuzzy programming of reservoir operation

机译:使用混合遗传algorithm-simulated退火算法对模糊编程水库操作

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We present a novel approach for optimizing reservoir operation through fuzzy programming and a hybrid evolution algorithm, i.e. genetic algorithm (GA) with simulated annealing (SA). In the analysis, objectives and constraints of reservoir operation are transformed by fuzzy programming for searching the optimal degree of satisfaction. In the hybrid search procedure, the GA provides a global search and the SA algorithm provides local search. This approach was investigated to search the optimizing operation scheme of Shihmen Reservoir in Taiwan. Monthly inflow data for three years reflecting different hydrological conditions and a consecutive 10-year period were used. Comparisons were made with the existing M-5 reservoir operation rules. The results demonstrate that: (1) fuzzy programming could effectively formulate the reservoir operation scheme into degree of satisfaction α among the users and constraints; (2) the hybrid GA-SA performed much better than the current M-5 operating rules. Analysis also found the hybrid GA-SA conducts parallel analyses that increase the probability of finding an optimal solution while reducing computation time for reservoir operation.
机译:提出了一种优化的新途径水库通过模糊编程和操作混合进化算法,即遗传与模拟退火算法(SA)。分析,目标和约束的水库操作由模糊转换编程搜索最优的程度的满意度。遗传算法提供了一个全球搜索和SA算法提供本地搜索。调查搜索优化操作计划在台湾Shihmen水库。三年流入的数据反映出不同水文条件和连续10年期使用。现有M-5水库操作规则。结果表明:(1)模糊编程能有效地制定水库吗操作方案满意度α在用户和约束;比当前M-5 GA-SA要好得多操作规则。GA-SA进行并行分析增加找到一个最优解的概率同时为水库减少计算时间操作。

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