遗传算法在电压优化中的应用

T. Haida, Y. Akimoto
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引用次数: 28

摘要

作者考虑使用遗传算法作为电力系统电压优化的一种措施。遗传算法是基于自然选择和自然群体遗传学的优化和学习技术。电力系统的形成被编码为一串被称为人工染色体的字符,随机生成初始字符串,然后通过遗传算法进行进化。给出了样机实现的实验结果。这些结果验证了遗传算法方法在电力工程中的可行性。
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Genetic algorithms approach to voltage optimization
The authors consider the use of genetic algorithms as a measure of voltage optimization of electric power system. Genetic algorithms are optimization and learning techniques based on natural selection and natural population genetics. A formation of a power system is encoded to a string of characters called an artificial chromosome the initial population of strings are generated at random, and then they are evolved by a genetic algorithm. The experiments with the prototype implementation are presented. These results verified the feasibility of genetic algorithms approach to power engineering.<>
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