Application of Improved MAGA to Water Pollution Control System Planning

Dong Qian-jin, Lu Fan, Y. Deng-hua
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引用次数: 2

Abstract

Combining the ability of apperception and counteractive to environment of agent with search method of genetic algorithm, an improved multi-agent genetic algorithm (MAGA) is advanced. It ensures diversity of population and improves local search ability of genetic algorithm by simulating competition, cooperate and self-learning of different agents using neighboring cross operator, aberrance operator and self-learning operator of agent. The algorithm is applied to the optimal planning for the waste treatment system of Urumqi, Xinjiang. Results show an improved performance in finding the global minimum when water quality requirements have been fulfilled. The result demonstrates nicer performance and factual value of improved MAGA.
改进MAGA在水污染控制系统规划中的应用
将智能体的统觉能力和对环境的对抗能力与遗传算法的搜索方法相结合,提出了一种改进的多智能体遗传算法。利用相邻交叉算子、异常算子和智能体自学习算子模拟不同智能体的竞争、合作和自学习,保证了种群的多样性,提高了遗传算法的局部搜索能力。将该算法应用于新疆乌鲁木齐市垃圾处理系统的优化规划。结果表明,在满足水质要求时,寻找全局最小值的性能有所提高。结果表明,改进后的MAGA具有更好的性能和实际价值。
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