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Self-adaptive evolutionary programming and its application to multi-objective optimal operation of power systems

机译:自适应进化规划及其在电力系统多目标优化中的应用

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This paper proposes a new algorithm to solve multi-objective optimal operation of power systems problem. The algorithm is based on combination of general evolutionary programming and random search technique. The algorithm includes two important procedures. First, a new pattern of mutation is developed in this paper. Secondly, the developed mutation operator is self-adaptive during optimization. Furthermore, in a multi-objective optimal operation study four objectives (cost of generation with valve point loading, transmission losses, environmental pollution and steady-state security regions) are considered for optimization, and an ideal point method is used to solve the problem. The proposed algorithm is tested on the IEEE six-bus and 30-bus systems. Numerical results and comparison demonstrate that the new method not only can deal agilely with constraints, but also can Reduce the CPU time and prevent the search from being in local optima.
机译:提出了一种解决电力系统多目标最优运行问题的算法。该算法基于通用进化规划和随机搜索技术的结合。该算法包括两个重要过程。首先,本文提出了一种新的突变模式。其次,开发的变异算子在优化过程中是自适应的。此外,在多目标最优运行研究中,要考虑四个目标(带阀点负载的发电成本,传输损失,环境污染和稳态安全区域),并使用理想点方法解决该问题。该算法在IEEE六总线和30总线系统上进行了测试。数值结果和比较表明,该方法不仅可以灵活处理约束,而且可以减少CPU时间,防止搜索处于局部最优状态。

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