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An improved genetic algorithm based on fuzzy inference theory and its application in distribution network fault location

机译:基于模糊推理理论的改进遗传算法及其在配电网故障定位中的应用

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An improved genetic algorithm based on fuzzy inference theory is proposed in this paper, which is applied in faulty location of distribution network. This algorithm improves the problem of faulty operation caused by the distorted signal transmission in traditional faulty location method and the problem of premature convergence and slow convergence speed of standard genetic algorithm. Firstly, a mathematical model for fault location of distribution network is established by the switching function which contains multivariate equality constraints. On this basis, the improved genetic algorithm adopts optimal individual reserve strategy in selection operation and combines adaptive strategy with fuzzy inference theory to calculate cross-over operator and mutation operator, which improves the ability of search to avoid premature convergence. Finally, simulated annealing algorithm is integrated in the algorithm to accelerate the convergence speed. The simulation examples proposed in the paper verify the accuracy and effectiveness of the improved genetic algorithm applied in fault location of distribution network.
机译:提出了一种基于模糊推理理论的改进遗传算法,用于配电网故障定位。该算法改善了传统故障定位方法中由于信号传输失真引起的故障操作问题,改善了标准遗传算法的过早收敛和收敛速度慢的问题。首先,通过包含多元等式约束的切换函数,建立了配电网故障定位的数学模型。在此基础上,改进的遗传算法在选择操作中采用最优的个体后备策略,将自适应策略与模糊推理理论相结合,计算出交叉算子和变异算子,提高了搜索避免过早收敛的能力。最后,将模拟退火算法集成到算法中以加快收敛速度​​。文中提出的仿真实例验证了改进遗传算法在配电网故障定位中的准确性和有效性。

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