梯度下降改进的 QGA 算法在分布式配电网故障诊断和定位中的应用

Fan Yang, Jiawen Chen, Jinyang Li, Zhichun Yang, Yanchun Cao
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引用次数: 0

摘要

利用升级的量子遗传算法创建了分布式配电网络的故障诊断和定位方法,以迅速识别和检测网络中的缺陷。该方法利用梯度下降法中的动态旋转策略更新量子门,提高了收敛速度,即构建了梯度下降量子遗传算法。在分布式电源区域节点配电网模型上进行的单故障和多故障模拟试验结果表明,梯度下降量子遗传算法平均迭代 85.36 次、86.35 次、88.24 次和 88.69 次均能达到目标最优值。在四种不同情况下,梯度下降量子遗传算法分别迭代 88 次、91 次、92 次和 90 次即可达到最优值。与其他算法相比,梯度下降量子遗传算法在四个实验案例中的收敛速度最快。梯度下降量子遗传算法的输出得分与实际得分的一致性在 0.9 以上。上述结果表明该算法是有效的。该算法的优化能力和稳定性也较强,具有一定的应用潜力。
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Application of QGA algorithm improved by gradient descent in fault diagnosis and location of distributed distribution network
A fault diagnosis and localization approach for distributed distribution networks is created using an upgraded quantum genetic algorithm to swiftly identify and detect flaws in the network. In this method, the dynamic rotation strategy in gradient descent method is used to update the quantum gate to enhance the convergence speed, that is, the gradient descent quantum genetic algorithm is constructed. The results of single fault and multiple fault simulation test on the distribution network model of regional node of distributed power supply show that the average iteration of gradient descent quantum genetic algorithm 85.36, 86.35, 88.24, and 88.69 times can reach the target optimal value. In four different cases, the algorithm of gradient descent quantum genetic algorithm can reach the optimal by iterating 88, 91, 92, and 90 times, respectively. Compared with other algorithms, the convergence rate of gradient descent quantum genetic algorithm is the fastest in the four experimental cases. The consistency between the output score and the real score of the gradient descent quantum genetic algorithm is above 0.9. The results above show that the algorithm is effective. The optimization ability and stability of the algorithm are also stronger, and it has certain application potential.
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