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Chaos Synchronization-Based Detector for Power-Quality Disturbances Classification in a Power System

机译:基于混沌同步的电力系统电能质量扰动检测器

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摘要

This paper proposes a chaos synchronization (CS)-based detector for power-quality disturbances classification in a power system. The Lorenz chaos system realized a CS-based detector to track the dynamic errors from the fundamental signal and the distorted signal, including power harmonics and voltage fluctuation phenomena. A CS-based detector uses dynamic error equations to extract the features and construct various butterfly patterns. The probabilistic neural network is an adaptive classifier that performs pattern recognition. The particle swarm optimization algorithm is used to estimate the optimal parameter and can heighten the accuracy. For a sample power system, the test results showed accurate discrimination, rapid learning, good robustness, and faster processing time for detecting disturbances.
机译:本文提出了一种基于混沌同步(CS)的检测器,用于电力系统中的电能质量扰动分类。 Lorenz混沌系统实现了基于CS的检测器,可跟踪基波信号和失真信号的动态误差,包括功率谐波和电压波动现象。基于CS的检测器使用动态误差方程来提取特征并构造各种蝶形图案。概率神经网络是执行模式识别的自适应分类器。粒子群优化算法用于估计最优参数,可以提高精度。对于一个示例电源系统,测试结果显示出准确的判别力,快速的学习能力,良好的鲁棒性以及更快的检测干扰的处理时间。

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