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Optimized Neural Network Parameters Using Stochastic Fractal Technique to Compensate Kalman Filter for Power System-Tracking-State Estimation

机译:基于随机分形技术的神经网络参数优化补偿卡尔曼滤波器,用于电力系统跟踪状态估计

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摘要

Tracking-state estimation uses previous state vector and recent measurement data to give real-time update on the state of the power system noniteratively during the subsequent time sampling. This paper discusses Kalman filtering enhanced by optimized neural network parameters-based stochastic fractals search technique (KF-MLP-based SFS). Both KF gain (mismodeling error) and measurement noise were replaced by optimized multilayer perceptron (MLP-SFS). This optimized MLP-based SFS could suppress filter divergence and improve the accuracy. The proposed method was used to detect and identify anomalies exhibited in normal operation where loads fluctuate linearly, bad data condition, sudden loss of loads, generators, and transmission lines. The application of the proposed technique (KF-MLP-based SFS) is illustrated on the IEEE 57-bus system. Results of the presented approach are compared to the true state vector (load flow), KF standalone, and KF compensated by radial basis function.
机译:跟踪状态估计使用先前的状态向量和最新的测量数据来在后续的时间采样过程中反复迭代地实时更新电力系统的状态。本文讨论了基于优化神经网络参数的随机分形搜索技术(基于KF-MLP的SFS)增强的卡尔曼滤波。优化的多层感知器(MLP-SFS)替代了KF增益(模型错误)和测量噪声。经过优化的基于MLP的SFS可以抑制滤波器发散并提高精度。所提出的方法用于检测和识别正常运行中出现的异常,其中负载线性波动,不良数据条件,负载突然丢失,发电机和传输线。在IEEE 57总线系统上说明了所建议的技术(基于KF-MLP的SFS)的应用。所提出的方法的结果与真实状态矢量(潮流),KF独立模型以及通过径向基函数补偿的KF进行了比较。

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