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Fuzzy Neural Network based Voltage Security Assessment with Structure and Weight Initialization

机译:具有结构和权重初始化的基于模糊神经网络的电压安全评估

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摘要

The main objective of power system planning and operation is to maintain the system security while fulfilling certain constraints and contingencies. With the global trend towards deregulation, the frequency and complexity of security checks are increasing in order to accommodate the market trends. If the system is found to be insecure, timely corrective measures need to he taken to prevent system collapse. The paper proposes a fuzzy neural network (FNN) based approach for voltage security assessment employing a severity index, based on bus voltage violations for accurate prediction of the system state. Conventional artificial neural network (ANN) presents an opaque structure to the user without giving any insight to the output generation process. A method based on fuzzy curves has been employed to determine significant inputs, to initialize the structure, initial weights and rules for the security assessment problem from the input-output data of the system. Once properly initialized, the FNN trains much faster as compared to an ANN. The effectiveness of the proposed method has been demonstrated on IEEE 30-bus system.
机译:电力系统规划和运行的主要目标是在满足某些约束和突发事件的同时保持系统安全性。随着全球放松管制的趋势,为了适应市场趋势,安全检查的频率和复杂性都在增加。如果发现系统不安全,则需要及时采取纠正措施以防止系统崩溃。本文提出了一种基于模糊神经网络(FNN)的电压安全性评估方法,该方法使用严重性指标,基于总线电压违规,可准确预测系统状态。常规的人工神经网络(ANN)向用户呈现了不透明的结构,而对输出生成过程没有任何了解。已经采用了一种基于模糊曲线的方法来确定重要的输入,以根据系统的输入输出数据初始化安全评估问题的结构,初始权重和规则。正确初始化后,与人工神经网络相比,FNN的训练速度要快得多。该方法的有效性已经在IEEE 30总线系统上得到了证明。

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