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Pattern recognition of power quality events using Fuzzy neural network based rule generation

机译:基于模糊神经网络的规则生成模式识别电能质量事件

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This paper presents pattern recognition of time series data and subsequent temporal data mining of power signal disturbance events that occur frequently in power distribution networks using multiresolution S-transform and Fuzzy Multilayer Perceptron network (Fuzzy MLP). The muliresolution S-transform yields relevant features, which are used in a Fuzzy expert system to separate the transient time series data and steady state short-term duration time series data including various harmonic time series. The transient time series data is then passed through the Fuzzy MLP to yield a set of rules required for recognition of various transient disturbance patterns (power quality events).
机译:本文介绍了使用多分辨率S变换和模糊多层Perceptron网络(模糊MLP)的功率配电网络中经常发生的功率信号干扰事件的时间序列数据和随后的时间数据挖掘。 MulireSolution S-Dramons产生相关特征,其用于模糊专家系统,以分离包括各种谐波时间序列的瞬态时间序列数据和稳态短期持续时间序列数据。 然后通过模糊MLP传递瞬态时间序列数据,以产生识别各种瞬态干扰模式(电能质量事件)所需的一组规则。

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