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

机译:基于模糊神经网络规则生成的电能质量事件模式识别

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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:本文介绍了时间序列数据的模式识别以及随后使用多分辨率S变换和模糊多层感知器网络(Fuzzy MLP)在配电网络中频繁发生的功率信号扰动事件的时间数据挖掘。多重分辨率S变换产生相关的特征,这些特征在Fuzzy Expert系统中用于分离瞬态时间序列数据和稳态短期持续时间序列数据,包括各种谐波时间序列。然后将瞬态时间序列数据通过Fuzzy MLP,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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