Hardware Friendly Neural Network for the PD Classification

C. Gianoglio, F. Guastavino, E. Ragusa, A. Bruzzone, E. Torello
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引用次数: 4

Abstract

Ahstract-In order to recognize on-line different kind of defects where partial discharges take place it is necessary to employ an embedded acquisition system, possibly low-cost, near to the discharges site. Such acquisition system should be capable to analyze the acquired data in real time to recognize different defect sources. For this reason, a single hidden-layer feedforward neural network (SLFN) is presented in this work. Such neural network inherits the approach adopted by the Extreme Learning Machine (ELM), but its activation functions are based on hardware friendly step (hard-limit) function. This facilitates the hardware resources optimization. In order to show the effectiveness of this solution different kind of PDs signals have been acquired. Once the data have been available, they have been divided in two sets: training and test. The training data have been used off-line to construct the model. Therefore the test data have been used on-line to perform the neural network. Moreover a comparison, in term of generalization error, between the classic ELM (based on complex activation functions, e.g. sigmoid), the Support Vector Machine (SVM) and the digital realization has been analyzed and showed. The results demonstrate how a simple algorithm as a single layer feedforward neural network is able to distinguish different kind of PDs using limited resources. Eventually the occupation area is shown on different low-cost devices varying the number of neurons in the hidden layer. The new ELM digital implementation is able to achieve good results, in term of generalization error when involved in supervised problems recognizing different kind of PD activity. These results are comparable to the ones obtainable by mean of standard ELM and SVM.
PD分类的硬件友好神经网络
摘要:为了在线识别发生局部放电的各种缺陷,有必要在放电点附近采用低成本的嵌入式采集系统。该采集系统应能够实时分析采集到的数据,识别不同的缺陷来源。为此,本文提出了一种单隐层前馈神经网络(SLFN)。该神经网络继承了极限学习机(ELM)的方法,但其激活函数是基于硬件友好步长(硬限制)函数。这有利于硬件资源的优化。为了证明该方法的有效性,本文还采集了不同类型的pd信号。一旦数据可用,它们就被分为两组:训练和测试。离线使用训练数据来构建模型。因此,将测试数据用于在线执行神经网络。此外,从泛化误差方面比较了经典的ELM(基于复数激活函数,如sigmoid)和支持向量机(SVM)以及数字实现。结果表明,作为单层前馈神经网络的简单算法如何能够在有限的资源下区分不同类型的pd。最终,占用区域显示在不同的低成本设备上,改变隐藏层中神经元的数量。当涉及到识别不同类型PD活动的监督问题时,新的ELM数字实现能够在泛化误差方面取得良好的效果。这些结果与使用标准ELM和SVM方法得到的结果相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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