基于BP网络的特征权值推理方法

Yan Peng, Like Zhuang
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引用次数: 15

摘要

基于案例的推理(CBR)是一种在复杂多变的环境中解决问题和做出决策的方法。本文研究了一种基于案例的混合推理方法的性能,该方法将多层BP神经网络与基于案例的推理(CBR)算法相结合,用于衍生特征权重。将该方法应用于故障检测与诊断(FDD)系统中,该系统涉及多个检测标准。正确识别故障的潜在机制是整个故障分析过程中的重要一步。训练后的BP神经网络为获取属性权值提供基础,CBR作为分类器识别故障机制。通过改变杂交方法的不同参数来研究其效果。结果表明,该混合方法比单独使用常规CBR具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Case-based Reasoning with Feature Weights Derived by BP Network
Case-based reasoning (CBR) is a methodology for problem solving and decision-making in complex and changing environments. This study investigates the performance of a hybrid case-based reasoning method that integrates a multi-layer BP neural network with case-based reasoning (CBR) algorithms for derivatives feature weights. This approach is applied to fault detection and diagnosis (FDD) system involves the examination of several criteria. The correct identification of the underlying mechanism of a fault is an important step in the entire fault analysis process. The trained BP neural network provides the basis to obtain attribute weights, whereas CBR serves as a classifier to identify the fault mechanism. Different parameters of the hybrid methods were varied to study their effect. The results indicate that better performance could be achieved by the proposed hybrid method than that using conventional CBR alone.
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