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A Maximum Entropy Based Approach to Fault Diagnosis Using Discrete and Continuous Features

机译:基于最大熵的离散和连续特征故障诊断方法

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摘要

This paper presents a new maximum entropy (ME) based hybrid inference engine to improve the accuracy of diagnostic decisions using mixed continuous-discrete variables. By fusing the complementary fault information provided by discrete and continuous fault features, false alarms due to misclassification and modeling uncertainty can be significantly reduced. Simulation results using a three-tank benchmark system have clearly illustrated the advantages of diagnostics based on mixed continuous-discrete variables. Moreover, in the presence of significant measurement noise, simulation results show that the proposed ME method achieves better performance than the support vector machine classifier.
机译:本文提出了一种新的基于最大熵(ME)的混合推理引擎,以提高使用混合连续离散变量进行诊断决策的准确性。通过融合离散和连续故障特征提供的补充故障信息,可以大大减少由于分类错误和建模不确定性而引起的误报。使用三罐基准系统的仿真结果清楚地说明了基于混合连续离散变量的诊断的优势。此外,在存在大量测量噪声的情况下,仿真结果表明,所提出的ME方法比支持向量机分类器具有更好的性能。

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