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Multilayer Architecture Based on HMM and SVM for Fault Classification

机译:基于HMM和SVM的多层体系结构进行故障分类

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In order to solve the problems of current machine learning in fault diagnosing system of the chemical plants, a better and effective multilayer architecture model is used in this paper. Hidden Markov Model (HMM) is good at dealing with dynamic continuous data and Support Vector Machine (SVM) shows superior performance for classification, especially for limited samples. Combining their respective virtues, we propose a new multilayer architecture model to improve classification accuracy for a fault diagnosis example. The simulation result shows that this two-level architecture framework combining HMM and SVM is better than the single HMM method in high classification accuracy with small training samples.
机译:为了解决化工厂故障诊断系统现行机器学习的问题,本文使用了更好且有效的多层架构模型。隐马尔可夫模型(HMM)良好处理动态连续数据,支持向量机(SVM)显示出卓越的分类性能,特别是对于有限的样品。结合各自的美德,我们提出了一种新的多层架构模型,以提高故障诊断示例的分类准确性。仿真结果表明,这种两级架构框架结合了HMM和SVM,比具有小型训练样本的高分类精度的单个HMM方法更好。

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