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A Study on SVM Based on the Weighted Elitist Teaching-Learning-Based Optimization and Application in the Fault Diagnosis of Chemical Process

机译:基于加权精英学习优化的支持向量机研究及其在化工过程故障诊断中的应用

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Teaching-Learning-Based Optimization (TLBO) is a new swarm intelligence optimization algorithm that simulates the class learning process. According to such problems of the traditional TLBO as low optimizing efficiency and poor stability, this paper proposes an improved TLBO algorithm mainly by introducing the elite thought in TLBO and adopting different inertia weight decreasing strategies for elite and ordinary individuals of the teacher stage and the student stage. In this paper, the validity of the improved TLBO is verified by the optimizations of several typical test functions and the SVM optimized by the weighted elitist TLBO is used in the diagnosis and classification of common failure data of the TE chemical process. Compared with the SVM combining other traditional optimizing methods, the SVM optimized by the weighted elitist TLBO has a certain improvement in the accuracy of fault diagnosis and classification.Key words: TLBO algorithm / support vector machine / fault diagnosis / TE chemical process
机译:基于教学的学习优化(TLBO)是一种新的群体智能优化算法,用于模拟课堂学习过程。针对传统TLBO优化效率低,稳定性差的问题,提出了一种改进的TLBO算法,主要是通过引入TLBO中的精英思想,针对教师阶段和学生阶段的精英和普通个体采用不同的惯性权重降低策略。阶段。本文通过对几种典型测试函数的优化验证了改进后的TLBO的有效性,并通过加权精英TLBO优化的SVM用于TE化工过程中常见故障数据的诊断和分类。与结合其他传统优化方法的支持向量机相比,加权精英TLBO优化的支持向量机在故障诊断和分类的准确性上有一定的提高。关键词:TLBO算法/支持向量机/故障诊断/ TE化学过程

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