Pulverizing system fault diagnosis based on least square support vector machine

Song M. Jiao
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引用次数: 1

Abstract

Least square support vector machine is an excellent algorithm which can be used to model and classify. If appropriate mapping functions and parameters are selected, the result should be better. An improved particle swarm optimization with changeable inertia parameter and velocity weight is present and then it is used to search better parameter to optimize support vector machine which are used to diagnose faults existed in coal powder producing process. Simulation results show that the improved PSO has higher search precision and global search ability and the faults diagnosis algorithm coupled PSO and LS-SVM has higher diagnosis accuracy rate. This diagnosis is reasonable and applicable.
基于最小二乘支持向量机的制粉系统故障诊断
最小二乘支持向量机是一种很好的建模和分类算法。如果选择合适的映射函数和参数,效果会更好。提出了一种改变惯性参数和速度权值的改进粒子群优化方法,并利用该方法搜索更好的参数来优化支持向量机,用于煤粉生产过程故障诊断。仿真结果表明,改进粒子群算法具有更高的搜索精度和全局搜索能力,粒子群算法与LS-SVM相结合的故障诊断算法具有更高的诊断准确率。这种诊断是合理和适用的。
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