Application of an Improved Particle Swarm Optimization for Fault Diagnosis

Chu-jiao Wang, Shi-Xiong Xia
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Abstract

In this paper, the feasibility of using probabilistic causal-effect model is studied and we apply it in particle swarm optimization algorithm (PSO) to classify the faults of mine hoist. In order to enhance the PSO performance, we propose the probability function to nonlinearly map the data into a feature space in probabilistic causal-effect model, and with it, fault diagnosis is simplified into optimization problem from the original complex feature set. The proposed approach is applied to fault diagnosis, and our implementation has the advantages of being general, robust, and scalable. The raw datasets obtained from mine hoist system are preprocessed and used to generate networks fault diagnosis for the system. We studied the performance of the improved PSO algorithm and generated a Probabilistic Causal-effect network that can detect faults in the test data successfully. It can get ≫90% minimal diagnosis with cardinal number of fault symptom sets greater than 25.
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改进粒子群算法在故障诊断中的应用
本文研究了概率因果模型在矿井提升机故障分类中的可行性,并将其应用于粒子群优化算法中。为了提高粒子群算法的性能,在概率因果模型中提出了概率函数将数据非线性映射到特征空间,从而将故障诊断从原始的复杂特征集简化为优化问题。将该方法应用于故障诊断,实现具有通用性、鲁棒性和可扩展性等优点。对矿井提升机系统的原始数据集进行预处理,用于系统的网络故障诊断。研究了改进的粒子群算法的性能,生成了一个能够成功检测测试数据故障的概率因果网络。当故障症状集基数大于25时,可以得到< 90%的最小诊断率。
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