基于改进遗传聚类的往复式压缩机气门机构故障检测

Gang Li, Wukui Cheng, Qinghua Wang, Jian Zhuang
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引用次数: 2

摘要

采用多传感器监测往复压缩机工况时,数据分布不规律。传统的方法很难处理。本文采用一种改进的基于遗传算法的聚类方法来解决这一问题。首先,利用基于原型的遗传表示,其中每条染色体是一组正整数,代表k-媒质的特定序列号。采用基于测地线距离的接近度量来度量数据点之间的相似度。为了提高算法的搜索性能,可以根据种群适应度分布的信息熵动态调整交叉和突变的概率。将该算法应用于某两级往复式压缩机进气门机构泄漏故障情况的检测。实验结果证明了该算法作为聚类技术的有效性。与用于聚类任务的一般K-means算法相比,该算法具有识别复杂非凸聚类的能力,对于复杂流形结构的聚类性能明显优于K-means算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Genetic Clustering-Based Fault Detection for Reciprocation Compressor Valve Train
There is an irregular data distribution when using multi-sensor to monitor reciprocating compressor conditions. It is difficult to deal with conventional approaches. In this paper an improved genetic algorithm based clustering method is used to solve the problem. First a prototype-based genetic representation is utilized, where each chromosome is a set of positive integer numbers that represent a specific sequence number of the k-medoids. A geodesic distance based proximity measures is adopted to measure the similarity among data points. To improve the algorithm searching performance, the probabilities of crossover and mutation can be dynamically adjusted based on the information entropy of population fitness distribution. We apply the algorithm to detect fault conditions of inlet valve train leakage in a two-stage reciprocating compressor. Experimental results demonstrate the effectiveness of the algorithm as a clustering technique. Compared with generic K-means algorithm for clustering task, the presented algorithm has the ability to identify complicated non-convex clusters and its clustering performance is clearly better than that of the K-means algorithm for complex manifold structures.
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