Robustness analysis of PCA-SVM model used for fault detection in supermarket refrigeration systems *

Z. Soltani, Kresten Kjaer Soerensen, J. Leth, Jan Dimon Bendtsen
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引用次数: 2

Abstract

Supermarket refrigeration systems represent an important type of energy demanding appliances, which is in such widespread use that any development in the associated technology can have a huge impact on general health and global warming. Using automatic fault detection and diagnosis may for instance improve energy efficiency and reduce food waste as well as reduce expenses for the supermarket owners. In this paper, three model-free classification algorithms are tested on faulty/non-faulty data obtained from an actual refrigeration system. It is found that support vector machines (SVM) are able to classify fan faults in a real refrigeration system with near-100% classification accuracy, independent of the number of input variables. The classification performance and robustness against an unseen operation mode, low-resolution data, noisy data, and data of different operating points is tested for three different classifier configurations. The results show Principle Component Analysis (PCA)-SVM is highly robust to different operating points, disturbances, and gives the best computational efficiency, as it is able to reduce the feature space to only two dimensions. It is concluded that while all of the examined methods are insensitive to noise, and effective in terms of detecting faults from relatively small amounts of data, overall, PCA -SVM is slightly more computationally efficient.
超市制冷系统故障检测的PCA-SVM模型鲁棒性分析*
超市制冷系统是一种重要的耗能电器,它的使用如此广泛,以至于相关技术的任何发展都可能对一般健康和全球变暖产生巨大影响。例如,使用自动故障检测和诊断可以提高能源效率,减少食物浪费,并减少超市老板的开支。本文针对实际制冷系统的故障/非故障数据,对三种无模型分类算法进行了测试。研究发现,支持向量机对实际制冷系统中风机故障的分类准确率接近100%,与输入变量的数量无关。在三种不同的分类器配置下,对未见运行模式、低分辨率数据、噪声数据和不同工作点数据的分类性能和鲁棒性进行了测试。结果表明,主成分分析(PCA)-支持向量机(svm)对不同的操作点、干扰具有很强的鲁棒性,并能将特征空间压缩到二维,从而获得最佳的计算效率。结论是,虽然所有检测的方法都对噪声不敏感,并且在从相对少量的数据中检测故障方面有效,但总体而言,PCA -SVM的计算效率略高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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