Health assessment of water pumps using high-dimensional monitoring data

Gong Chen, Lei Wang, Haoming Yang, Peifeng Wang, Jun Wei, Jianguo Bao
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Abstract

Abstract With the development of IoT monitoring equipment, an increasing number of monitoring indicators are employed to monitor the operational status of water pumps, thereby resulting in the challenge of data redundancy. This paper proposes an algorithm for predicting the health status of pumps that integrates multiple monitoring variables. Initially, the original dataset is classified using the maximum relevance minimum redundancy method. Next, principal component dimensionality reduction is used to reduce the dimensionality of the classified dataset. Finally, a long and short term memory neural network is employed to construct the association model between monitoring data and equipment health. The proposed algorithm takes into account the correlation between variables and the negative impacts of long-term dependence on the prediction results. It is capable of predicting abnormal working conditions, which has been experimentally verified in the Xiasha Pumping Station located in Hangzhou. The algorithm was compared with LR, SVM, and RNN algorithms, and it was found that the proposed algorithm achieved the highest prediction accuracy.
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基于高维监测数据的水泵健康评价
随着物联网监控设备的发展,越来越多的监控指标被用来监控水泵的运行状态,从而带来了数据冗余的挑战。提出了一种综合多个监测变量的泵健康状态预测算法。首先,使用最大相关最小冗余方法对原始数据集进行分类。其次,使用主成分降维来降低分类数据集的维数。最后,利用长短期记忆神经网络构建监测数据与设备健康状况的关联模型。该算法考虑了变量之间的相关性以及长期依赖对预测结果的负面影响。该方法具有预测异常工况的能力,并在杭州下沙泵站进行了实验验证。将该算法与LR、SVM和RNN算法进行比较,发现该算法具有最高的预测精度。
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