无历史故障数据的工业设备实时预测维护系统

Mohammed E. Bahar, Abed A. Schokry, M. Alhanjouri
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引用次数: 0

摘要

预测性维护(PdM)似乎可以在故障发生之前对其进行预测,因为意外的工业设备故障会直接影响工人的安全、成本和工作的连续性。在这种情况下,开发 PdM 系统需要历史故障数据,但在我们的案例中,由于污水离心泵以前没有故障记录,因此无法获得这些数据。因此,本研究旨在开发一种实时高效的 PdM 系统,它不需要历史故障数据,还能预测不同时期和条件下的故障。数据驱动 "方法是一种适用于条件数据的方法;同时,时间序列预测和异常检测(AD)也是最适用于所研究案例的模型。模型中选择主轴承温度是因为它是最适用的参数。模型的性能从两个方面进行评估:准确性和资源消耗(执行时间和内存)。其次,最重要的精度指标是预测模型的均方根误差(RMSE)和反演模型的过剩质量和质量体积。实验结果表明,"TBATS "是最佳预测模型,而来自 "ADTK "模型的 QuantileAD 是最佳 AD 方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Predictive Maintenance System of Industrial Equipment without Historical Failure Data
Predictive maintenance (PdM) appears to predict faults before they occur because unexpected industrial equipment failures directly affect workers' safety, cost, and work continuity. In this context, developing a PdM system needs historical data for failures, but those data are not available in our case, which is a sewage centrifugal pump, where failures had not been recorded before. Therefore, this research aims to develop a system for PdM that works efficiently in real-time and does not need historical data for failures; it can also predict failures at different periods and conditions. The "Data-Driven" method is a suitable methodology to apply to conditions data; also, time series forecasting and anomaly detection (AD) are the most applicable models for the studied case. The Main Bearing Temperature was chosen in the models because it is the most applicable parameter. The models' performance was evaluated in two ways: accuracy and resource consumption (execution time and RAM). After that, the most important accuracy metrics are a root mean square error (RMSE) for forecasting models and excess Mass and Mass Volume for AD models. The experimental results presented "TBATS" as the best forecast model and QuantileAD from the "ADTK" model as the best AD method.
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