基于机器学习方案的云故障预测和报告系统的异步电机和泵的健康状态和故障前时间评估

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引用次数: 0

摘要

每个工业都严重依赖电机。当这些机器发生故障而没有发出信号或警告时,如果机器是重要资产,则会出现计划外停机时间和意外部署的维护人员,这可能会影响或降低生产。有些故障可能会导致更大的损坏,而不是一台机器或物品被替换,一旦机器发生故障,需要大量资源来修复,资产的预期寿命也会缩短。机器运行到故障也存在安全问题。机器运行到故障也会增加劳动力成本和安全成本。因此,本文提出了一种基于云的故障预测和报告系统,该系统采用机器方案对异步电机和泵进行健康状态和故障前时间评估,以进行维护调度。该系统使用传感器提取数据(电流、速度、温度、振动)。然后,使用机器学习算法、制造商规范和历史读数对提取的数据进行条件调整,并将其与设备健康状态相关的值进行比较,以识别性能不合格或需要采取行动的项目,并显示资产健康报告,这将有助于根据分析安排适当的维护程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Healthy-State and Time-To-Failure Assessment of Induction Motors and Pumps for Maintenance Scheduling Using Cloud-Enabled Fault Prediction and Reporting System with Machine Learning Scheme
Every industry relies heavily on electrical machines. When these machines fail without giving a signal or warning, there is unplanned downtime and unanticipated deployment of maintenance staff which may affect or lower production if machines are serving as important assets. Some failures can lead to greater damage, instead of one machine or item being replaced a lot of resources will be needed to repair once a machine fails and assets will have a shorter life expectancy. There are also safety issues associated with running a machine to failure. Running a machine to failure also increases labour costs and safety costs. Therefore, this paper proposes a Cloud-Enabled Fault Prediction and Reporting System with Machine scheme for Healthy-State and Time-To-Failure Assessment of Induction Motors and Pumps for Maintenance Scheduling. This system uses sensors to extract data (current, speed, temperature, vibrations). The extracted data is then conditioned and compared to the values related to the healthy state of the equipment using machine learning algorithms, manufacturer specifications, and historical readings to identify performance non-conformities or items that require action and display the asset health report which will help schedule a proper maintenance procedure based on analysis.
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