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A case study on the application of predictive analytics toward forecasting swing door failure

机译:预测分析在预测平开门故障中的应用案例研究

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Predictive maintenance is a maintenance approach that involves monitoring machines in order to predict their failures. This case study focuses on predicting failure of swing doors employed in a facility and scheduling maintenance based on the predicted failure date. Swing doors in a facility are checked regularly. Problems such as a door stays open only for a short period of time, a door opens only after a hard push act as signals that some larger problem may be growing. With this information, maintenance can be scheduled before the door goes out of service. Hold on Time (HoT), which is the specified time during which a swing door is held open, is collected for all swing doors in a facility. By closely following the trend exhibited by hold on time readings observed overtime, abnormal operations could be predicted beforehand, and maintenance can be carried out before any doors fail. Piecewise regression is the technique adopted for prediction and is implemented using R.
机译:预测性维护是一种维护方法,其中涉及监视机器以预测其故障。本案例研究的重点是预测设施中使用的平开门的故障,并根据预测的故障日期安排维护。定期检查设施中的平开门。诸如门仅在短时间内保持打开的问题,仅在强行按下后门才打开,这表明可能会出现一些更大的问题。利用此信息,可以安排在门停止服务之前进行维护。保留时间(HoT),这是设备中所有平开门均保持打开的平开门的指定时间。通过密切跟踪超时观察到的保持时间读数所显示的趋势,可以预先预测异常操作,并且可以在任何门出现故障之前进行维护。分段回归是用于预测的技术,使用R实现。

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