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Early detection of faults in HVAC systems using an XGBoost model with a dynamic threshold

机译:使用具有动态阈值的XGBoost模型及早检测HVAC系统中的故障

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摘要

Growing demand for energy efficient buildings requires robust models to ensure efficient performance over the evolving life cycle of the building. Energy management systems can prevent energy wastage in buildings without sacrificing occupant's comfort. However, their full capabilities have not been completely realized, partly due to their inability to quickly detect faults in HVAC systems. An accurate model and an appropriate threshold are the key factors in fault detection. The traditional method of setting a fixed threshold often leads to missed opportunities to detect faults, delayed detection of faults or false alarms. To improve the effectiveness of fault detection algorithms, we have first developed a data-driven model using extreme gradient boosting (XGBoost). We have then applied the proposed dynamic threshold method to determine occurrences of faults in real time. This method adjusts the threshold value dynamically according to the real-time moving average and moving standard deviation of the predictions. The results demonstrate the usefulness of our proposed method to detect faults early in the course. An average increase of 8.82% and 117.65%, in the F1 score, is achieved with the proposed method in comparison to the traditional fixed threshold method and an existing dynamic residual method. (C) 2019 Elsevier B.V. All rights reserved.
机译:对节能建筑的需求不断增长,需要可靠的模型来确保在建筑物不断发展的生命周期内的高效性能。能源管理系统可以在不牺牲居住者舒适度的情况下防止建筑物中的能源浪费。但是,它们的全部功能尚未完全实现,部分原因是它们无法快速检测HVAC系统中的故障。准确的模型和适当的阈值是故障检测的关键因素。设置固定阈值的传统方法通常会导致错过检测故障的机会,延迟检测故障或错误警报。为了提高故障检测算法的效率,我们首先开发了使用极限梯度提升(XGBoost)的数据驱动模型。然后,我们应用了建议的动态阈值方法来实时确定故障的发生。该方法根据预测的实时移动平均值和移动标准偏差动态调整阈值。结果证明了我们提出的方法在课程早期检测故障的有用性。与传统的固定阈值方法和现有的动态残差方法相比,该方法在F1评分上平均提高了8.82%和117.65%。 (C)2019 Elsevier B.V.保留所有权利。

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