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Fault Detection of Elevator System Using Profile Extraction and Deep Autoencoder Feature Extraction for Acceleration and Magnetic Signals

机译:基于轮廓提取和深度自动编码器特征提取的加速度和磁信号电梯系统故障检测

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In this paper, we propose a new algorithm for data extraction from time series data, and furthermore automatic calculation of highly informative deep features to be used in fault detection. In data extraction elevator start and stop events are extracted from sensor data including both acceleration and magnetic signals. In addition, a generic deep autoencoder model is also developed for automated feature extraction from the extracted profiles. After this, extracted deep features are classified with random forest algorithm for fault detection. Sensor data are labelled as healthy and faulty based on the maintenance actions recorded. The remaining healthy data are used for validation of the model to prove its efficacy in terms of avoiding false positives. We have achieved nearly 100% accuracy in fault detection along with avoiding false positives based on new extracted deep features, which outperforms results using existing features. Existing features are also classified with random forest to compare results. Our developed algorithm provides better results due to the new deep features extracted from the dataset when compared to existing features. This research will help various predictive maintenance systems to detect false alarms, which will in turn reduce unnecessary visits of service technicians to installation sites.
机译:在本文中,我们提出了一种从时间序列数据中提取数据的新算法,并提出了一种用于故障检测的高信息深度特征的自动计算方法。在数据提取中,从传感器数据中提取电梯的启动和停止事件,包括加速度和磁信号。此外,还开发了通用的深度自动编码器模型,用于从提取的配置文件中自动提取特征。之后,使用随机森林算法对提取的深度特征进行分类,以进行故障检测。根据记录的维护措施,传感器数据被标记为正常和故障。其余健康数据用于验证模型,以证明其在避免误报方面的功效。基于新提取的深层特征,我们已经在故障检测中达到了近100%的准确度,同时避免了误报,这比使用现有特征的结果要好。现有特征也用随机森林进行分类以比较结果。与现有特征相比,由于从数据集中提取的新深度特征,我们开发的算法可提供更好的结果。这项研究将帮助各种预测性维护系统检测错误警报,从而减少维修技术人员对安装站点的不必要访问。

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