基于机器学习算法的去中心化异常检测的比较研究与新工业平台

Fabian Gerz, Tolga Renan Bastürk, Julian Kirchhoff, Joachim Denker, L. Al-Shrouf, M. Jelali
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引用次数: 3

摘要

异常和意外的过程相关故障的发生是制造系统的主要问题,对产品质量有重大影响。因此,早期发现异常是至关重要的,以便为采取对策和确保产品质量创造足够的机动空间。本文研究了传感器数据流中异常检测的机器学习(ML)算法的性能。为此,基于定义的性能指标评估了六种机器学习算法(K-means、DBSCAN、隔离森林、OCSVM、LSTM-Network和DeepAnt)的性能。这些方法在公开可用的数据集、自己的合成数据集和新的工业数据集上进行基准测试。后者包括热轧厂的雷达传感器数据集。研究结果表明,K-means算法、DBSCAN算法和LSTM网络对准时异常、集体异常和上下文异常具有较高的检测性能。提出了一种利用传感器数据流进行(实时)异常检测的分散策略,并为此开发和实现了一个工业(云边缘计算)平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study and a New Industrial Platform for Decentralized Anomaly Detection Using Machine Learning Algorithms
The occurrence of anomalies and unexpected, process-related faults is a major problem for manufacturing systems, which has a significant impact on product quality. Early detection of anomalies is therefore of central importance in order to create sufficient room for maneuver to take countermeasures and ensure product quality. This paper investigates the performance of machine learning (ML) algorithms for anomaly detection in sensor data streams. For this purpose, the performance of six ML algorithms (K-means, DBSCAN, Isolation Forest, OCSVM, LSTM-Network, and DeepAnt) is evaluated based on defined performance metrics. These methods are benchmarked on publicly available datasets, own synthetic datasets, and novel industrial datasets. The latter include radar sensor datasets from a hot rolling mill. Research results show a high detection performance of K-means algorithm, DBSCAN algorithm and LSTM network for punctual, collective and contextual anomalies. A decentralized strategy for (real-time) anomaly detection using sensor data streams is proposed and an industrial (Cloud-Edge Computing) platform is developed and implemented for this purpose.
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