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Combining Machine Learning and Domain Experience: A Hybrid-Learning Monitor Approach for Industrial Machines

机译:结合机器学习和领域经验:工业机器的混合学习监控方法

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To ensure availability of industrial machines and reducing breakdown times, a machine monitoring can be an essential help. Unexpected machine downtimes are typically accompanied by high costs. Machine builders as well as component suppliers can use their detailed knowledge about their products to counteract this. One possibility to face the challenge is to offer a product-service system with machine monitoring services to their customers. An implementation approach for such a machine monitoring service is presented in this article. In contrast to previous research, we focus on the integration and interaction of machine learning tools and human domain experts, e.g. for an early anomaly detection and fault classification. First, Long Short-Term Memory Neural Networks are trained and applied to identify unusual behavior in operation time series data of a machine. We describe first results of the implementation of this anomaly detection. Second, domain experts are confronted with related monitoring data, e.g. temperature, vibration, video, audio etc., from different sources to assess and classify anomaly types. With an increasing knowledge base, a classifier module automatically suggests possible causes for an anomaly automatically in advance to support machine operators in the anomaly identification process. Feedback loops ensure continuous learning of the anomaly detector and classifier modules. Hence, we combine the knowledge of machine builders/component suppliers with application specific experience of the customers in the business value stream network.
机译:为了确保工业机器的可用性并减少故障时间,机器监视可能是必不可少的帮助。意外的机器停机通常伴随着高昂的成本。机器制造商以及零件供应商可以利用其有关产品的详细知识来解决这一问题。面临挑战的一种可能性是向其客户提供带有机器监控服务的产品服务系统。本文介绍了这种机器监视服务的一种实现方法。与之前的研究相比,我们专注于机器学习工具和领域专家的集成和交互,例如用于早期异常检测和故障分类。首先,长期短期记忆神经网络经过训练并应用于识别机器的运行时间序列数据中的异常行为。我们描述了此异常检测实施的第一个结果。其次,领域专家面临着相关的监控数据,例如来自不同来源的温度,振动,视频,音频等,以评估和分类异常类型。随着知识库的增加,分类器模块会自动自动提前自动提示可能的异常原因,以支持机器操作员进行异常识别过程。反馈回路可确保不断学习异常检测器和分类器模块。因此,我们将机器制造商/组件供应商的知识与客户在业务价值流网络中的特定应用经验相结合。

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