The monitoring of rotating machinery is an essential task in today's production processes. Currently, several machine learning and deep learning-based modules have achieved excellent results in fault detection and diagnosis. Nevertheless, to further increase user adoption and diffusion of such technologies, users and human experts must be provided with explanations and insights by the modules. Another issue is related, in most cases, with the unavailability of labeled historical data that makes the use of supervised models unfeasible. Therefore, a new approach for fault detection and diagnosis in rotating machinery is here proposed. The methodology consists of three parts: feature extraction, fault detection and fault diagnosis. In the first part, the vibration features in the time and frequency domains are extracted. Secondly, in the fault detection, the presence of fault is verified in an unsupervised manner based on anomaly detection algorithms. The modularity of the methodology allows different algorithms to be implemented. Finally, in fault diagnosis, Shapley Additive Explanations (SHAP), a technique to interpret black-box models, is used. Through the feature importance ranking obtained by the model explainability, the fault diagnosis is performed. Two tools for diagnosis are proposed, namely: unsupervised classification and root cause analysis. The effectiveness of the proposed approach is shown on three datasets containing different mechanical faults in rotating machinery. The study also presents a comparison between models used in machine learning explainability: SHAP and Local Depth-based Feature Importance for the Isolation Forest (Local- DIFFI). Lastly, an analysis of several state-of-art anomaly detection algorithms in rotating machinery is included.
翻译:目前,数个机器学习和深层次学习模块在发现和诊断错误方面取得了极好的结果。然而,为了进一步增加用户采用和传播这类技术,各模块必须向用户和人类专家提供解释和见解。另一个问题是,在多数情况下,缺乏标签的历史数据,导致无法使用受监督的模式。因此,在此提议了一种在旋转机制中进行错误检测和诊断的新方法。方法由三个部分组成:特征提取、故障检测和错误诊断。第一部分是抽取时间和频率域的振动特征。第二,为了进一步增加用户对此类技术的采用和扩散,必须由模块向用户和人类专家提供解释和洞察这些技术。另一个问题是,在多数情况下,没有标签的历史数据,使得无法使用受监督的模型。最后,在诊断中,Shaply Additive 解释(SHAP) 一种解释黑箱模型的技术。通过模型解释特征的重要性排序,对时间和频率域域中的错判。在检测中,提出了两种工具,即根据异常的检测方法,在检测方法中以不受监督的方式核查存在缺陷的缺陷分析。在结构结构中,还展示了一种结构结构的精确分析。在分析中,在结构内,还展示了一种结构结构结构内使用的分类中,在结构内进行了不同的分析。在分析中,在分析中,在结构内部分析中显示了一种结构内,在结构内,在结构内有不同的分析。