{"title":"Degradation State Assessment Modeling Using Causality Discovery","authors":"Chen Feng, Xiaochen Liu, Shulei Bi, Jian Kang","doi":"10.1109/PHM2022-London52454.2022.00102","DOIUrl":null,"url":null,"abstract":"In order to solve the problem of equipment degradation state assessment, one idea was to use data-driven method to build equipment health state model and evaluate equipment degradation based on residual. However, most current data-driven models revealed the correlation between condition monitoring variables and equipment state rather than the causal relationship, so the rationality of the model construction lacked explanation. Therefore, causality discovery algorithm was introduced in this work to find variables that were causally related to degradation state to build a state model and improve the interpretability of the model. In this paper, the COmbined Diesel eLectric And Gas (CODLAG) Propulsion system degradation dataset was used for experiments. The Fast Causal Inference (FCI) algorithm was used to discover the causal relationships among the variables, as shown in the causal graph. Based on the causal graph, 4 groups of variables were selected to train the Long Short Term Memory (LSTM) neural networks as models to assess the degradation state. The experimental results showed that those variables that had strong causal relationships with the equipment state were sufficient for the training of the model. And the trained LSTM neural network had good performance for the degradation state assessment. More importantly, the model trained by this way had better interpretability.","PeriodicalId":269605,"journal":{"name":"2022 Prognostics and Health Management Conference (PHM-2022 London)","volume":"29 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2022 Prognostics and Health Management Conference (PHM-2022 London)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/PHM2022-London52454.2022.00102","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
In order to solve the problem of equipment degradation state assessment, one idea was to use data-driven method to build equipment health state model and evaluate equipment degradation based on residual. However, most current data-driven models revealed the correlation between condition monitoring variables and equipment state rather than the causal relationship, so the rationality of the model construction lacked explanation. Therefore, causality discovery algorithm was introduced in this work to find variables that were causally related to degradation state to build a state model and improve the interpretability of the model. In this paper, the COmbined Diesel eLectric And Gas (CODLAG) Propulsion system degradation dataset was used for experiments. The Fast Causal Inference (FCI) algorithm was used to discover the causal relationships among the variables, as shown in the causal graph. Based on the causal graph, 4 groups of variables were selected to train the Long Short Term Memory (LSTM) neural networks as models to assess the degradation state. The experimental results showed that those variables that had strong causal relationships with the equipment state were sufficient for the training of the model. And the trained LSTM neural network had good performance for the degradation state assessment. More importantly, the model trained by this way had better interpretability.
为了解决设备退化状态评估问题,一种思路是采用数据驱动的方法建立设备健康状态模型,基于残差对设备退化进行评估。然而,目前大多数数据驱动模型揭示了状态监测变量与设备状态之间的相关关系,而不是因果关系,因此模型构建的合理性缺乏解释。因此,本文引入因果关系发现算法,寻找与退化状态有因果关系的变量,建立状态模型,提高模型的可解释性。本文利用CODLAG (COmbined Diesel - eLectric And Gas)推进系统退化数据集进行实验。使用快速因果推理(Fast Causal Inference, FCI)算法发现变量之间的因果关系,如图所示。基于因果图,选择4组变量训练长短期记忆(LSTM)神经网络作为模型来评估退化状态。实验结果表明,那些与设备状态有较强因果关系的变量足以用于模型的训练。训练后的LSTM神经网络具有良好的退化状态评估性能。更重要的是,通过这种方式训练的模型具有更好的可解释性。