dCNN/dCAM: anomaly precursors discovery in multivariate time series with deep convolutional neural networks

Paul Boniol, Mohammed Meftah, Emmanuel Remy, Bruno Didier, Themis Palpanas
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Abstract

Abstract Detection of defects and identification of symptoms in monitoring industrial systems is a widely studied problem with applications in a wide range of domains. Most of the monitored information extracted from systems corresponds to data series (or time series), where the evolution of values through one or multiple dimensions directly illustrates its health state. Thus, an automatic anomaly detection method in data series becomes crucial. In this article, we propose a novel method based on a convolutional neural network to detect precursors of anomalies in multivariate data series. Our contribution is twofold: We first describe a new convolutional architecture dedicated to multivariate data series classification; We then propose a novel method that returns dCAM, a dimension-wise Class Activation Map specifically designed for multivariate time series that can be used to identify precursors when used for classifying normal and abnormal data series. Experiments with several synthetic datasets demonstrate that dCAM is more accurate than previous classification approaches and a viable solution for discriminant feature discovery and classification explanation in multivariate time series. We then experimentally evaluate our approach on a real and challenging use case dedicated to identifying vibration precursors on pumps in nuclear power plants.
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dCNN/dCAM:利用深度卷积神经网络发现多元时间序列中的异常前兆
监测工业系统中的缺陷检测和症状识别是一个被广泛研究的问题,在许多领域都有应用。从系统中提取的大多数监控信息对应于数据序列(或时间序列),其中通过一个或多个维度的值的演变直接说明其健康状态。因此,一种数据序列的自动异常检测方法就变得至关重要。本文提出了一种基于卷积神经网络的多变量数据序列异常前兆检测方法。我们的贡献是双重的:我们首先描述了一个新的卷积架构,专门用于多变量数据序列分类;然后,我们提出了一种返回dCAM的新方法,dCAM是一种专门为多元时间序列设计的维度类激活图,可用于识别用于分类正常和异常数据序列的前体。在多个合成数据集上的实验表明,dCAM比以往的分类方法更准确,是多元时间序列中判别特征发现和分类解释的可行解决方案。然后,我们在一个真实且具有挑战性的用例中实验评估了我们的方法,该用例致力于识别核电站泵上的振动前体。
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