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Deep Unsupervised Workload Sequence Anomaly Detection with Fusion of Spatial and Temporal Features in the Cloud

机译:深度无监督的工作量序列异常检测,云中的空间和时间特征融合

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The abnormal detection of the workload sequence is designed to achieve intelligent operation and management of the cloud platform to improve operational efficiency. Due to the diversity of workload sequence variation patterns in the large-scale cloud, it is difficult for the traditional abnormal detection methods to extract features effectively, which leads to detecting anomalies inaccurately. In this paper, a deep unsupervised anomaly sequence detection model with fusion of spatial and temporal features of workload sequence (TS-DeepSVDD) is proposed. To extract the spatial and temporal features of the workload sequence, the model introduces convolutional recurrent neural network (CRNN) to improve network architecture with deep support vector data description (DeepSVDD). First, a convolutional neural network (CNN) module extracts the spatial features of the workload sequence. Second, for the acquired spatial features vectors, the bidirectional long short-term memory (BiLSTM) module extracts temporal features. Finally, the features vectors training support vector data description (SVDD) classifier fuses with the deep features of the workload sequence spatial and temporal features. TS-DeepSVDD extracts the deep features of the workload sequence from the spatial and temporal dimensions. It achieves a comprehensive description of the inherent law of the workload sequence, increasing the differentiation between normal and abnormal sequences. The simulation dataset and Google trace dataset are used respectively for verification. The results show TS-DeepSVDD can detect different abnormal sequences more accurately than the traditional unsupervised anomaly detection methods.
机译:工作负载序列的异常检测旨在实现云平台的智能操作和管理,以提高运营效率。由于大规模云中的工作量序列变化模式的多样性,传统的异常检测方法难以有效地提取特征,这导致不准确地检测异常。本文提出了一种深度无调节的异常序列检测模型,具有工作量序列(TS-Deepsvdd)的空间和时间特征融合。为了提取工作负载序列的空间和时间特征,模型引入了卷积经常性神经网络(CRNN),以改善具有深度支持向量数据描述(DeepSVDD)的网络架构。首先,卷积神经网络(CNN)模块提取工作负载序列的空间特征。其次,对于所获得的空间特征向量,双向长期短期存储器(BILSTM)模块提取时间特征。最后,特征向量训练支持向量数据描述(SVDD)分类器保险丝,具有工作负载序列空间和时间特征的深度特征。 TS-DeepSVDD从空间和时间尺寸提取工作负载序列的深度特征。它实现了对工作负载序列的固有定律的综合描述,增加了正常和异常序列之间的差异。仿真数据集和Google Trace DataSet分别用于验证。结果显示TS-Deepsvdd可以比传统的无监督异常检测方法更准确地检测不同的异常序列。

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