Anomalies represent deviations from the intended system operation and can lead to decreased efficiency as well as partial or complete system failure. As the causes of anomalies are often unknown due to complex system dynamics, efficient anomaly detection is necessary. Conventional detection approaches rely on statistical and time-invariant methods that fail to address the complex and dynamic nature of anomalies. With advances in artificial intelligence and increasing importance for anomaly detection and prevention in various domains, artificial neural network approaches enable the detection of more complex anomaly types while considering temporal and contextual characteristics. In this article, a survey on state-of-the-art anomaly detection using deep neural and especially long short-term memory networks is conducted. The investigated approaches are evaluated based on the application scenario, data and anomaly types as well as further metrics. To highlight the potential of upcoming anomaly detection techniques, graph-based and transfer learning approaches are also included in the survey, enabling the analysis of heterogeneous data as well as compensating for its shortage and improving the handling of dynamic processes.
翻译:异常现象代表了与预定系统运行的偏差,并可能导致效率下降以及部分或完整的系统故障。由于系统动态复杂,异常现象的原因往往不为人知,因此需要有效地发现异常现象。常规探测方法依赖于统计和时间变化方法,无法解决异常现象的复杂和动态性质。随着人工智能的进步和对不同领域异常现象探测和预防的日益重要性,人工神经网络方法能够发现更复杂的异常类型,同时考虑时间和背景特点。在本条中,利用深神经、特别是短期内存网络对最新异常现象探测进行了调查。根据应用情景、数据和异常类型以及进一步的衡量标准对调查方法进行了评估。为了突出即将出现的异常现象探测技术的潜力,调查中也包括了图表和转移学习方法,以便能够分析混杂数据,弥补其短缺,改进动态过程的处理。