异常检测
计算机科学
公制(单位)
推论
物联网
数据挖掘
深度学习
跟踪(心理语言学)
概念漂移
分析
时间序列
人工智能
实时计算
机器学习
数据流挖掘
计算机安全
语言学
运营管理
哲学
经济
作者
Mahsa Raeiszadeh,Ahsan Saleem,Amin Ebrahimzadeh,Roch Glitho,Johan Eker,Raquel A. F. Mini
标识
DOI:10.1109/ccnc51644.2023.10060584
摘要
The growth of streaming data originating from Internet of Things (IoT)-based Industry 4.0 opens doors to real-time analytics of time-sensitive services. However, this ever-increasing amount of data inevitably leads to anomalies, resulting in considerable risks for time-sensitive applications. Thus, real-time detection of anomalies is critical to prevent impending failures and resolve them in time. Given that the problem is to detect application-level anomalies in real time, we develop a deep learning-based technique, which integrates time-series data inference with a Long-Short Term Memory (LSTM)-based prediction model. Our proposed method relies on a novel metric called Sequence Inconsistency Distance (SID), which determines the abnormality likelihood of a target record in real time. Our trace-driven evaluations indicate that the proposed method achieves up to a 92.6% performance gain compared to the current state-of-the-art anomaly detection methods in terms of true positive and false positive rate while meeting the essential efficiency requirements.
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