A Review of Spatiotemporal GANs for Telemetry Data Anomaly Detection

Sushant Singh
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Abstract

Telemetry data anomaly detection is a crucial task in various domains, including aerospace, power systems, and environmental monitoring. In recent years, significant advancements have been made in the development of anomaly detection techniques, particularly with the advent of spatial-temporal generative adversarial networks (ST-GANs). This review paper aims to provide a comprehensive overview of the progress in telemetry data anomaly detection, with a specific focus on the application of ST-GANs. The review begins by emphasizing the importance of telemetry data anomaly detection and highlighting the challenges associated with traditional methods. Subsequently, it delves into the underlying principles of ST-GANs and their suitability for detecting anomalies in complex, time-series data. The paper presents a detailed analysis of experimental results and performance comparisons of ST-GANs with other state-of-the-art anomaly detection algorithms, such as LSTM-GAN, Isolation Forest, and GRU-VAE.
用于遥测数据异常检测的时空 GAN 综述
遥测数据异常检测是航空航天、电力系统和环境监测等多个领域的一项重要任务。近年来,异常检测技术的发展取得了长足进步,特别是随着时空生成对抗网络(ST-GAN)的出现。本综述旨在全面概述遥测数据异常检测方面的进展,特别关注 ST-GANs 的应用。综述首先强调了遥测数据异常检测的重要性,并强调了与传统方法相关的挑战。随后,论文深入探讨了 ST-GANs 的基本原理及其在复杂时间序列数据异常检测中的适用性。论文详细分析了 ST-GANs 与其他最先进的异常检测算法(如 LSTM-GAN、Isolation Forest 和 GRU-VAE)的实验结果和性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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