An automated machine learning approach for detecting anomalous peak patterns in time series data from a research watershed in the northeastern United States critical zone

Ijaz Ul Haq , Byung Suk Lee , Donna M. Rizzo , Julia N. Perdrial
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Abstract

This paper presents an automated machine learning framework designed to assist hydrologists in detecting anomalies in time series data generated by sensors in a research watershed in the northeastern United States critical zone. The framework specifically focuses on identifying peak-pattern anomalies, which may arise from sensor malfunctions or natural phenomena. However, the use of classification methods for anomaly detection poses challenges, such as the requirement for labeled data as ground truth and the selection of the most suitable deep learning model for the given task and dataset. To address these challenges, our framework generates labeled datasets by injecting synthetic peak patterns into synthetically generated time series data and incorporates an automated hyperparameter optimization mechanism. This mechanism generates an optimized model instance with the best architectural and training parameters from a pool of five selected models, namely Temporal Convolutional Network (TCN), InceptionTime, MiniRocket, Residual Networks (ResNet), and Long Short-Term Memory (LSTM). The selection is based on the user’s preferences regarding anomaly detection accuracy and computational cost. The framework employs Time-series Generative Adversarial Networks (TimeGAN) as the synthetic dataset generator. The generated model instances are evaluated using a combination of accuracy and computational cost metrics, including training time and memory, during the anomaly detection process. Performance evaluation of the framework was conducted using a dataset from a watershed, demonstrating consistent selection of the most fitting model instance that satisfies the user’s preferences.

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从美国东北部临界区研究流域的时间序列数据中检测异常峰值模式的自动机器学习方法
本文介绍了一种自动机器学习框架,旨在协助水文学家从美国东北部临界区研究流域的传感器生成的时间序列数据中发现异常。该框架特别侧重于识别可能由传感器故障或自然现象引起的峰值模式异常。然而,使用分类方法进行异常检测会带来一些挑战,例如需要将标注数据作为地面实况,以及为给定任务和数据集选择最合适的深度学习模型。为了应对这些挑战,我们的框架通过向合成生成的时间序列数据中注入合成峰值模式来生成标注数据集,并结合了自动超参数优化机制。该机制从五种选定模型(即时序卷积网络 (TCN)、InceptionTime、MiniRocket、残差网络 (ResNet) 和长短时记忆 (LSTM))中生成具有最佳架构和训练参数的优化模型实例。选择的依据是用户对异常检测准确性和计算成本的偏好。该框架采用时间序列生成对抗网络(TimeGAN)作为合成数据集生成器。在异常检测过程中,使用准确度和计算成本指标(包括训练时间和内存)的组合对生成的模型实例进行评估。利用一个流域数据集对该框架进行了性能评估,结果表明,该框架能根据用户的偏好选择最合适的模型实例。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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审稿时长
98 days
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