基于变压器和傅立叶变换的 Argo 数据异常检测

IF 2.1 4区 地球科学 Q2 MARINE & FRESHWATER BIOLOGY Journal of Sea Research Pub Date : 2024-02-08 DOI:10.1016/j.seares.2024.102483
Longkai Sui, Yongguo Jiang
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引用次数: 0

摘要

Argo 数据是来自海洋浮标的多维观测数据,长期以来一直受到数据异常的困扰。目前,Argo 数据的异常检测问题仍面临诸多挑战,因为异常可能涉及多个变量之间的复杂关系,导致传统机器学习方法的性能不尽如人意。得益于深度学习的进步,它已成为异常检测的主要方法,并表现出显著的性能。Transformer 模型在数据异常检测领域展现出了巨大的潜力,其核心的自我关注机制能够学习变量之间的关系。我们在 Transformer 模型中引入了快速傅立叶变换(FFT),使该模型能够更好地捕捉多元数据中的周期性模式和复杂关系,学习正常数据模式,从而改进 Argo 数据异常检测方法。通过在三个公共数据集和 Argo 数据集上进行实验,增强模型的性能优于原始模型。这也证明了 FFT 在多维数据异常检测中的潜力,为解决现实世界复杂数据集中的异常检测难题提供了新的见解。
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Argo data anomaly detection based on transformer and Fourier transform

Argo data is multidimensional observational data from ocean floats, which has long been plagued by data anomalies. Currently, the anomaly detection problem in Argo data still faces many challenges, as anomalies may involve complex relationships between multiple variables, leading to suboptimal performance with traditional machine learning methods. Thanks to the advancement of deep learning, it has become the predominant methodology for anomaly detection, demonstrating notable performance. The Transformer model has shown significant potential in the field of data anomaly detection, with its core Self-Attention mechanism capable of learning relationships between variables. We introduce Fast Fourier Transform (FFT) into the Transformer model, enabling the model to better capture periodic patterns and complex relationships in multivariate data, learning normal data patterns to improve the method for Argo data anomaly detection. Through experiments conducted on three public datasets and the Argo dataset, the enhanced model outperforms the original model in terms of performance. This also demonstrates the potential of FFT in multidimensional data anomaly detection, providing new insights into addressing anomaly detection challenges in real-world complex datasets.

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来源期刊
Journal of Sea Research
Journal of Sea Research 地学-海洋学
CiteScore
3.20
自引率
5.00%
发文量
86
审稿时长
6-12 weeks
期刊介绍: The Journal of Sea Research is an international and multidisciplinary periodical on marine research, with an emphasis on the functioning of marine ecosystems in coastal and shelf seas, including intertidal, estuarine and brackish environments. As several subdisciplines add to this aim, manuscripts are welcome from the fields of marine biology, marine chemistry, marine sedimentology and physical oceanography, provided they add to the understanding of ecosystem processes.
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