基于fpga的光谱异常检测系统

Duncan J. M. Moss, Zhe Zhang, Nicholas J. Fraser, P. Leong
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引用次数: 6

摘要

基于光谱特征的异常检测适用于各种各样的问题,包括预测和健康管理、振动分析、天文学、生物医学工程和计算金融。输入数据可以定期采样,就像标准的模拟数字转换器以高于奈奎斯特的速率采样带宽有限的信号一样,或者不规则采样,就像股票报价或天文数据一样。在本文中,我们提出了一种新的在线算法,用于计算规则或不规则采样数据的功率谱,并对时间序列数据进行异常检测。这两种算法都允许硬件实现的时间复杂度为0(1),这是考虑所有样本的任何系统的最小值。我们将这两种算法结合起来,形成了一种基于功率谱的异常检测器(SAD)。我们还描述了一种SAD的实现,它具有最小的硬件要求,并且与传统的基于处理器的设计相比,在速度、延迟、功率和能量方面实现了一到两个数量级的改进。
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An FPGA-based spectral anomaly detection system
Anomaly detection based on spectral features is applicable to a diverse range of problems including prognostic and health management, vibration analysis, astronomy, biomedicai engineering and computational finance. The input data could be regularly sampled, as in the case of a standard analogue to digital converter sampling a bandlimited signal at above the Nyquist rate, or irregularly sampled, as in the case of stock quotes or astronomical data. In this paper, we present new online algorithms for the computation of power spectra for regularly or irregularly sampled data, and performing anomaly detection on time series data. Both algorithms allow hardware implementations with O(l) time complexity, this being the minimum for any system that considers all the samples. We combine the two algorithms to form a power Spectrum-based Anomaly Detector (SAD). We also describe an implementation of SAD which has minimal hardware requirements, and achieves one to two orders of magnitude improvement in speed, latency, power and energy over a traditional processor-based design.
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