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FPGA-Based Real-Time Implementation of Bivariate Empirical Mode Decomposition

机译:基于FPGA的双变量经验模式分解的实时实现

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摘要

A field programmable gate array (FPGA)-based parallel architecture for the real-time and online implementation of the bivariate extension of the empirical mode decomposition (EMD) algorithm is presented. Multivariate extensions of EMD have attracted significant attention in recent years owing to their scope in applications involving multichannel and multidimensional data processing, e.g. biomedical engineering, condition monitoring, image fusion. However, these algorithms are computationally expensive due to the empirical and data-driven nature of these methods. That has hindered the utilisation of EMD, and particularly its bivariate and multivariate extensions, in real-time applications. The proposed parallel architecture is aimed at bridging this gap through real-time computation of the bivariate EMD algorithm. The crux of the architecture is the simultaneous computation of multiple signal projections, locating their local extrema and finally the calculation of their associated complex-valued envelopes for the estimation of local mean. The architecture is implemented on a Xilinx Kintex 7 FPGA and offers significant computational improvements over the existing software-based sequential implementations of bivariate EMD.
机译:提出了一种基于现场可编程门阵列(FPGA)的并行体系结构,用于实时和在线实现经验模式分解(EMD)算法的双变量扩展。由于EMD的多变量扩展在涉及多通道和多维数据处理的应用程序中的应用范围很广,因此近年来引起了极大的关注。生物医学工程,状态监测,图像融合。然而,由于这些方法的经验和数据驱动性质,这些算法在计算上是昂贵的。这阻碍了EMD在实时应用中的使用,尤其是它的双变量和多变量扩展。提出的并行体系结构旨在通过双变量EMD算法的实时计算来弥合这一差距。该体系结构的关键是同时计算多个信号投影,定位其局部极值,最后计算与之相关的复数值包络,以估计局部均值。该架构在Xilinx Kintex 7 FPGA上实现,并且在现有的基于软件的双变量EMD顺序实现上提供了显着的计算改进。

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