Hardware PCA for gas identification systems using high level synthesis on the Zynq SoC

Amine Ait Si Ali, A. Amira, F. Bensaali, M. Benammar
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引用次数: 12

Abstract

One of the significant stages in a gas identification system is dimensionality reduction to speed up the processing part. This is even more important when the system is implemented on a hardware platform where the resources are limited. This paper presents the design and the implementation of the learning and testing phases of principal component analysis (PCA) that can be used in a gas identification system on the heterogeneous Zynq platform. All steps of PCA starting from the mean computation to the projection of data onto the new space, passing by the normalization process, covariance matrix and the eigenvectors computation are developed in C and synthesized using the new Xilinx VIVADO high level synthesis (HLS). The computation of the eigenvectors was based on the iterative Jacobi method. The designed hardware for computing the learning part of PCA on the Zynq system on chip showed that it can be faster than its 64-bit Intel i7-3770 processor counterpart with a speed up of 1.41. Optimization techniques using HLS directives were also utilised in the hardware implementation of the testing part of the PCA to speed up the design and reduce its latency.
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在Zynq SoC上使用高水平合成的气体识别系统的硬件PCA
气体识别系统的一个重要阶段是降维以加快处理速度。当系统在资源有限的硬件平台上实现时,这一点尤为重要。本文介绍了可用于异构Zynq平台气体识别系统的主成分分析(PCA)的学习和测试阶段的设计和实现。主成分分析从均值计算到数据投影到新空间的所有步骤,经过归一化过程,协方差矩阵和特征向量计算都是用C语言开发的,并使用新的Xilinx VIVADO高级合成(HLS)进行合成。特征向量的计算基于迭代Jacobi方法。设计的用于在Zynq系统芯片上计算PCA学习部分的硬件表明,它可以比64位Intel i7-3770处理器更快,速度提高1.41。使用HLS指令的优化技术也被用于PCA测试部分的硬件实现,以加快设计并减少其延迟。
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