MRAM-Based Stochastic Oscillators for Adaptive Non-Uniform Sampling of Sparse Signals in IoT Applications

Soheil Salehi, Alireza Zaeemzadeh, Adrian Tatulian, N. Rahnavard, R. Demara
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引用次数: 11

Abstract

Recent advances to hardware integration and realization of highly-efficient Compressive Sensing (CS) approaches have inspired novel circuit and architectural-level approaches. These embrace the challenge to design more optimal nonuniform CS solutions that consider device-level constraints for IoT applications wherein lifetime energy, device area, and manufacturing costs are highly-constrained, but meanwhile, the sensing environment is rapidly changing. In this manuscript, we develop a novel adaptive hardware-based approach for non-uniform compressive sampling of sparse and time-varying signals. The proposed Adaptive Sampling of Sparse IoT signals via STochastic-oscillators (ASSIST) approach intelligently generates the CS measurement matrix by distributing the sensing energy among coefficients by considering the signal characteristics such as sparsity rate and noise level obtained in the previous time step. In our proposed approach, Magnetic Random Access Memory (MRAM)-based stochastic oscillators are utilized to generate the random bitstreams used in the CS measurement matrix. SPICE and MATLAB circuit-algorithm simulation results indicate that ASSIST efficiently achieves the desired non-uniform recovery of the original signals with varying sparsity rates and noise levels.
物联网应用中基于mram的稀疏信号自适应非均匀采样随机振荡器
硬件集成和高效压缩感知(CS)方法的最新进展激发了新的电路和架构级方法。这些挑战包括设计更优的非统一CS解决方案,考虑到物联网应用的设备级限制,其中生命周期能量,设备面积和制造成本受到高度限制,但同时,传感环境正在迅速变化。在本文中,我们开发了一种新的基于硬件的自适应方法,用于稀疏和时变信号的非均匀压缩采样。本文提出的基于随机振荡器的物联网稀疏信号自适应采样(ASSIST)方法,通过考虑前一时间步长获得的信号稀疏率和噪声水平等特征,将感知能量分配到系数中,智能地生成CS测量矩阵。在我们提出的方法中,利用基于磁随机存取存储器(MRAM)的随机振荡器来生成CS测量矩阵中使用的随机比特流。SPICE和MATLAB电路算法仿真结果表明,ASSIST有效地实现了原始信号在不同稀疏率和噪声水平下的非均匀恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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