Energy-efficient gas recognition system with event-driven power control

Chun-Ying Huang, Po-Tsang Huang, Chih-Chao Yang, C. Chuang, W. Hwang
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Abstract

For energy-limited applications of electronic nose, an application-specific architecture is essential to realize a low-energy gas recognition system. In this paper, a pseudo-zero-leakage gas recognition system is proposed to recognize different gases using event-driven power control. Additionally, this gas recognition system can recognize four different gases with concentration information by drift-insensitive on-line training, achieving 100% recognition accuracy for gas type and 89.4% accuracy for concentration analysis. For further reducing the overall energy consumption, both near-threshold SRAM and low-voltage embedded ReRAM are integrated into the proposed system, respectively. Based on TSMC 65nm LP CMOS process, the total energy of the gas recognition systems with SRAM and ReRAM are only 8.62μJ and 2.04μJ in a sensing period, respectively. Hence, an energy-efficient gas recognition system can be realized by a pseudo-zero-leakage event-driven structure with ReRAM.
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具有事件驱动功率控制的节能气体识别系统
对于能量有限的电子鼻应用,实现低能量气体识别系统必须采用特定的应用架构。本文提出了一种基于事件驱动功率控制的伪零泄漏气体识别系统。此外,该气体识别系统可以通过漂移不敏感在线训练识别4种不同的气体浓度信息,气体类型识别准确率达到100%,浓度分析准确率达到89.4%。为了进一步降低整体能耗,在系统中分别集成了近阈值SRAM和低压嵌入式ReRAM。基于台积电65nm LP CMOS工艺的SRAM和ReRAM气体识别系统在一个传感周期内的总能量分别仅为8.62μJ和2.04μJ。因此,基于ReRAM的伪零泄漏事件驱动结构可以实现高效节能的气体识别系统。
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