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FPGA Implementation for Odor Identification with Depthwise Separable Convolutional Neural Network

Zhuofeng Mo, Dehan Luo, Tengteng Wen, Yu Cheng, Xin Li

2021Sensors25 citationsDOIOpen Access PDF

Abstract

The integrated electronic nose (e-nose) design, which integrates sensor arrays and recognition algorithms, has been widely used in different fields. However, the current integrated e-nose system usually suffers from the problem of low accuracy with simple algorithm structure and slow speed with complex algorithm structure. In this article, we propose a method for implementing a deep neural network for odor identification in a small-scale Field-Programmable Gate Array (FPGA). First, a lightweight odor identification with depthwise separable convolutional neural network (OI-DSCNN) is proposed to reduce parameters and accelerate hardware implementation performance. Next, the OI-DSCNN is implemented in a Zynq-7020 SoC chip based on the quantization method, namely, the saturation-flooring KL divergence scheme (SF-KL). The OI-DSCNN was conducted on the Chinese herbal medicine dataset, and simulation experiments and hardware implementation validate its effectiveness. These findings shed light on quick and accurate odor identification in the FPGA.

Topics & Concepts

Field-programmable gate arrayComputer scienceConvolutional neural networkElectronic noseArtificial neural networkQuantization (signal processing)Identification (biology)Artificial intelligenceComputer hardwarePattern recognition (psychology)AlgorithmEmbedded systemBotanyBiologyAdvanced Chemical Sensor TechnologiesInsect Pheromone Research and ControlAnalytical Chemistry and Sensors
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