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Gas Sensors Characterization and Multilayer Perceptron (MLP) Hardware Implementation for Gas Identification Using a Field Programmable Gate Array (FPGA)

机译:使用现场可编程门阵列(FPGA)进行气体识别的气体传感器特性和多层感知器(MLP)硬件实现

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摘要

This paper develops a primitive gas recognition system for discriminating between industrial gas species. The system under investigation consists of an array of eight micro-hotplate-based SnO2 thin film gas sensors with different selectivity patterns. The output signals are processed through a signal conditioning and analyzing system. These signals feed a decision-making classifier, which is obtained via a Field Programmable Gate Array (FPGA) with Very High-Speed Integrated Circuit Hardware Description Language. The classifier relies on a multilayer neural network based on a back propagation algorithm with one hidden layer of four neurons and eight neurons at the input and five neurons at the output. The neural network designed after implementation consists of twenty thousand gates. The achieved experimental results seem to show the effectiveness of the proposed classifier, which can discriminate between five industrial gases.
机译:本文开发了一种用于区分工业气体种类的原始气体识别系统。所研究的系统由八个具有不同选择性模式的基于微型平板的SnO2薄膜气体传感器组成。输出信号通过信号调节和分析系统进行处理。这些信号馈给决策分类器,该分类器是通过具有超高速集成电路硬件描述语言的现场可编程门阵列(FPGA)获得的。分类器基于基于反向传播算法的多层神经网络,其中一个隐藏层包括四个神经元和八个神经元的输入层和五个隐藏的神经元。实施后设计的神经网络由两万个门组成。获得的实验结果似乎表明了所提出的分类器的有效性,该分类器可以区分五种工业气体。

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