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Gas identification system based on an array of gas sensors and an integrated committee machine classifier.

机译:基于气体传感器阵列和集成委员会机器分类器的气体识别系统。

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摘要

In the past decade, there has been a growing interest for the development of olfactory machines and Electronic Nose (EN) systems in order to fulfill a variety of real-life applications. A number of applications have recently emerged in the area of safety (monitoring leakage of combustible gases), environmental applications (air quality and pollution control), medical applications and mobile robot navigation. New development of microelectronic gas sensors has recently enabled integrated low power EN system. Unfortunately the gas sensors do suffer a number of serious shortcomings such as non-selectivity, non-linearity, drift and slow response. To overcome some of these problems, an EN system typically includes an array of sensors followed by signal processing stages. To date, most of EN systems reported in the literature rely on software implementation of the processing stages.; Within this background, the contributions of this thesis are three-fold: At the sensor level, a sensor characterization platform was developed and a very comprehensive experimental data set was collected for gas detection using tin oxide gas sensors. The advantage and shortcomings of the sensor were also identified. Redundancy analysis for gas detection based on the tin oxide gas sensor array was performed. At the algorithmic level, a wide range of preprocessing techniques as well as pattern recognition algorithms (KNN, MLP, RBF, GMM, PPCA and SVM) were compared for the applications at hand. Based on these algorithms, a committee machine, which combines different classifiers was built in order to build a more accurate classifier. The committee machine relies on a novel voting and weighting functions which permits to build a robust classifier. At the hardware level, hardware-friendly architectures allowing to reduce the hardware resources for implementing the proposed classifier was proposed without affecting the classification performance. The effect of both hardware implementation and quantization errors on the classification performance was thoroughly investigated. It was found that the committee machine was more robust than other classifiers at lower precision. A hardware friendly digital VLSI implementation of GMM classifier using a novel pipelining strategy and piecewise linear approximation was implemented in 0.25mum CMOS process. Results showed that the classification of 100 gas patterns can be performed in 57mus with a classification accuracy of 92.5%. The overall gas identification system was implemented using dynamically reconfigurable FPGA. The system can be dynamically configured to accommodate different stages of the processing at different times allowing to efficiently share limited hardware resources of the FPGA. Test results demonstrate the effectiveness of the committee machine for gas sensor applications.
机译:在过去的十年中,人们对嗅觉机器和电子鼻(EN)系统的开发越来越感兴趣,以实现各种现实生活中的应用。最近在安全性(监视可燃气体的泄漏),环境应用(空气质量和污染控制),医疗应用和移动机器人导航领域出现了许多应用。微电子气体传感器的新发展最近使集成低功耗EN系统成为可能。不幸的是,气体传感器的确存在许多严重的缺点,例如非选择性,非线性,漂移和响应慢。为了克服其中的一些问题,EN系统通常包括一系列传感器,其后是信号处理阶段。迄今为止,文献中报道的大多数EN系统都依赖于处理阶段的软件实现。在此背景下,本论文的贡献是三方面的:在传感器层面,开发了传感器表征平台,并收集了非常全面的实验数据集,用于使用氧化锡气体传感器进行气体检测。还确定了传感器的优缺点。进行了基于氧化锡气体传感器阵列的气体检测冗余分析。在算法级别,针对手边的应用程序比较了各种预处理技术以及模式识别算法(KNN,MLP,RBF,GMM,PPCA和SVM)。基于这些算法,构建了一个将不同分类器组合在一起的委员会机器,以构建更准确的分类器。委员会机器依靠新颖的投票和加权功能,可以建立一个强大的分类器。在硬件级别上,提出了在不影响分类性能的情况下允许减少用于实施所提出的分类器的硬件资源的硬件友好体系结构。彻底研究了硬件实现和量化误差对分类性能的影响。发现委员会机器比其他分类器更鲁棒,但精度较低。在0.25μmCMOS工艺中,采用新颖的流水线策略和分段线性逼近,在GMM分类器上实现了硬件友好的数字VLSI实现。结果表明,可以在57mus中对100种气体模式进行分类,分类精度为92.5%。整个气体识别系统是使用可动态重新配置的FPGA实现的。该系统可以动态配置为在不同时间容纳处理的不同阶段,从而有效地共享FPGA的有限硬件资源。测试结果证明了委员会机在气体传感器应用中的有效性。

著录项

  • 作者

    Shi, Minghua.;

  • 作者单位

    Hong Kong University of Science and Technology (Hong Kong).;

  • 授予单位 Hong Kong University of Science and Technology (Hong Kong).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 165 p.
  • 总页数 165
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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