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Intelligent Design of Metal Oxide Gas Sensor Arrays Using Reciprocal Kernel Support Vector Regression.

机译:使用相互核支持向量回归的金属氧化物气体传感器阵列智能设计。

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摘要

Metal oxides are a staple of the sensor industry. The combination of their sensitivity to a number of gases, and the electrical nature of their sensing mechanism, make the particularly attractive in solid state devices. The high temperature stability of the ceramic material also make them ideal for detecting combustion byproducts where exhaust temperatures can be high. However, problems do exist with metal oxide sensors. They are not very selective as they all tend to be sensitive to a number of reduction and oxidation reactions on the oxide's surface. This makes sensors with large numbers of sensors interesting to study as a method for introducing orthogonality to the system. Also, the sensors tend to suffer from long term drift for a number of reasons.;In this thesis I will develop a system for intelligently modeling metal oxide sensors and determining their suitability for use in large arrays designed to analyze exhaust gas streams. It will introduce prior knowledge of the metal oxide sensors' response mechanisms in order to produce a response function for each sensor from sparse training data. The system will use the same technique to model and remove any long term drift from the sensor response. It will also provide an efficient means for determining the orthogonality of the sensor to determine whether they are useful in gas sensing arrays.;The system is based on least squares support vector regression using the reciprocal kernel. The reciprocal kernel is introduced along with a method of optimizing the free parameters of the reciprocal kernel support vector machine. The reciprocal kernel is shown to be simpler and to perform better than an earlier kernel, the modified reciprocal kernel. Least squares support vector regression is chosen as it uses all of the training points and an emphasis was placed throughout this research for extracting the maximum information from very sparse data.;The reciprocal kernel is shown to be effective in modeling the sensor responses in the time, gas and temperature domains, and the dual representation of the support vector regression solution is shown to provide insight into the sensor's sensitivity and potential orthogonality. Finally, the dual weights of the support vector regression solution to the sensor's response are suggested as a fitness function for a genetic algorithm, or some other method for efficiently searching large parameter spaces.
机译:金属氧化物是传感器行业的重要组成部分。它们对多种气体的敏感性以及其传感机制的电气特性的结合,在固态设备中尤其具有吸引力。陶瓷材料的高温稳定性也使其成为检测排气温度可能很高的燃烧副产物的理想选择。但是,金属氧化物传感器确实存在问题。它们不是很选择性,因为它们都倾向于对氧化物表面上的许多还原和氧化反应敏感。这使得具有大量传感器的传感器作为将正交性引入系统的一种方法而受到研究。同样,由于多种原因,传感器也容易遭受长期漂移的影响。在本论文中,我将开发一种系统,用于对金属氧化物传感器进行智能建模,并确定其在用于分析废气流的大型阵列中的适用性。它将介绍金属氧化物传感器的响应机制的先验知识,以便根据稀疏的训练数据为每个传感器生成响应函数。系统将使用相同的技术来建模并消除传感器响应中的任何长期漂移。它还将提供一种确定传感器正交性的有效方法,以确定它们在气体传感阵列中是否有用。该系统基于使用倒数核的最小二乘支持向量回归。介绍了倒数核以及优化倒数核支持向量机的自由参数的方法。倒数内核显示为比更早的内核,即修改后的倒数内核更简单,并且性能更好。选择最小二乘支持向量回归,因为它使用了所有训练点,并且在整个研究过程中着重于从非常稀疏的数据中提取最大信息。;倒数核被证明可以有效地模拟当时的传感器响应,气体和温度域以及支持向量回归解决方案的对偶表示,可以帮助您深入了解传感器的灵敏度和潜在的正交性。最后,建议将支持向量回归解决方案对传感器响应的双重权重作为遗传算法或其他用于有效搜索大参数空间的其他方法的适应度函数。

著录项

  • 作者

    Dougherty, Andrew W.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Physics Condensed Matter.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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