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A novel feature selection technique for number classification problem using PNN-A plausible scheme for boiler flue gas analysis

机译:基于PNN-A可行方案的锅炉烟气分析数字分类问题的特征选择新技术

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摘要

A number of industrial problems involve accruing data from sensor like devices for further analysis more specifically in applications such as boiler flue gas analysis, computer vision, etc. Several feature selection techniques have been utilized by researchers for data conditioning, such as sequential search technique, branch and bound technique, best individual selection technique, etc. This study reports on the plausible solution for ascertaining the composition of gases during complex boiler flue gas data analysis by taking a number classification problem as a model. For this purpose an indigenously developed arithmetic residue (AR) scheme has been devised as a feature selection technique. For the purpose of classification of data (number of classes of gases), a probabilistic neural network (PNN) has been implemented and its classification capability has been analyzed first for the data acquired from ORSAT analyzer and then for the data from KANE~® analyzer.
机译:许多工业问题涉及从类似传感器的设备中获取数据,以进行更进一步的分析,尤其是在诸如锅炉烟气分析,计算机视觉等应用中。研究人员已将几种特征选择技术用于数据条件处理,例如顺序搜索技术,本研究报告了以数字分类问题为模型,在复杂锅炉烟气数据分析中确定气体成分的合理解决方案。为此目的,已经设计出一种本地开发的算术残差(AR)方案作为特征选择技术。为了对数据进行分类(气体类别的数量),已实现了概率神经网络(PNN),并且首先对从ORSAT分析仪获取的数据然后对从KANE〜®分析仪获取的数据的分类能力进行了分析。 。

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