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Artificial Neural Network: Gas recognition

机译:人工神经网络:气体识别

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摘要

The objective of this paper is to describe development of gas recognition tool based on Artificial Neural Network (ANN). This recognition tool has capability to recognize five different gases: ammonia, acetaldehyde, acetone, ethylene, and ethanol. Developed ANN is trained using data from the UC Irvine Machine Learning Repository database from October, 2013. The implemented system for gas recognition uses following input parameters: concentration of gas (ppmv), flammability, constant pressure (kJ/kgK), constant volume (Kj/kgK), specific heat capacities (cp/cv) and molecular weight (g/mol). Developed neural network consists of 30 neurons distributed in a single hidden layer. For purpose of training 174 samples were used. Testing dataset contained 64 samples, 38 of which were used as a testing set. With 36 samples correctly classified resulting in accuracy and specificity were 97.37%. These results were obtained after adjusting neural network using several different parameters which is explained in this paper.
机译:本文的目的是描述基于人工神经网络(ANN)的气体识别工具的发展。该识别工具具有识别五种不同的气体:氨,乙醛,丙酮,乙烯和乙醇。由2013年10月的UC IRVINE机器学习储存库数据库的数据培训了ANN。用于气体识别的实施系统使用以下输入参数:气体浓度(PPMV),易燃性,恒压(KJ / KGK),恒定量( KJ / KGK),比热容(CP / CV)和分子量(G / mol)。开发的神经网络由30个神经元分布在单个隐藏层中组成。出于训练174个样品。测试数据集包含64个样本,其中38个被用作测试集。使用36个样本正确分类,导致精度和特异性为97.37%。在使用本文中解释的几种不同参数调整神经网络之后获得了这些结果。

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