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Artificial neural network modelling of a gas sensor for liquefied petroleum gas detection

机译:用于液化石油气检测的气体传感器的人工神经网络建模

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Currently, low power Metal Oxide gas Sensors (MOXs) are widely employed in gas detection because of its benefits, such as high sensitivity and low cost. However, MOX presents several problems, as well as lack of selectivity and environment effect. In this paper, it is presented an Artificial Neural Network (ANN) that models an MOX sensor (TGS 2610) used in a operating environment. The structure and the learning of the neuronal model are optimized by the Genetic Algorithms (GA). TGS 2610 is a type of gas sensor based on thin film semiconductor that associate very high sensitivity to Liquefied Petroleum gas (LP gas) with low energy consumption and long duration. This model includes dependence in LP gas like ethanol, hydrogen, methane and iso-butane/propane. Sensor modelling is used to avoid accidents that may be generated in practice, studying and analyzing problems in the simulation to avoid them in practice. It was proved in this paper that ANN technique was a powerful tool for modelling LP gas sensor. The comparative study of the results from ANN model with the experimental data shows a good agreement which validates the proposed models.
机译:当前,低功率金属氧化物气体传感器(MOX)由于其优点(例如高灵敏度和低成本)而广泛用于气体检测。然而,MOX存在一些问题,以及缺乏选择性和环境影响。在本文中,提出了一种人工神经网络(ANN),可对在操作环境中使用的MOX传感器(TGS 2610)进行建模。神经元模型的结构和学习通过遗传算法(GA)进行了优化。 TGS 2610是一种基于薄膜半导体的气体传感器,具有很高的灵敏度与液化石油气(LP气体),且能耗低且持续时间长。该模型包括对LP气体(如乙醇,氢气,甲烷和异丁烷/丙烷)的依赖性。传感器建模用于避免在实践中可能发生的事故,研究和分析仿真中的问题以在实践中避免事故发生。本文证明了人工神经网络技术是用于建模LP气体传感器的强大工具。 ANN模型的结果与实验数据的比较研究表明,良好的一致性验证了所提出的模型。

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