基于多层感知器的燃料掺假检测建模

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引用次数: 2

摘要

燃油掺假是指非法或不允许将未知物质掺入内燃机,导致产品不符合要求和规格的行为。通常,在沸点范围内具有或多或少相似成分的廉价碳氢化合物被添加为添加剂,从而改变和降低基础燃料的质量。这种方法被交易界用来快速获取非法利润。这是由于汽车尾气对环境的污染和对人体的危害。非法添加乙醇和甲醇以提高辛烷值,导致燃油管道泄漏废气。为了检测污染物,在实验室层面和法规层面都应该有适当的方法。人工神经网络技术是一种比现有的任何方法都精确的燃料掺假分析技术。在物联网的帮助下,现场检测汽油和碳氢化合物馏分,可以通过远程控制,并通过散射收集数据。这些数据将有助于发现从排气管排放到空气中的汽油、柴油污染物中的杂质。因此,本文采用了一种先进的计算技术——多层感知器(MPL)来识别燃料中的杂质。这将减少全球变暖和有毒疾病。多层感知器(MLP)是最有效的燃料掺杂检测技术之一;MLP是人工神经网络中的前馈类。它由三层组成,即输入层、隐藏层和输出层。对于二维单视角的识别和三维目标估计,采用多层感知器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling with Multilayer Perceptron for Detection of Fuel Adulteration using Python Programming
Adulteration of fuel is introduction of an unknown substance into motor spirit unlawfully or not permitted resulting the product does not conform to the needs and specifications. Normally cheaper boiling point range hydrocarbons having more or less similar composition are added as additives leading to alter and degrade the quality of the base fuels. This method is adopted by the trading community for their quick illegal profits. This is coming as tail pipe exhaust in automobile lead to environmental pollution as well as human hazard. Ethanol and methanol added illegally to increase octane levels caused fuel pipes to leak exhaust. In order to detect the pollutants there shall be proper way both at laboratory level as well as statute. Artificial Neural Networks technique to analyze the fuel adulteration is a precise technique than any other existing methods. The gasoline, hydrocarbon fractions are detected at the in-situ with the help of Internet of Things and can be controlling through the remote and that data can be collected through the smattering. This data will help in the finding the impurities in the gasoline, diesel pollutants released into the air from tailpipe exhaust. So in this paper we are using some advance computational technique called Multilayer perceptron (MPL) to identify the impurities in the fuels. This will reduce the global warming and toxic diseases. Multilayer perceptron (MLP) is one of the most efficient techniques for Detection of fuel adulterants; MLP is class of feed forward in the artificial neural network. It consists of Three layers i.e., input layer, hidden layer and output layer. For the recognition and 3D objects estimation from a 2D single perspective view Multilayer perceptron is used.
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