Development of a smart system for gasoline car emissions diagnosis using Bayesian Network

Dedik Romahadi, W. Suprihatiningsih, Yudha Aji Pramono, Hui Xiong
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引用次数: 0

Abstract

A vehicle exhaust emissions test is an activity carried out to determine the content of the remaining combustion products that occur in the fuel in the vehicle engine. Many people do not understand exhaust gas content from emission tests, so to make this easier, this study aims to create a smart application that can diagnose vehicle emissions quickly and accurately using the Bayesian Network (BN) algorithm. Application development begins with BN modeling using the MSBNx application until the appropriate results are achieved. Validation of the BN structure that has been designed with various inputs is carried out to ensure that the BN modeling is correct. The next step is to compile the BN modeling algorithm in the MATLAB application so that it becomes a system that can process input in the form of measurement results for Toyota car emissions. The new BN model for vehicle emission gas diagnosis has been successfully constructed. The results of the system reading when there is an HC content of 217 ppm, the probability value of bad emissions increases to 63.5%. Of the 10 tests performed, the system was able to diagnose them all correctly.
基于贝叶斯网络的汽油车排放诊断智能系统的开发
汽车尾气排放测试是一项用于确定汽车发动机燃料中剩余燃烧产物含量的活动。许多人无法从排放测试中了解废气含量,因此为了使这更容易,本研究旨在创建一个智能应用程序,可以使用贝叶斯网络(BN)算法快速准确地诊断车辆排放。应用程序开发从使用MSBNx应用程序进行BN建模开始,直到获得适当的结果。对已设计的具有各种输入的BN结构进行验证,以确保BN建模是正确的。下一步是在MATLAB应用程序中编译BN建模算法,使其成为能够以丰田汽车排放测量结果的形式处理输入的系统。成功构建了用于汽车尾气诊断的BN模型。当HC含量为217 ppm时,系统读数的结果表明,不良排放的概率值增加到63.5%。在执行的10个测试中,系统能够正确诊断它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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