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ANN virtual sensors for emissions prediction and control

机译:用于排放预测和控制的ANN虚拟传感器

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摘要

This paper demonstrates the use of artificial neural networks virtual sensors in emissions prediction and control for a gasoline engine. Tailpipe emissions and engine parameters were first measured experimentally to form a comprehensive database for network training and testing. Individual predictive models were constructed using the optimization layer-by-layer neural network. Simulation results demonstrated that the networks, as virtual sensors, can accurately predict the engine parameters and emissions quantitatively and qualitatively with RMS errors below 9%. The second part of this paper then presents a virtual sensor control model which is the combination of the two individual emissions and engine predictive models developed previously. The main objective of this part is to control the exhaust emissions within the desired limits by predicting optimum engine parameters with the use of artificial neural network virtual sensors. Results showed that the emissions levels were successfully controlled within the defined limits, with maximum tolerance of 6%. This first part of this paper demonstrated that with the use of artificial neural network virtual sensors, emissions and engine parameters can be accurately predicted. Hence with accurate virtual sensors, emissions were then controlled within the desired limits by optimizing the engine parameters. This proposed work demonstrated a viable and accurate methodology in emissions predictive and control. By applying virtual sensor models, the need additional, cumbersome and costly measuring and monitoring devices can be eliminated.
机译:本文演示了人工神经网络虚拟传感器在汽油发动机排放预测和控制中的应用。首先通过实验测量尾气排放和发动机参数,以形成用于网络培训和测试的综合数据库。使用最优化的逐层神经网络构造各个预测模型。仿真结果表明,这些网络作为虚拟传感器,可以在RMS误差低于9%的情况下定量,定性地准确预测发动机参数和排放。然后,本文的第二部分介绍了一个虚拟传感器控制模型,该模型是两个单独的排放和先前开发的发动机预测模型的组合。该部分的主要目的是通过使用人工神经网络虚拟传感器预测最佳发动机参数,将废气排放控制在所需的限制内。结果表明,排放水平已成功控制在规定的限值内,最大容差为6%。本文的第一部分证明,通过使用人工神经网络虚拟传感器,可以准确预测排放和发动机参数。因此,通过精确的虚拟传感器,可通过优化发动机参数将排放控制在所需的限值内。这项拟议的工作证明了排放预测和控制的可行和准确的方法。通过应用虚拟传感器模型,可以消除对额外,繁琐且昂贵的测量和监视设备的需求。

著录项

  • 来源
    《Applied Energy》 |2011年第12期|p.4505-4516|共12页
  • 作者

    Wai Kean Yap; Vishy Karri;

  • 作者单位

    Centre for Renewable Energy and Low Emissions Technology, Charles Darwin University, Casuarina Campus, Ellengowan Drive Darwin, Northern Territory 0909, Australia;

    Australian College of Kuwait, P.O. Box 1411, Safat 13015, Kuwait;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    virtual sensor; artificial neural networks; emissions predictive control;

    机译:虚拟传感器;人工神经网络;排放预测控制;
  • 入库时间 2022-08-18 00:10:06

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