Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NOx) Emissions Using Deep Learning

IF 2 Q2 ENGINEERING, MECHANICAL Frontiers in Mechanical Engineering Pub Date : 2022-03-03 DOI:10.3389/fmech.2022.840310
R. Pillai, V. Triantopoulos, A. Berahas, Matthew J. Brusstar, Ruonan Sun, Tim A. Nevius, A. Boehman
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引用次数: 6

Abstract

As emissions regulations for transportation become stricter, it is increasingly important to develop accurate nitrogen oxide (NO x ) emissions models for heavy-duty vehicles. However, estimation of transient NO x emissions using physics-based models is challenging due to its highly dynamic nature, which arises from the complex interactions between power demand, engine operation, and exhaust aftertreatment efficiency. As an alternative to physics-based models, a multi-dimensional data-driven approach is proposed as a framework to estimate NO x emissions across an extensive set of representative engine and exhaust aftertreatment system operating conditions. This paper employs Deep Neural Networks (DNN) to develop two models, an engine-out NO x and a tailpipe NO x model, to predict heavy-duty vehicle NO x emissions. The DNN models were developed using variables that are available from On-board Diagnostics from two datasets, an engine dynamometer and a chassis dynamometer dataset. Results from trained DNN models using the engine dynamometer dataset showed that the proposed approach can predict NO x emissions with high accuracy, where R 2 scores are higher than 0.99 for both engine-out and tailpipe NO x models on cold/hot Federal Test Procedure (FTP) and Ramped Mode Cycle (RMC) data. Similarly, the engine-out and tailpipe NO x models using the chassis dynamometer dataset achieved R 2 scores of 0.97 and 0.93, respectively. All models developed in this study have a mean absolute error percentage of approximately 1% relative to maximum NO x in the datasets, which is comparable to that of physical NO x emissions measurement analyzers. The input feature importance studies conducted in this work indicate that high accuracy DNN models (R 2 = 0.92–0.95) could be developed by utilizing minimal significant engine and aftertreatment inputs. This study also demonstrates that DNN NO x emissions models can be very effective tools for fault detection in Selective Catalytic Reduction (SCR) systems.
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使用深度学习建模和预测重型汽车发动机输出和排气管氮氧化物(NOx)排放
随着交通运输排放法规的日益严格,开发准确的重型车辆氮氧化物(NO x)排放模型变得越来越重要。然而,使用基于物理的模型来估计瞬态nox排放是具有挑战性的,因为它具有高度动态性,这源于动力需求、发动机运行和排气后处理效率之间复杂的相互作用。作为基于物理模型的替代方案,本文提出了一种多维数据驱动的方法,作为一种框架来估计一系列具有代表性的发动机和排气后处理系统运行条件下的nox排放。本文采用深度神经网络(Deep Neural Networks, DNN)建立了发动机输出nox和排气管nox两个模型来预测重型汽车的nox排放。DNN模型是使用车载诊断中两个数据集(发动机测功机和底盘测功机数据集)提供的变量开发的。使用发动机测功仪数据集训练的DNN模型的结果表明,该方法可以高精度地预测nox排放,在冷/热联邦测试程序(FTP)和坡道模式循环(RMC)数据中,发动机输出和排气管nox模型的r2得分均高于0.99。同样,使用底盘测功机数据集的发动机输出和排气管NO x模型的r2得分分别为0.97和0.93。本研究中开发的所有模型相对于数据集中最大NO x的平均绝对误差百分比约为1%,这与物理NO x排放测量分析仪的结果相当。本工作中进行的输入特征重要性研究表明,利用最小的显著引擎和后处理输入可以开发出高精度的DNN模型(r2 = 0.92-0.95)。该研究还表明,DNN nox排放模型可以成为选择性催化还原(SCR)系统中非常有效的故障检测工具。
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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来源期刊
Frontiers in Mechanical Engineering
Frontiers in Mechanical Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
4.40
自引率
0.00%
发文量
115
审稿时长
14 weeks
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