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Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning

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,...

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Autores principales: Pillai, Rinav, Triantopoulos, Vassilis, Berahas, Albert S., Brusstar, Matthew, Sun, Ruonan, Nevius, Tim, Boehman, André L.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9016636/
https://www.ncbi.nlm.nih.gov/pubmed/35445105
http://dx.doi.org/10.3389/fmech.2022.840310
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author Pillai, Rinav
Triantopoulos, Vassilis
Berahas, Albert S.
Brusstar, Matthew
Sun, Ruonan
Nevius, Tim
Boehman, André L.
author_facet Pillai, Rinav
Triantopoulos, Vassilis
Berahas, Albert S.
Brusstar, Matthew
Sun, Ruonan
Nevius, Tim
Boehman, André L.
author_sort Pillai, Rinav
collection PubMed
description 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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spelling pubmed-90166362022-04-19 Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning Pillai, Rinav Triantopoulos, Vassilis Berahas, Albert S. Brusstar, Matthew Sun, Ruonan Nevius, Tim Boehman, André L. Front Mech Eng Article 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. 2022 /pmc/articles/PMC9016636/ /pubmed/35445105 http://dx.doi.org/10.3389/fmech.2022.840310 Text en https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Article
Pillai, Rinav
Triantopoulos, Vassilis
Berahas, Albert S.
Brusstar, Matthew
Sun, Ruonan
Nevius, Tim
Boehman, André L.
Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title_full Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title_fullStr Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title_full_unstemmed Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title_short Modeling and Predicting Heavy-Duty Vehicle Engine-Out and Tailpipe Nitrogen Oxide (NO(x)) Emissions Using Deep Learning
title_sort modeling and predicting heavy-duty vehicle engine-out and tailpipe nitrogen oxide (no(x)) emissions using deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9016636/
https://www.ncbi.nlm.nih.gov/pubmed/35445105
http://dx.doi.org/10.3389/fmech.2022.840310
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