Microscopic Fuel Consumption and Emission Modeling

Mathematical models to predict vehicle fuel consumption and emission metrics are presented in this thesis. Vehicle fuel consumption and emissions are complex functions to be approximated in practice due to numerous variables affecting their outcome. Vehicle energy and emissions are particularly sens...

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Main Author: Ahn, Kyoungho
Other Authors: Civil Engineering
Format: Others
Published: Virginia Tech 2014
Subjects:
Online Access:http://hdl.handle.net/10919/36471
http://scholar.lib.vt.edu/theses/available/etd-122898-094232/
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-364712021-01-06T05:34:46Z Microscopic Fuel Consumption and Emission Modeling Ahn, Kyoungho Civil Engineering Van Aerde, Michael W. Rakha, Hesham A. Lin, Wei-hua Trani, Antonio A. ITS evaluation Microscopic modeling Transportation Fuel consumption and emission modeling Mathematical models to predict vehicle fuel consumption and emission metrics are presented in this thesis. Vehicle fuel consumption and emissions are complex functions to be approximated in practice due to numerous variables affecting their outcome. Vehicle energy and emissions are particularly sensitive to changes in vehicle state variables such as speed and acceleration, ambient conditions such as temperature, and driver control inputs such as acceleration pedal position and gear shift speeds, among others. Recent empirical studies have produced large amounts of data concerning vehicle fuel consumption and emissions rates and offer a wealth of information to transportation planners. Unfortunately, unless simple relationships are found between fuel consumption and vehicle emission metrics, their application in microscopic traffic and macroscopic planning models becomes prohibitive computationally. This thesis describes the development of microscopic energy and emission models using nonlinear multiple regression and neural network techniques to approximate vehicle fuel consumption and emissions field data. The energy and emission models described in this thesis utilized data collected by the Oak Ridge National Laboratory. The data include microscopic fuel consumption and emission measurements (CO, HC, and NOx) for eight light duty vehicles as a function of vehicle speed and acceleration. The thesis describes modeling processes and the tradeoffs between model accuracy and computational efficiency. Model verification results are included for two vehicle driving cycles. The models presented estimate vehicle fuel consumption within 2.5% of their actual measured values. Vehicle emissions errors fall in the range of 3-33% with correlation coefficients ranging between 0.94 and 0.99. Future transportation planning studies could also make use of the modeling approaches presented in the thesis. The models developed in this study have been incorporated into a microscopic traffic simulation tool called INTEGRATION to further demonstrate their application and relevance to traffic engineering studies. Two sample Intelligent Transportation Systems (ITS) application results are included. In the case studies, it was found that vehicle fuel consumption and emissions are more sensitive to the level of vehicle acceleration than to the vehicle speed. Also, the study shows signalization techniques can reduce fuel consumption and emissions significantly, while incident management techniques do not affect the energy and emissions rates notably. Master of Science 2014-03-14T20:50:52Z 2014-03-14T20:50:52Z 1998-11-10 1998-12-28 1999-01-06 1999-01-06 Thesis etd-122898-094232 http://hdl.handle.net/10919/36471 http://scholar.lib.vt.edu/theses/available/etd-122898-094232/ ETD.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic ITS evaluation
Microscopic modeling
Transportation
Fuel consumption and emission modeling
spellingShingle ITS evaluation
Microscopic modeling
Transportation
Fuel consumption and emission modeling
Ahn, Kyoungho
Microscopic Fuel Consumption and Emission Modeling
description Mathematical models to predict vehicle fuel consumption and emission metrics are presented in this thesis. Vehicle fuel consumption and emissions are complex functions to be approximated in practice due to numerous variables affecting their outcome. Vehicle energy and emissions are particularly sensitive to changes in vehicle state variables such as speed and acceleration, ambient conditions such as temperature, and driver control inputs such as acceleration pedal position and gear shift speeds, among others. Recent empirical studies have produced large amounts of data concerning vehicle fuel consumption and emissions rates and offer a wealth of information to transportation planners. Unfortunately, unless simple relationships are found between fuel consumption and vehicle emission metrics, their application in microscopic traffic and macroscopic planning models becomes prohibitive computationally. This thesis describes the development of microscopic energy and emission models using nonlinear multiple regression and neural network techniques to approximate vehicle fuel consumption and emissions field data. The energy and emission models described in this thesis utilized data collected by the Oak Ridge National Laboratory. The data include microscopic fuel consumption and emission measurements (CO, HC, and NOx) for eight light duty vehicles as a function of vehicle speed and acceleration. The thesis describes modeling processes and the tradeoffs between model accuracy and computational efficiency. Model verification results are included for two vehicle driving cycles. The models presented estimate vehicle fuel consumption within 2.5% of their actual measured values. Vehicle emissions errors fall in the range of 3-33% with correlation coefficients ranging between 0.94 and 0.99. Future transportation planning studies could also make use of the modeling approaches presented in the thesis. The models developed in this study have been incorporated into a microscopic traffic simulation tool called INTEGRATION to further demonstrate their application and relevance to traffic engineering studies. Two sample Intelligent Transportation Systems (ITS) application results are included. In the case studies, it was found that vehicle fuel consumption and emissions are more sensitive to the level of vehicle acceleration than to the vehicle speed. Also, the study shows signalization techniques can reduce fuel consumption and emissions significantly, while incident management techniques do not affect the energy and emissions rates notably. === Master of Science
author2 Civil Engineering
author_facet Civil Engineering
Ahn, Kyoungho
author Ahn, Kyoungho
author_sort Ahn, Kyoungho
title Microscopic Fuel Consumption and Emission Modeling
title_short Microscopic Fuel Consumption and Emission Modeling
title_full Microscopic Fuel Consumption and Emission Modeling
title_fullStr Microscopic Fuel Consumption and Emission Modeling
title_full_unstemmed Microscopic Fuel Consumption and Emission Modeling
title_sort microscopic fuel consumption and emission modeling
publisher Virginia Tech
publishDate 2014
url http://hdl.handle.net/10919/36471
http://scholar.lib.vt.edu/theses/available/etd-122898-094232/
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