Machine learning approaches for predicting household transportation energy use
This paper presents four modeling techniques for predicting household transportation energy consumption by exploring decision trees, random forest, and neural networks in addition to elastic net regularization analyses. The main objective of this study is to evaluate how effectively these advanced s...
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doaj-f49caeead64742158d3953f5672ce8542020-11-25T03:48:37ZengElsevierCity and Environment Interactions2590-25202020-08-017100044Machine learning approaches for predicting household transportation energy useShideh Shams Amiri0Nariman Mostafavi1Earl Rusty Lee2Simi Hoque3Department of Civil, Architectural, and Environmental Engineering, Drexel University, Philadelphia, USADepartment of Civil, Architectural, and Environmental Engineering, Drexel University, Philadelphia, USADepartment of Civil and Environmental Engineering, Faculty at the University of Delaware, University of Delaware, 308 DuPont Hall, Newark, DE 1971, USADepartment of Civil, Architectural, and Environmental Engineering, Drexel University, Philadelphia, USA; Corresponding author at: Drexel University, 3141 Chestnut Street, Office AEL 270J, Philadelphia, PA 19104, USA.This paper presents four modeling techniques for predicting household transportation energy consumption by exploring decision trees, random forest, and neural networks in addition to elastic net regularization analyses. The main objective of this study is to evaluate how effectively these advanced statistical models can be applicable to a Transportation Module (TM) operating within the Integrated Urban Metabolism Analysis Tool (IUMAT), a system-based computational platform for urban sustainability evaluation. The Delaware Valley Regional Planning Commission (DVRPC) travel demand model is used to estimate household transportation energy use based on household trip demand generation, travel mode, fuel type, distance and duration. The Household Travel Survey (HTS) and Traffic Analysis Zones (TAZ) drawn from the DVRPC database are used for model training. Our results indicate that machine learning algorithms, thanks to their ability to accommodate non-linearity, have significantly higher accuracy in predicting household transportation demand. We show that the Neural Network (NN) model out-performs the decision tree model, predicting transportation energy demand resulting in lower Mean Squared Error and a higher R2. Using a Random Forest analysis for individual variable impact testing, we also demonstrate that the number of households' motorized trips and the travel distance are the most significant predictors of household transportation energy consumption.http://www.sciencedirect.com/science/article/pii/S2590252020300258Transportation energy modelingHousehold travel survey dataMachine learningRandom forestArtificial neural network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shideh Shams Amiri Nariman Mostafavi Earl Rusty Lee Simi Hoque |
spellingShingle |
Shideh Shams Amiri Nariman Mostafavi Earl Rusty Lee Simi Hoque Machine learning approaches for predicting household transportation energy use City and Environment Interactions Transportation energy modeling Household travel survey data Machine learning Random forest Artificial neural network |
author_facet |
Shideh Shams Amiri Nariman Mostafavi Earl Rusty Lee Simi Hoque |
author_sort |
Shideh Shams Amiri |
title |
Machine learning approaches for predicting household transportation energy use |
title_short |
Machine learning approaches for predicting household transportation energy use |
title_full |
Machine learning approaches for predicting household transportation energy use |
title_fullStr |
Machine learning approaches for predicting household transportation energy use |
title_full_unstemmed |
Machine learning approaches for predicting household transportation energy use |
title_sort |
machine learning approaches for predicting household transportation energy use |
publisher |
Elsevier |
series |
City and Environment Interactions |
issn |
2590-2520 |
publishDate |
2020-08-01 |
description |
This paper presents four modeling techniques for predicting household transportation energy consumption by exploring decision trees, random forest, and neural networks in addition to elastic net regularization analyses. The main objective of this study is to evaluate how effectively these advanced statistical models can be applicable to a Transportation Module (TM) operating within the Integrated Urban Metabolism Analysis Tool (IUMAT), a system-based computational platform for urban sustainability evaluation. The Delaware Valley Regional Planning Commission (DVRPC) travel demand model is used to estimate household transportation energy use based on household trip demand generation, travel mode, fuel type, distance and duration. The Household Travel Survey (HTS) and Traffic Analysis Zones (TAZ) drawn from the DVRPC database are used for model training. Our results indicate that machine learning algorithms, thanks to their ability to accommodate non-linearity, have significantly higher accuracy in predicting household transportation demand. We show that the Neural Network (NN) model out-performs the decision tree model, predicting transportation energy demand resulting in lower Mean Squared Error and a higher R2. Using a Random Forest analysis for individual variable impact testing, we also demonstrate that the number of households' motorized trips and the travel distance are the most significant predictors of household transportation energy consumption. |
topic |
Transportation energy modeling Household travel survey data Machine learning Random forest Artificial neural network |
url |
http://www.sciencedirect.com/science/article/pii/S2590252020300258 |
work_keys_str_mv |
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