4.5 Article

A Comparative Study on Fuel Consumption Prediction Methods of Heavy-Duty Diesel Trucks Considering 21 Influencing Factors

Journal

ENERGIES
Volume 14, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/en14238106

Keywords

environmental protection; fleet management system; heavy-duty diesel trucks; prediction of fuel consumption; binary Logistic regression; machine learning

Categories

Funding

  1. National Natural Science Foundation of China [51778141, 52072069]
  2. Jiangsu Creative [KYCX20_00138]
  3. Transportation Department of Henan Province [2018G7]

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This study analyzed the influence of various factors on fuel consumption during driving heavy-duty diesel trucks (HDDTs) using naturalistic driving data. Different machine learning algorithms were used to build fuel consumption predictors, with random forest showing the best performance in prediction accuracy. The conclusions can help transportation companies in formulating driving training strategies and reducing energy consumption and emissions.
With increasingly prominent environmental problems, controlling automobile exhaust has become essential to the environment. The fuel consumption of transportation is the critical factor that determines exhaust gas. By analyzing the naturalistic driving data of heavy-duty diesel trucks (HDDTs), this paper explored the influence of engine technical state, road features, weather, and temperature conditions on fuel consumption during driving. The detailed process is as follows: Firstly, we collected 1153 naturalistic driving data from 34 HDDTs and made a specific analysis and summary description of the data; secondly, by establishing a binary Logistic regression model, we quantitatively explored the influence of significant factors on the fuel consumption; meanwhile, based on quantitative analysis of factor's effectiveness, this research used several machine learning algorithms (back-propagation neural network, decision tree, and random forest) to build fuel consumption predictors, and compared the prediction performance of different algorithms. The results showed that the prediction accuracy of the decision tree, back-propagation (BP) neural network, and random forest is 81.38%, 83.98%, and 86.58%, respectively. The random forest showed the best performance in predicting. The conclusions can assist transportation companies in formulating driving training strategies and contribute to reducing energy consumption and emissions.

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