In this paper, we propose and assess the accuracy of new fuel consumption estimation models for vehicle routing. Based on real-world data consisting of instantaneous fuel consumption, time-varying speeds observations, and high-frequency traffic, we propose effective methods to estimate fuel consumption. By carrying out nonlinear regression analysis using supervised learning methods, namely Neural Networks, Support Vector Machines, Conditional Inference Trees, and Gradient Boosting Machines, we develop new models that provide better prediction accuracy than classical models. We correctly estimate consumption for time-dependent point-to-point routing under realistic conditions. Our methods provide a more precise alternative to classical regre...
Instead of the conventional time period, we employed the vehicle trip distance while creating custom...
With the increasing cost of fuel price minimizing fuel consumption is a major concern as far as sust...
With an unstable oil market and increasing prices, the focus has never been higher on reducing the f...
This paper advocates a data summarization approach based on distance rather than the traditional tim...
A number of analytical models have been described in the literature to estimate the fuel consumption...
This article investigates the ability of data-driven models to estimate instantaneous fuel consumpti...
Heavy-duty trucks contribute approximately 20% of fuel consumption in the United States of America (...
This paper presents the application of three Machine Learning techniques to fuel consumption modelli...
This study aims at a possible solution to predict the fuel consumption of heavy duty diesel trucks, ...
The reduction of CO2 emission which is in direct relationship with fuel consumption is of prime impo...
The aim of this Master thesis is to provide a statistical analysis of the factors inuencing the fuel...
Fuel consumption of a vehicle depends on several internal factors such as distance, load, vehicle c...
Fuel consumption (FC) is one of the key factors indetermining expenses of operating a heavy-duty veh...
One of the major contributors of human-made greenhouse gases (GHG) namely carbon dioxide (CO2), meth...
© 2018 Computer-Aided Civil and Infrastructure Engineering In this research, by taking advantage of ...
Instead of the conventional time period, we employed the vehicle trip distance while creating custom...
With the increasing cost of fuel price minimizing fuel consumption is a major concern as far as sust...
With an unstable oil market and increasing prices, the focus has never been higher on reducing the f...
This paper advocates a data summarization approach based on distance rather than the traditional tim...
A number of analytical models have been described in the literature to estimate the fuel consumption...
This article investigates the ability of data-driven models to estimate instantaneous fuel consumpti...
Heavy-duty trucks contribute approximately 20% of fuel consumption in the United States of America (...
This paper presents the application of three Machine Learning techniques to fuel consumption modelli...
This study aims at a possible solution to predict the fuel consumption of heavy duty diesel trucks, ...
The reduction of CO2 emission which is in direct relationship with fuel consumption is of prime impo...
The aim of this Master thesis is to provide a statistical analysis of the factors inuencing the fuel...
Fuel consumption of a vehicle depends on several internal factors such as distance, load, vehicle c...
Fuel consumption (FC) is one of the key factors indetermining expenses of operating a heavy-duty veh...
One of the major contributors of human-made greenhouse gases (GHG) namely carbon dioxide (CO2), meth...
© 2018 Computer-Aided Civil and Infrastructure Engineering In this research, by taking advantage of ...
Instead of the conventional time period, we employed the vehicle trip distance while creating custom...
With the increasing cost of fuel price minimizing fuel consumption is a major concern as far as sust...
With an unstable oil market and increasing prices, the focus has never been higher on reducing the f...