According to Bureau of Transportation Statistics, the U.S. transportation system handled 14,329 million ton-miles of freight per day in 2020. Understanding the generation of these freight shipments is crucial for transportation researchers, planners, and policymakers to design and plan for a more efficient and connected freight transportation system. Traditionally, the freight generation modeling has been based on Ordinary Least Square (OLS) regression, although more advanced Machine Learning (ML) algorithms have been evaluated and proven to have excellent performance in various transportation applications in recent years. Furthermore, one modeling approach applied for one industry might not always be applicable for another as their freight...
This paper presents the machine learning (ML) method, a novel approach that could be a profitable id...
Background With the development of global trade, the volume of goods transported around the world is...
Accurate estimation of the load weight of freight trains is crucial for ensuring safe, efficient and...
Linear Regression is used as a prediction tool in transportation planning, traffic data analysis and...
Seaports host international cargo operations and are primary generators of freight traffic in the Un...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
A waybill is a document that accompanies the freight during transportation. The document contains es...
The heavy truck traffic generated by major seaports can have huge impacts on local and regional tran...
Ports are the primary generators of freight traffic in the United States. Seaport operations will re...
Ports are the primary generators of freight traffic in the United States. Seaport operations will re...
Surface transportation has evolved through technology advancements using parallel knowledge areas su...
Not having an exact cost standard can present a problem for setting the shipping costs on a freight ...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
This paper presents the machine learning (ML) method, a novel approach that could be a profitable id...
Background With the development of global trade, the volume of goods transported around the world is...
Accurate estimation of the load weight of freight trains is crucial for ensuring safe, efficient and...
Linear Regression is used as a prediction tool in transportation planning, traffic data analysis and...
Seaports host international cargo operations and are primary generators of freight traffic in the Un...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
A waybill is a document that accompanies the freight during transportation. The document contains es...
The heavy truck traffic generated by major seaports can have huge impacts on local and regional tran...
Ports are the primary generators of freight traffic in the United States. Seaport operations will re...
Ports are the primary generators of freight traffic in the United States. Seaport operations will re...
Surface transportation has evolved through technology advancements using parallel knowledge areas su...
Not having an exact cost standard can present a problem for setting the shipping costs on a freight ...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
A methodology for building a truck trip generation model by use of artificial neural networks from v...
This paper presents the machine learning (ML) method, a novel approach that could be a profitable id...
Background With the development of global trade, the volume of goods transported around the world is...
Accurate estimation of the load weight of freight trains is crucial for ensuring safe, efficient and...