Road freight transport often requires the prediction of volume. Such knowledge is necessary to capture trends in the industry and support decision making by large and small trucking companies. The aim of the presented work is to demonstrate that application of some artificial intelligence methods can improve the accuracy of the forecasts. The first method employed was double exponential smoothing. The modification of this method has been proposed. Not only the parameters but also the initial values were set in order to minimize the mean absolute percentage error (MAPE) using the artificial immune system. This change resulted in a marked improvement in the effects of minimization, and suggests that the variability of the initial value of S2 ...
As important as the classical approaches such as Akaikeꞌs AIC information and Bayesian BIC criterion...
This study aims to improve the forecasting accuracy for the monthly material flows of an area forwar...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Road freight transport often requires the prediction of volume. Such knowledge is necessary to captu...
Determining the size and quality of transport needs would not be possible without adequate forecasti...
Reliable freight rate forecasts are essential to stimulate ocean transportation and ensure stakehold...
The rapid pace of developments in Artificial Intelligence (AI) is providing unprecedented opportunit...
Previous studies have concluded that the use of artificial neural networks (ANNs) is a promising new...
The aim of the work presented in this paper is to forecast sales volumes as accurately as possible a...
The aim of this paper is to show to what extent Artificial Intelligence can be used to optimize fore...
Motivation: Traffic forecasting is becoming a vital component of our travel experience. It plays a k...
<p>Road freight transportation between provinces of a country has an important effect on the traffic...
Road freight transportation between provinces of a country has an important effect on the traffic fl...
A waybill is a document that accompanies the freight during transportation. The document contains es...
Transport modeling in general and freight transport are becoming important tools for investigating t...
As important as the classical approaches such as Akaikeꞌs AIC information and Bayesian BIC criterion...
This study aims to improve the forecasting accuracy for the monthly material flows of an area forwar...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Road freight transport often requires the prediction of volume. Such knowledge is necessary to captu...
Determining the size and quality of transport needs would not be possible without adequate forecasti...
Reliable freight rate forecasts are essential to stimulate ocean transportation and ensure stakehold...
The rapid pace of developments in Artificial Intelligence (AI) is providing unprecedented opportunit...
Previous studies have concluded that the use of artificial neural networks (ANNs) is a promising new...
The aim of the work presented in this paper is to forecast sales volumes as accurately as possible a...
The aim of this paper is to show to what extent Artificial Intelligence can be used to optimize fore...
Motivation: Traffic forecasting is becoming a vital component of our travel experience. It plays a k...
<p>Road freight transportation between provinces of a country has an important effect on the traffic...
Road freight transportation between provinces of a country has an important effect on the traffic fl...
A waybill is a document that accompanies the freight during transportation. The document contains es...
Transport modeling in general and freight transport are becoming important tools for investigating t...
As important as the classical approaches such as Akaikeꞌs AIC information and Bayesian BIC criterion...
This study aims to improve the forecasting accuracy for the monthly material flows of an area forwar...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...