The paper develops a goal programming-based multi-criteria methodology, for assessing different machine learning (ML) regression models under accuracy and time efficiency criteria. The developed methodology provides users with high flexibility in assessing the models as it allows for a fast and computationally efficient sensitivity analysis of accuracy and time significance weights as well as accuracy and time significance threshold values. Four regression models were assessed, namely the decision tree, random forest, support vector and the neural network. The developed methodology was employed to forecast the time to failures of NASA Turbofans. The results reveal that decision tree regression (DTR) seems to be preferred for low values of a...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Recently, machine learning techniques have been used to produce increasingly effective solutions to ...
For the future demand prediction of identification documents the National Office for Identity Data i...
A significant potential and interest is found for Predictive Maintenance (PdM) and Machine Learning ...
There is a large amount of information and maintenance data in the aviation industry that could be u...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
Predictive maintenance (PdM) is indicated state of the machine to perform a schedule of maintenance ...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
In the production, the efficient employment of machines is realized as a source of industry competit...
Maintenance is an activity that cannot be separated from the context of product manufacturing. It is...
The increased availability of data gives rise to the use of machine learning methods for purposes li...
A model with high accuracy of machine failure prediction is important for any machine life cycle. In...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
n the field of industry 4.0, one of the sectors in which research is particularly active is the area...
Nowadays, the industrial environment is characterised by growing competitiveness, short response tim...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Recently, machine learning techniques have been used to produce increasingly effective solutions to ...
For the future demand prediction of identification documents the National Office for Identity Data i...
A significant potential and interest is found for Predictive Maintenance (PdM) and Machine Learning ...
There is a large amount of information and maintenance data in the aviation industry that could be u...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
Predictive maintenance (PdM) is indicated state of the machine to perform a schedule of maintenance ...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
In the production, the efficient employment of machines is realized as a source of industry competit...
Maintenance is an activity that cannot be separated from the context of product manufacturing. It is...
The increased availability of data gives rise to the use of machine learning methods for purposes li...
A model with high accuracy of machine failure prediction is important for any machine life cycle. In...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
n the field of industry 4.0, one of the sectors in which research is particularly active is the area...
Nowadays, the industrial environment is characterised by growing competitiveness, short response tim...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Recently, machine learning techniques have been used to produce increasingly effective solutions to ...
For the future demand prediction of identification documents the National Office for Identity Data i...