The Line Feeding Problem (LFP) involves the delivery of components to the production area. Previous models minimise the delivery costs and optimally assign each component to a line feeding mode between line stocking, kitting, and sequencing but cannot provide easily comprehensible guidelines. We use the Classification And Regression Tree (CART) algorithm to develop, in a supervised way, a decision tree based on problems that are solved with a Mixed Integer Programming (MIP) model for training purposes. Based on selected attributes of the components and the manufacturing environment, the decision tree suggests a line feeding mode for every component. For a synthetically determined training and evaluation data set, we find that the classifica...
Line feeding policy decision models decide upon whether a warehouse part is supplied by line stockin...
In the era of mass customisation, feeding parts to mixed-model assembly lines has proven to be a com...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
As a large number of companies are resorting to increased product variety and customization, a growi...
In several industries, increasing attention is being devoted to the design and management of part fe...
Feeding mixed model assembly lines with parts is a complex task in an era of mass customization, and...
A production line is a set of sequential operations established in a factory where materials are put...
The performance of mixed-model assembly lines used in sectors such as the automotive industry depend...
In recent times, feeding mixed model assembly lines with parts has attracted the attention of practi...
International audienceThe performance of mixed-model assembly lines used in sectors such as the auto...
Traditional production methods have been slowly replaced by assembly lines as manufacturers are faci...
Manual work accounts for one of the largest workgroups in the European manufacturing sector, and imp...
This paper deals with applications of machine learning algorithms in manufacturing. Machine learning...
Trends like mass-customisation and the increasing number of models produced and parts used on a sing...
This paper addresses the problem of allocating work elements with various learning slopes to station...
Line feeding policy decision models decide upon whether a warehouse part is supplied by line stockin...
In the era of mass customisation, feeding parts to mixed-model assembly lines has proven to be a com...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
As a large number of companies are resorting to increased product variety and customization, a growi...
In several industries, increasing attention is being devoted to the design and management of part fe...
Feeding mixed model assembly lines with parts is a complex task in an era of mass customization, and...
A production line is a set of sequential operations established in a factory where materials are put...
The performance of mixed-model assembly lines used in sectors such as the automotive industry depend...
In recent times, feeding mixed model assembly lines with parts has attracted the attention of practi...
International audienceThe performance of mixed-model assembly lines used in sectors such as the auto...
Traditional production methods have been slowly replaced by assembly lines as manufacturers are faci...
Manual work accounts for one of the largest workgroups in the European manufacturing sector, and imp...
This paper deals with applications of machine learning algorithms in manufacturing. Machine learning...
Trends like mass-customisation and the increasing number of models produced and parts used on a sing...
This paper addresses the problem of allocating work elements with various learning slopes to station...
Line feeding policy decision models decide upon whether a warehouse part is supplied by line stockin...
In the era of mass customisation, feeding parts to mixed-model assembly lines has proven to be a com...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...