Classical assembly line balancing (ALB) models assume constant cycle times during production. However, this assumption oversimplifies the actual situation, especially in small batch production of up to a few hundred units, since employees can significantly improve their performance thanks to the learning effect, causing task times to decrease. Several researchers have realised the importance of the effect of learning in ALB. However, only a limited number of papers have so far addressed this issue. This is problematic, since ignoring the learning effect in ALB may lead to inaccurate results and by extension misleading conclusions. This study summarises the main contributions in the field of ALB that focus on the learning effect. First, asse...
The common approach to balancing mixed-model assembly lines assumes that the line operators are well...
On the basis of a prior experimental study, this paper performs a further analysis of the effects of...
Industry 4.0 provides a tremendous potential of data from the work floor. For manufacturing companie...
Classical assembly line balancing (ALB) models assume constant cycle times during production. Howeve...
The Assembly Line Balancing Problem (ALBP) represents one of the most explored research topics in ma...
In this paper, we introduced learning effect into assembly line balancing problems. In many realisti...
The authors investigate through several simulations how patterns of learning and for-getting affect ...
The effect of workers’ learning curve on production rate in manual assembly lines is significant whe...
This paper presents the findings from the survey of articles published on the assembly line balancin...
Human learning is nowadays taken into account in several research fields, including the assembly lin...
The objective of assembly line balancing (ALB) is to minimize the number of workstations organized t...
Purpose – The purpose of the study is to explore how productivity can be improved in an assembly lin...
In this study, we introduce simultaneous effects of learning and linear deterioration into assembly ...
Embargo 12 monthsIn variable manual assembly production of highly customised products, effective all...
The efficiency of an assembly line depends on how the different tasks are distributed among the work...
The common approach to balancing mixed-model assembly lines assumes that the line operators are well...
On the basis of a prior experimental study, this paper performs a further analysis of the effects of...
Industry 4.0 provides a tremendous potential of data from the work floor. For manufacturing companie...
Classical assembly line balancing (ALB) models assume constant cycle times during production. Howeve...
The Assembly Line Balancing Problem (ALBP) represents one of the most explored research topics in ma...
In this paper, we introduced learning effect into assembly line balancing problems. In many realisti...
The authors investigate through several simulations how patterns of learning and for-getting affect ...
The effect of workers’ learning curve on production rate in manual assembly lines is significant whe...
This paper presents the findings from the survey of articles published on the assembly line balancin...
Human learning is nowadays taken into account in several research fields, including the assembly lin...
The objective of assembly line balancing (ALB) is to minimize the number of workstations organized t...
Purpose – The purpose of the study is to explore how productivity can be improved in an assembly lin...
In this study, we introduce simultaneous effects of learning and linear deterioration into assembly ...
Embargo 12 monthsIn variable manual assembly production of highly customised products, effective all...
The efficiency of an assembly line depends on how the different tasks are distributed among the work...
The common approach to balancing mixed-model assembly lines assumes that the line operators are well...
On the basis of a prior experimental study, this paper performs a further analysis of the effects of...
Industry 4.0 provides a tremendous potential of data from the work floor. For manufacturing companie...