WOS: 000263508800016Conventionally, job processing times are assumed to be constant from the first job to be processed until the last job to be completed. However, recent empirical studies in several industries have verified that unit costs decline as firms produce more of a product and gain knowledge or experience. This phenomenon is known as the "learning effect." In this paper a bicriteria m-identical parallel machine scheduling problem with a learning effect is considered. The objective function of the problem is to find a sequence that minimizes a weighted sum of total completion time and total tardiness. Total completion time and total tardiness are widely used performance measures in scheduling literature. To solve this scheduling pr...
We investigate parallel-machine scheduling with past-sequence-dependent (p-s-d) delivery times, DeJo...
WOS: 000245762500010Minimizing of total tardiness is one of the most studied topics on single machin...
In this paper we introduce a new scheduling model with learning effects in which the actual processi...
WOS: 000261301400038In studies oil scheduling problems, generally setup times and removal times of j...
WOS: 000263597700004Conventionally, job processing times are assumed to be constant from the first j...
WOS: 000257231600003This paper considers a bicriteria scheduling problem with a learning effect on a...
In this paper parallel identical machines scheduling problems with deteriorating jobs and learning e...
This note studies a unrelated parallel-machine scheduling problem with controllable processing times...
WOS: 000257040100006In many situations, a worker's ability improves as a result of repeating the sam...
This paper considers a parallel machine earliness/tardiness (ET) scheduling problem with different p...
In a manufacturing system workers are involved in doing the same job or activity repeatedly. Hence, ...
AbstractThis paper introduces a new time-dependent learning effect model into a single-machine sched...
In this paper, we examined single and parallel machine scheduling problems with a learning effect an...
This paper considers earliness/tardiness (ET) scheduling problem on a parallel machine environment w...
In this study, we introduce a mixed nonlinear integer programming formulation for parallel machine e...
We investigate parallel-machine scheduling with past-sequence-dependent (p-s-d) delivery times, DeJo...
WOS: 000245762500010Minimizing of total tardiness is one of the most studied topics on single machin...
In this paper we introduce a new scheduling model with learning effects in which the actual processi...
WOS: 000261301400038In studies oil scheduling problems, generally setup times and removal times of j...
WOS: 000263597700004Conventionally, job processing times are assumed to be constant from the first j...
WOS: 000257231600003This paper considers a bicriteria scheduling problem with a learning effect on a...
In this paper parallel identical machines scheduling problems with deteriorating jobs and learning e...
This note studies a unrelated parallel-machine scheduling problem with controllable processing times...
WOS: 000257040100006In many situations, a worker's ability improves as a result of repeating the sam...
This paper considers a parallel machine earliness/tardiness (ET) scheduling problem with different p...
In a manufacturing system workers are involved in doing the same job or activity repeatedly. Hence, ...
AbstractThis paper introduces a new time-dependent learning effect model into a single-machine sched...
In this paper, we examined single and parallel machine scheduling problems with a learning effect an...
This paper considers earliness/tardiness (ET) scheduling problem on a parallel machine environment w...
In this study, we introduce a mixed nonlinear integer programming formulation for parallel machine e...
We investigate parallel-machine scheduling with past-sequence-dependent (p-s-d) delivery times, DeJo...
WOS: 000245762500010Minimizing of total tardiness is one of the most studied topics on single machin...
In this paper we introduce a new scheduling model with learning effects in which the actual processi...