The unrelated parallel machine scheduling problem with sequence dependent setup times (UPMSP-SDST) addressed in this study refers to allocating jobs among a given number of machines and determining their processing sequence on each machine, to minimize the makespan (i.e., the maximum completion time). To deal with large-scale UPMSP-SDST with higher efficiency, this study presents an enhanced adaptive large neighborhood search (EALNS) algorithm with various destroy and repair operators and an efficiency-enhancement mechanism. The efficiency-enhancement mechanism is mainly composed of a simplified calculation method and a hierarchical comparison mechanism, which are applied to improve the implementation process of the greedy-based operators. ...
In this paper we study very large-scale neighborhoods for the minimum total weighted completion time...
In this paper we propose a tabu search implementation to solve the unrelated parallel machines sched...
Scheduling problems are essential for decision making in many academic disciplines, including operat...
This article addresses a challenging industrial problem known as the unrelated parallel machine sche...
This paper addresses the problem of makespan minimization on unrelated parallel machines with sequen...
We consider the problem of scheduling independent jobs on parallel machines with machine- and sequen...
International audienceWe present a large neighborhood search method based on limited discrepancy sea...
This work addresses the unrelated parallel machine scheduling problem with sequence-dependent setup ...
This study considers the problem of scheduling independent jobs on unrelated parallel machines with ...
International audienceThis paper addresses the parallel machine scheduling problem where jobs have d...
Green machine scheduling consists in the allocation of jobs in order to maximize production, in view...
textabstractThe parallel machine scheduling problem with unrelated machines is studied where the obj...
In this paper we study the unrelated parallel machine scheduling problem with sequence and machine-d...
Environmental concerns and rising energy prices put great pressure on the manufacturing industry to ...
This work deals with the parallel machines scheduling problem which consists in the assignment of n ...
In this paper we study very large-scale neighborhoods for the minimum total weighted completion time...
In this paper we propose a tabu search implementation to solve the unrelated parallel machines sched...
Scheduling problems are essential for decision making in many academic disciplines, including operat...
This article addresses a challenging industrial problem known as the unrelated parallel machine sche...
This paper addresses the problem of makespan minimization on unrelated parallel machines with sequen...
We consider the problem of scheduling independent jobs on parallel machines with machine- and sequen...
International audienceWe present a large neighborhood search method based on limited discrepancy sea...
This work addresses the unrelated parallel machine scheduling problem with sequence-dependent setup ...
This study considers the problem of scheduling independent jobs on unrelated parallel machines with ...
International audienceThis paper addresses the parallel machine scheduling problem where jobs have d...
Green machine scheduling consists in the allocation of jobs in order to maximize production, in view...
textabstractThe parallel machine scheduling problem with unrelated machines is studied where the obj...
In this paper we study the unrelated parallel machine scheduling problem with sequence and machine-d...
Environmental concerns and rising energy prices put great pressure on the manufacturing industry to ...
This work deals with the parallel machines scheduling problem which consists in the assignment of n ...
In this paper we study very large-scale neighborhoods for the minimum total weighted completion time...
In this paper we propose a tabu search implementation to solve the unrelated parallel machines sched...
Scheduling problems are essential for decision making in many academic disciplines, including operat...