This paper studies the single-machine scheduling problem with deteriorating jobs and learning considerations. The objective is to minimize the makespan. We first show that the schedule produced by the largest growth rate rule is unbounded for our model, although it is an optimal solution for the scheduling problem with deteriorating jobs and no learning. We then consider three special cases of the problem, each corresponding to a specific practical scheduling scenario. Based on the derived optimal properties, we develop an optimal algorithm for each of these cases. Finally, we consider a relaxed model of the second special case, and present a heuristic and analyze its worst-case performance bound
In many realistic production situations, a job processed later consumes more time than the same job ...
Abstract. In the paper, we introduce some new scheduling model in which learning and aging effects a...
Scheduling with deterioration effects has been widely investigated in the past two decades. In reali...
2006-2007 > Academic research: refereed > Publication in refereed journalAccepted ManuscriptPublishe
Job deterioration and machine learning co-exist in various real life scheduling settings. This paper...
We present a single-machine problem with the unequal release times under learning effect and deterio...
Although scheduling with deteriorating jobs and learning effect has been widely investigated, schedu...
Although scheduling with deteriorating jobs and learning effect has been widely investigated, schedu...
In this paper, we present both nonlinear job deterioration and nonlinear learning which exist simult...
AbstractLearning and job deterioration co-exist in many realistic scheduling situations. This paper ...
This paper investigates a single machine scheduling problem with deteriorating jobs. By a deteriorat...
This paper deals with the machine scheduling problems with the effects of deterioration and learning...
This paper investigates the scheduling problems with general deterioration models. By the deteriorat...
In the paper, we introduce some new scheduling model in which learning and aging effects are both co...
In this paper we consider the single-machine scheduling problem with a time-dependent learning effec...
In many realistic production situations, a job processed later consumes more time than the same job ...
Abstract. In the paper, we introduce some new scheduling model in which learning and aging effects a...
Scheduling with deterioration effects has been widely investigated in the past two decades. In reali...
2006-2007 > Academic research: refereed > Publication in refereed journalAccepted ManuscriptPublishe
Job deterioration and machine learning co-exist in various real life scheduling settings. This paper...
We present a single-machine problem with the unequal release times under learning effect and deterio...
Although scheduling with deteriorating jobs and learning effect has been widely investigated, schedu...
Although scheduling with deteriorating jobs and learning effect has been widely investigated, schedu...
In this paper, we present both nonlinear job deterioration and nonlinear learning which exist simult...
AbstractLearning and job deterioration co-exist in many realistic scheduling situations. This paper ...
This paper investigates a single machine scheduling problem with deteriorating jobs. By a deteriorat...
This paper deals with the machine scheduling problems with the effects of deterioration and learning...
This paper investigates the scheduling problems with general deterioration models. By the deteriorat...
In the paper, we introduce some new scheduling model in which learning and aging effects are both co...
In this paper we consider the single-machine scheduling problem with a time-dependent learning effec...
In many realistic production situations, a job processed later consumes more time than the same job ...
Abstract. In the paper, we introduce some new scheduling model in which learning and aging effects a...
Scheduling with deterioration effects has been widely investigated in the past two decades. In reali...