The goal of this paper is to determine if the results for dynamic job-shop scheduling problems are affected by the assumptions made with regard to the processing time distributions and the scheduler's knowledge of the processing times. Three dynamic jobshop scheduling problems (including a two station version of Conway et al.'s [2] nine station symmetric shop) are tested under seven different scenarios, one deterministic and six stochastic, using computer simulation. The deterministic scenario, where the processing times are exponential and observed by the scheduler, has been considered in many simulation studies, including Conway et al's. The six stochastic scenarios include the case where the processing times are exponential and only the ...
We define a job-shop scheduling problem with three dynamic decisions: assigning due-dates to exogeno...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
Recently, Brownian networks have emerged as an effective stochastic model to approximate multiclass ...
In real manufacturing environments, variations in production factors (i.e. processing time, demand, ...
A vital component of modern manufacturing systems is the scheduling and control system, which determ...
We consider the single-machine scheduling problem of minimizing the number of late jobs. This proble...
This thesis examines service systems where there is some uncertainty over the successful completion...
Scheduling can be described as “the allocation of scarce resources over time to perform a collection...
Abstract. In this paper, stochastic shop models with m machines and n jobs are considered. A job has...
Cataloged from PDF version of article.In this paper, we study the reactive scheduling problems in a ...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
i·::i 1 r ·I i: _i-. ·.. ·-:-·-··:· ·.-:- ·.····i. ·.. ··i..- ·:--:. ·-. r·. ·.:.,:. · ·. ·: r. i: ...
In recent times many research has been focused on assumption that processing times of a job is unfix...
A new approach for due date assignment in dynamic job shops with priority scheduling is presented. T...
Time-sensitive scheduling situations abound in computer and networking applications. From classical ...
We define a job-shop scheduling problem with three dynamic decisions: assigning due-dates to exogeno...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
Recently, Brownian networks have emerged as an effective stochastic model to approximate multiclass ...
In real manufacturing environments, variations in production factors (i.e. processing time, demand, ...
A vital component of modern manufacturing systems is the scheduling and control system, which determ...
We consider the single-machine scheduling problem of minimizing the number of late jobs. This proble...
This thesis examines service systems where there is some uncertainty over the successful completion...
Scheduling can be described as “the allocation of scarce resources over time to perform a collection...
Abstract. In this paper, stochastic shop models with m machines and n jobs are considered. A job has...
Cataloged from PDF version of article.In this paper, we study the reactive scheduling problems in a ...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
i·::i 1 r ·I i: _i-. ·.. ·-:-·-··:· ·.-:- ·.····i. ·.. ··i..- ·:--:. ·-. r·. ·.:.,:. · ·. ·: r. i: ...
In recent times many research has been focused on assumption that processing times of a job is unfix...
A new approach for due date assignment in dynamic job shops with priority scheduling is presented. T...
Time-sensitive scheduling situations abound in computer and networking applications. From classical ...
We define a job-shop scheduling problem with three dynamic decisions: assigning due-dates to exogeno...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
Recently, Brownian networks have emerged as an effective stochastic model to approximate multiclass ...