This study focuses on surrogate measures (SMs) of robustness for the stochastic job shop scheduling problems (SJSSP) with uncertain processing times. The objective is to provide the robust predictive schedule to the decision makers. The mathematical model of SJSSP is formulated by considering the railway execution strategy, which defined that the starting time of each operation cannot be earlier than its predictive starting time. Robustness is defined as the expected relative deviation between the realized makespan and the predictive makespan. In view of the time-consuming characteristic of simulation-based robustness measure (RMsim), this paper puts forward new SMs and investigates their performance through simulations. By utilizing the st...
This work focuses on the stochastic evaluation of train schedules computed by a microscopic schedule...
The general problem of scheduling activities subject to temporal and resource constraints as well as...
The current work contributes to stochastic hybrid flow shop scheduling. After a thorough literature ...
This paper addresses the robust job-shop scheduling problems (RJSSP) with stochastic deteriorating p...
In this research we aim to investigate the job shop scheduling problem with uncertain processing tim...
In this research we aim to investigate the job shop scheduling problem with uncertain processing tim...
Scheduling production is an important decision issue in the manufacturing domain. With the advent of...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
AbstractThis paper propose an effective estimation of distribution algorithm (EDA), which solves the...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
The general problem of scheduling activities subject to temporal and resource constraints as well as...
In this paper, we consider the surrogate measures of robustness for the integration of production sc...
Robustness in scheduling addresses the capability of devising schedules which are not sensitive - to...
We study the application of stochastic scheduling methods for dealing with the negative impact of un...
This work focuses on the stochastic evaluation of train schedules computed by a microscopic schedule...
The general problem of scheduling activities subject to temporal and resource constraints as well as...
The current work contributes to stochastic hybrid flow shop scheduling. After a thorough literature ...
This paper addresses the robust job-shop scheduling problems (RJSSP) with stochastic deteriorating p...
In this research we aim to investigate the job shop scheduling problem with uncertain processing tim...
In this research we aim to investigate the job shop scheduling problem with uncertain processing tim...
Scheduling production is an important decision issue in the manufacturing domain. With the advent of...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
AbstractThis paper propose an effective estimation of distribution algorithm (EDA), which solves the...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
The general problem of scheduling activities subject to temporal and resource constraints as well as...
In this paper, we consider the surrogate measures of robustness for the integration of production sc...
Robustness in scheduling addresses the capability of devising schedules which are not sensitive - to...
We study the application of stochastic scheduling methods for dealing with the negative impact of un...
This work focuses on the stochastic evaluation of train schedules computed by a microscopic schedule...
The general problem of scheduling activities subject to temporal and resource constraints as well as...
The current work contributes to stochastic hybrid flow shop scheduling. After a thorough literature ...