This study proposes a novel hyper-heuristic based two-stage genetic programming framework (HH-TGP) to solve the Stochastic Resource Constrained Multi-Project Scheduling Problem under New Project Insertions (SRCMPSP-NPI). It divides the evolution of genetic programming into generation and selection stages, and then establishes a multi-state combination scheduling mode with multiple priority rules (PRs) for the first time to realize resource constrained project scheduling under both stochastic activity duration and new project insertion. In the generation stage, based on a modified attribute set for multi-project scheduling, NSGA-II is hybridized to evolve a non-dominated PR set for forming a selectable PR set. While in the selection stage, t...
In this paper we consider the resource-constrained project scheduling problem (RCPSP) with makespan ...
AbstractThe Multi-mode Resource Constrained Project Scheduling Problem (MRCPSP) is one of the most i...
In this article, we present a parallel graphical processing unit (GPU)-based genetic algorithm (GA) ...
Multi-project management and uncertain environment are very common factors, and they bring greater c...
In project scheduling studies, to the best of our knowledge, the hyper-heuristic collaborative sched...
In a multi-project environment, many projects are to be completed that rely on a common pool of scar...
Resource constrained project scheduling problems are very difficult to solve to optimality. Because ...
This paper presents a genetic algorithm for the resource constrained multi-project scheduling proble...
In this paper, a new genetic algorithm (GA) is presented for solving the multi-mode resource-constra...
In recent years, machine learning techniques, especially genetic programming (GP), have been a power...
There are limited solution techniques available for resource constrained project scheduling problems...
In this paper, the resource-constrained project scheduling problem with multiple execution modes for...
In this paper we consider the resource-constrained project scheduling problem with multiple executio...
This paper presents a genetic algorithm for the multimode resource-constrained project scheduling p...
In this paper we present a genetic algorithm for the multi-mode resource-constrained project schedul...
In this paper we consider the resource-constrained project scheduling problem (RCPSP) with makespan ...
AbstractThe Multi-mode Resource Constrained Project Scheduling Problem (MRCPSP) is one of the most i...
In this article, we present a parallel graphical processing unit (GPU)-based genetic algorithm (GA) ...
Multi-project management and uncertain environment are very common factors, and they bring greater c...
In project scheduling studies, to the best of our knowledge, the hyper-heuristic collaborative sched...
In a multi-project environment, many projects are to be completed that rely on a common pool of scar...
Resource constrained project scheduling problems are very difficult to solve to optimality. Because ...
This paper presents a genetic algorithm for the resource constrained multi-project scheduling proble...
In this paper, a new genetic algorithm (GA) is presented for solving the multi-mode resource-constra...
In recent years, machine learning techniques, especially genetic programming (GP), have been a power...
There are limited solution techniques available for resource constrained project scheduling problems...
In this paper, the resource-constrained project scheduling problem with multiple execution modes for...
In this paper we consider the resource-constrained project scheduling problem with multiple executio...
This paper presents a genetic algorithm for the multimode resource-constrained project scheduling p...
In this paper we present a genetic algorithm for the multi-mode resource-constrained project schedul...
In this paper we consider the resource-constrained project scheduling problem (RCPSP) with makespan ...
AbstractThe Multi-mode Resource Constrained Project Scheduling Problem (MRCPSP) is one of the most i...
In this article, we present a parallel graphical processing unit (GPU)-based genetic algorithm (GA) ...