Javascript must be enabled to continue!
The Project Research for Optimal Scheduling Based on Particle Swarm Optimization
View through CrossRef
The project management optimization for an important aspect of the scheduling scheme is reasonable to reduce costs, improve quality and shorten the cycle. Traditional project scheduling and optimization methods have been unable to fully meet the rapid development of modern project management needs. The PSO (Particle Swarm Optimization) is a simulation of birds the heuristic search algorithm mechanisms, which function optimization, constrained optimization, minimax problems, such as multi-objective optimization problem. It has become an important branch of the many related optimization fields. Although the project is to optimize the scheduling, many traditional methods can achieve good results, but the particle swarm algorithm can achieve a greater degree of optimization. In this paper, research on the particle swarm optimization of the basic principles of their algorithm for the initial exploration process, compared the effectiveness simulation of particle swarm optimization and traditional genetic algorithm in optimal scheduling of the project . Therefore, the original project plan with the optimal scheduling on the basis of introduction of particle swarm optimization algorithm can get better quality, shorter cycle and fewer costs, and ultimately get the entire optimal project cycle, project quality and project cost.
Trans Tech Publications, Ltd.
Title: The Project Research for Optimal Scheduling Based on Particle Swarm Optimization
Description:
The project management optimization for an important aspect of the scheduling scheme is reasonable to reduce costs, improve quality and shorten the cycle.
Traditional project scheduling and optimization methods have been unable to fully meet the rapid development of modern project management needs.
The PSO (Particle Swarm Optimization) is a simulation of birds the heuristic search algorithm mechanisms, which function optimization, constrained optimization, minimax problems, such as multi-objective optimization problem.
It has become an important branch of the many related optimization fields.
Although the project is to optimize the scheduling, many traditional methods can achieve good results, but the particle swarm algorithm can achieve a greater degree of optimization.
In this paper, research on the particle swarm optimization of the basic principles of their algorithm for the initial exploration process, compared the effectiveness simulation of particle swarm optimization and traditional genetic algorithm in optimal scheduling of the project .
Therefore, the original project plan with the optimal scheduling on the basis of introduction of particle swarm optimization algorithm can get better quality, shorter cycle and fewer costs, and ultimately get the entire optimal project cycle, project quality and project cost.
Related Results
Improved electrical coupling integrated energy system based on particle swarm optimization
Improved electrical coupling integrated energy system based on particle swarm optimization
AbstractThe rational utilization of energy is an important issue for sustainable development. Electrically coupled integrated energy systems can enhance energy utilization efficien...
Learning Competitive Swarm Optimization
Learning Competitive Swarm Optimization
Particle swarm optimization (PSO) is a popular method widely used in solving different optimization problems. Unfortunately, in the case of complex multidimensional problems, PSO e...
Optimal international logistics service composition algorithm based on improved particle swarm optimization algorithm in cloud environment
Optimal international logistics service composition algorithm based on improved particle swarm optimization algorithm in cloud environment
Under the environment of cloud, particle swarm algorithm is widely used in intelligent computer field. The combination model of the logistics service is solved. However, in solving...
Collective Cognition on Global Density in Dynamic Swarm
Collective Cognition on Global Density in Dynamic Swarm
Swarm density plays a key role in the performance of a robot swarm, which can be averagely measured by swarm size and the area of a workspace. In some scenarios, the swarm workspac...
Multi-objective Optimal Scheduling Analysis of Power System Based on Improved Particle Swarm Algorithm
Multi-objective Optimal Scheduling Analysis of Power System Based on Improved Particle Swarm Algorithm
Economic Environmental Dispatching (EED) in power systems is a multi-variable, strongly constrained, non-convex, multi-objective optimization problem that is difficult to properly ...
Optimization of Multitask Scheduling for Swarm UAV System with Charging Platform
Optimization of Multitask Scheduling for Swarm UAV System with Charging Platform
Swarm UAV technology have potential application in a wide range because of its ability to utilize large number, low cost and unified scheduled UAVs. Unified scheduling is tasks and...
Visual versus Tabular Scheduling Programs
Visual versus Tabular Scheduling Programs
Effective scheduling in construction is crucial for ensuring timely project completion and maintaining budget control. Scheduling programs play an important role in this process by...
A Review Study of Modified Swarm Intelligence: Particle Swarm Optimization, Firefly, Bat and Gray Wolf Optimizer Algorithms
A Review Study of Modified Swarm Intelligence: Particle Swarm Optimization, Firefly, Bat and Gray Wolf Optimizer Algorithms
Background:
Limitations exist in traditional optimization algorithms. Studies show that
bio-inspired alternatives have overcome these drawbacks. Bio-inspired algorithm mimics the c...

