Solving the response time variability problem by means of a genetic algorithm
From MaRDI portal
Publication:1039773
DOI10.1016/j.ejor.2009.05.024zbMath1175.90165OpenAlexW2045772226MaRDI QIDQ1039773
Alberto García-Villoria, Rafael Pastor
Publication date: 23 November 2009
Published in: European Journal of Operational Research (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1016/j.ejor.2009.05.024
Deterministic scheduling theory in operations research (90B35) Approximation methods and heuristics in mathematical programming (90C59)
Related Items (6)
A global optimization algorithm for target set selection problems ⋮ Minimising maximum response time ⋮ The weighted fair sequences problem ⋮ Matching formulation of the staff transfer problem: meta-heuristic approaches ⋮ A branch and bound algorithm for the response time variability problem ⋮ Hyper-heuristic approaches for the response time variability problem
Uses Software
Cites Work
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- Unnamed Item
- A genetic algorithm for cellular manufacturing design and layout
- Response time variability
- Introducing dynamic diversity into a discrete particle swarm optimization
- Solving the response time variability problem by means of a psychoclonal approach
- Mathematical programming modeling of the response time variability problem
- The scheduling of maintenance service
- Minimizing variation of production rates in just-in-time systems: A survey
- A new approach to solving the multiple traveling salesperson problem using genetic algorithms
- Fine-Tuning of Algorithms Using Fractional Experimental Designs and Local Search
- Scheduling advertising slots for television
- Level Schedules for Mixed-Model Assembly Lines in Just-In-Time Production Systems
- Genetic Algorithms and Random Keys for Sequencing and Optimization
- Genetic Algorithms
- Scheduling Commercial Videotapes in Broadcast Television
This page was built for publication: Solving the response time variability problem by means of a genetic algorithm