GLEAM - An Evolutionary Algorithm for Planning and Control Based on Evolution Strategy
نویسندگان
چکیده
An evolutionary algorithm based on Evolution Strategy (ES) is presented, which includes time-related command execution and the generation of process control elements. Its concept is enlarged by problem-oriented type definitions for parameters, this has allowed a flexible implementation for different applications. The GLEAM algorithm includes new features which distinguish it from ES and GAs, among them especially a new and flexible kind of coding allowing a natural problem representation. The different kind of code interpretation is tailored, but not limited to finding solutions for time -dependent processes like the control of (industrial) robots or autonomous vehicles.
منابع مشابه
A Novel Intelligent Energy Management Strategy Based on Combination of Multi Methods for a Hybrid Electric Vehicle
Based on the problems caused by today conventional vehicles, much attention has been put on the fuel cell vehicles researches. However, using a fuel cell system is not adequate alone in transportation applications, because the load power profile includes transient that is not compatible with the fuel cell dynamic. To resolve this problem, hybridization of the fuel cell and energy storage device...
متن کاملTask Scheduling Algorithm Using Covariance Matrix Adaptation Evolution Strategy (CMA-ES) in Cloud Computing
The cloud computing is considered as a computational model which provides the uses requests with resources upon any demand and needs.The need for planning the scheduling of the user's jobs has emerged as an important challenge in the field of cloud computing. It is mainly due to several reasons, including ever-increasing advancements of information technology and an increase of applications and...
متن کاملAn Improved Imperialist Competitive Algorithm based on a new assimilation strategy
Meta-heuristic algorithms inspired by the natural processes are part of the optimization algorithms that they have been considered in recent years, such as genetic algorithm, particle swarm optimization, ant colony optimization, Firefly algorithm. Recently, a new kind of evolutionary algorithm has been proposed that it is inspired by the human sociopolitical evolution process. This new algorith...
متن کاملEine neue Methodik zur Erhöhung der Leistungsfähigkeit evolutionärer Algorithmen durch die Integration lokaler Suchverfahren
Evolutionary Algorithms form a procedure upon the pattern of the principals of biological evolution for improving solutions iteratively by means of heredity, selection and survival of the fittest. Their main area of application are complex optimization problems, for which no mathematical solutions or suitable heuristics exist or are too costly to develop. Examples for these tasks are design opt...
متن کاملTHE CMA EVOLUTION STRATEGY BASED SIZE OPTIMIZATION OF TRUSS STRUCTURES
Evolution Strategies (ES) are a class of Evolutionary Algorithms based on Gaussian mutation and deterministic selection. Gaussian mutation captures pair-wise dependencies between the variables through a covariance matrix. Covariance Matrix Adaptation (CMA) is a method to update this covariance matrix. In this paper, the CMA-ES, which has found many applications in solving continuous optimizatio...
متن کامل