This paper tackles the application of evolutionary multi-agent computing to solve inverse problems. High costs of fitness function call become a major difficulty when approaching these problems with population-based heuristics. However, evolutionary agent-based systems (EMAS) turn out to reduce the fitness function calls, which makes them a possible weapon of choice against them. This paper recalls the basics of EMAS and describes the considered problem (Step and Flash Imprint Lithography), and later, shows convincing results that EMAS is more effective than a classical evolutionary algorithm
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Abstract In this article, the performance of an evolutionary multi-agent system in dy-namic optimiza...
The fields of Artificial Intelligence and Artificial Life have both focused on complex systems in wh...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
AbstractHybridizing agent-based paradigm with evolutionary computation can enhance the field of meta...
This book addresses agent-based computing, concentrating in particular on evolutionary multi-agent s...
Niching is a group of techniques used in evolutionary algorithms, useful in several types of problem...
Abstract Niching is a group of techniques used in evolutionary algorithms, useful in several types o...
In this article, the performance of an evolutionary multi-agent system in dynamic optimization is ev...
Tyt. z nagłówka.Bibliogr. s. 573-574.In this article, the performance of an evolutionary multi-agent...
Evolutionary Programming (EP) seems a promising methodology to automatically find programs to solve ...
Abstract In this article, the performance of an evolutionary multi-agent system in dy-namic optimiza...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Abstract In this article, the performance of an evolutionary multi-agent system in dy-namic optimiza...
The fields of Artificial Intelligence and Artificial Life have both focused on complex systems in wh...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
AbstractHybridizing agent-based paradigm with evolutionary computation can enhance the field of meta...
This book addresses agent-based computing, concentrating in particular on evolutionary multi-agent s...
Niching is a group of techniques used in evolutionary algorithms, useful in several types of problem...
Abstract Niching is a group of techniques used in evolutionary algorithms, useful in several types o...
In this article, the performance of an evolutionary multi-agent system in dynamic optimization is ev...
Tyt. z nagłówka.Bibliogr. s. 573-574.In this article, the performance of an evolutionary multi-agent...
Evolutionary Programming (EP) seems a promising methodology to automatically find programs to solve ...
Abstract In this article, the performance of an evolutionary multi-agent system in dy-namic optimiza...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Abstract In this article, the performance of an evolutionary multi-agent system in dy-namic optimiza...
The fields of Artificial Intelligence and Artificial Life have both focused on complex systems in wh...