EvoNUM 2017 - 2017 Bio-inspired Algorithms for Continuous Parameter Optimisation
Date2017-04-19 - 2017-04-21
Deadline2016-11-01
VenueAmsterdam, Netherlands, The
Keywords
Websitehttps://www.evostar.org/2017
Topics/Call fo Papers
Many engineering problems of both theoretical and practical interest involve choosing the best configuration of a set of parameters to achieve a specified objective. Numerical optimisation refers to the case when these parameters take continuous real values, as opposed to combinatorial optimisation, which deals with discrete values. Examples include designing production processes for maximum efficiency, optimal parameter adjustment for controllers and many others. EvoNUM focuses on such problems.
We seek high quality papers involving the application of bio-inspired algorithms (genetic algorithms, genetic programming, evolution strategies, differential evolution, particle swarm optimization, evolutionary programming, simulated annealingâ?¦ and their hybrids) to continuous optimisation problems in engineering. We also welcome cross-fertilisation between Nature-inspired algorithms and more classical numerical optimisation algorithms.
[1] GS Hornby and T Yu, "EC Practitioners: Results of the First Survey", SIGEVOlution, Newsletter of the ACM Special Interest Group on Genetic and Evolutionary Computation, Vol. 2(1), Spring 2007 www.sigevolution.org
Areas of Interest and Contributions
EvoNUM deals with engineering applications where continuous parameters or functions have to be optimised, in fields such as control, chemistry, agriculture, electricity, building and construction, energy, aerospace engineering, design optimisation, etc. EvoNUM aims to cover areas that include but are not limited to:
Local learning of parameters
Mechanisms to incorporate constraints
Theoretical developments
Performance measures and performance analysis
Benchmark problems
We seek high quality papers involving the application of bio-inspired algorithms (genetic algorithms, genetic programming, evolution strategies, differential evolution, particle swarm optimization, evolutionary programming, simulated annealingâ?¦ and their hybrids) to continuous optimisation problems in engineering. We also welcome cross-fertilisation between Nature-inspired algorithms and more classical numerical optimisation algorithms.
[1] GS Hornby and T Yu, "EC Practitioners: Results of the First Survey", SIGEVOlution, Newsletter of the ACM Special Interest Group on Genetic and Evolutionary Computation, Vol. 2(1), Spring 2007 www.sigevolution.org
Areas of Interest and Contributions
EvoNUM deals with engineering applications where continuous parameters or functions have to be optimised, in fields such as control, chemistry, agriculture, electricity, building and construction, energy, aerospace engineering, design optimisation, etc. EvoNUM aims to cover areas that include but are not limited to:
Local learning of parameters
Mechanisms to incorporate constraints
Theoretical developments
Performance measures and performance analysis
Benchmark problems
Other CFPs
- 2017 Parallel Architectures and Distributed Infrastructures
- 2017 Computational Intelligence for Risk Management, Security and Defence Applications
- 2017 Evolutionary Computation in Robotics
- Evolutionary Algorithms and Meta-heuristics in Stochastic and Dynamic Environments
- The 17th European Conference on Evolutionary Computation in Combinatorial Optimisation
Last modified: 2016-08-06 22:50:50