Self-adaptive agent modelling of wind farm for energy capture optimisation
Authored by Rasool Erfani, Hamid Mokhtar, Tohid Erfani
Date Published: 2018
DOI: 10.1007/s12667-017-0243-y
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Abstract
Typical approaches to wind turbines placement problem take into account
the wind distribution and wake effects to maximise the total aggregate
farm's energy production in a centralised top-down optimisation problem.
An alternative approach, however, is yet to be addressed as the problem
can be instead modelled in a decentralised bottom-up manner emulating a
system of self-adaptive agents. The potential advantages of this is that
it offers easier scalability for high dimension problems as well as it
enables an easier adaptation to the complex structure of the design
problem. This paper contributes to this and presents an evolutionary
algorithm to model and solve the wind farm layout design problem as a
system of interrelated agents. The framework is applied to problems with
different complexities where the quality of the results is examined. The
convergence and scalability of the suggested technique indicate
promising results for small to large scale wind farms, which, in turn,
encourage the application of such an evolutionary based algorithm for
real world wind farm design problem.
Tags
Genetic Algorithms
Design
Agent based modelling
evolutionary algorithm
Turbines
Placement
Wind farm layout design
Self adaptive agents
Layout