Tiding up the chaos with Genetic Algorithms: examples in Magnetically Confined Nuclear Fusion
Abstract
Data di Pubblicazione:
2021
Abstract:
Magnetically Confined Nuclear Fusion (MCNF) devices produce massive
amounts of data, frequently redundant, affected by noise and sometimes
corrupted by measurement errors. That data is used to create models in
order to detect or to predict specific physical phenomena. Genetic
Algorithms (GAs) can be applied to identify and select only the most
relevant parameters to be included in these models. By this way, simple
equations that summarize the main physics, and therefore the main causal
relations, involved in these phenomena can be extracted. In this work, 2
examples of relevant events that occur in the most relevant MCNF device
in operation in the world (the Joint European Torus) are addressed:
Confinement Regime Classification and Disruption Prediction. With the
combination of Support Vector Machines and GAs, linear equations,
helpful to provide a simplified landscape of each one of these complex
and extremely non-linear phenomena, are reached.
Tipologia CRIS:
04.02 Abstract in Atti di convegno
Keywords:
Genetic Algorithms; Disruptions; Confinement Regime Identification
Elenco autori:
Murari, Andrea
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