Entropy (Dec 2020)

Towards Generative Design of Computationally Efficient Mathematical Models with Evolutionary Learning

  • Anna V. Kalyuzhnaya,
  • Nikolay O. Nikitin,
  • Alexander Hvatov,
  • Mikhail Maslyaev,
  • Mikhail Yachmenkov,
  • Alexander Boukhanovsky

DOI
https://doi.org/10.3390/e23010028
Journal volume & issue
Vol. 23, no. 1
p. 28

Abstract

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In this paper, we describe the concept of generative design approach applied to the automated evolutionary learning of mathematical models in a computationally efficient way. To formalize the problems of models’ design and co-design, the generalized formulation of the modeling workflow is proposed. A parallelized evolutionary learning approach for the identification of model structure is described for the equation-based model and composite machine learning models. Moreover, the involvement of the performance models in the design process is analyzed. A set of experiments with various models and computational resources is conducted to verify different aspects of the proposed approach.

Keywords