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This study introduces a novel knowledge-transfer algorithm for dynamic environments, improving offline data-driven optimization. The method effectively tracks optimal solutions by leveraging historical data and adapting to changing conditions.

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Optimization

Background:

  • Existing offline data-driven optimization primarily addresses static environments.
  • Dynamic environments pose challenges due to time-varying data distributions, necessitating adaptive surrogate models and solution tracking.

Purpose of the Study:

  • To propose a knowledge-transfer-based data-driven optimization algorithm for dynamic environments.
  • To enable effective tracking of optimal solutions in environments with evolving data distributions.

Main Methods:

  • An ensemble learning approach trains surrogate models, incorporating historical and new environmental data.
  • Historical models are retrained with new data, forming base learners for an ensemble surrogate model.
  • Base learners and the ensemble model are optimized simultaneously in a multi-task environment.

Main Results:

  • The proposed algorithm demonstrates effectiveness on six dynamic optimization benchmark problems.
  • Empirical results show superior performance compared to four state-of-the-art offline data-driven optimization algorithms.
  • The knowledge-transfer mechanism accelerates the tracking of optima in current environments.

Conclusions:

  • The knowledge-transfer-based ensemble learning algorithm effectively addresses offline data-driven optimization in dynamic environments.
  • The method successfully leverages past knowledge to adapt to and optimize in changing conditions.
  • The algorithm provides a robust solution for tracking optimal solutions in time-varying optimization problems.