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This study introduces a surrogate model and Bayesian optimization for designing effective acoustic barriers. It balances noise reduction, cost, and shape for optimal sound pressure level attenuation.

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Area of Science:

  • Acoustics and Noise Control
  • Computational Engineering
  • Materials Science

Background:

  • Optimizing multiple conflicting criteria in engineering, especially for acoustic wave propagation, is challenging for standard methods.
  • Designing effective noise barriers requires balancing acoustic performance (sound pressure level - SPL) with economic and geometric constraints.

Purpose of the Study:

  • To develop a noise prediction surrogate model for multi-objective optimization of acoustic barriers.
  • To apply a multi-objective Bayesian optimization algorithm to optimize acoustic barrier design for reduced SPL.

Main Methods:

  • A two-dimensional singular boundary method was used to generate a dataset for the surrogate model.
  • Multi-objective Bayesian optimization was applied to acoustic line source diffraction with porous noise barriers (straight-walled and T-shaped).
  • Surface impedance boundary conditions modeled material dissipation, integrating microstructural and macrostructural parameters.

Main Results:

  • The proposed framework efficiently explores trade-offs between acoustic performance, material cost, and shape.
  • Optimal barrier designs were achieved by balancing SPL reduction, barrier height, cap length, porosity, tortuosity, and airflow resistivity.
  • The surrogate model facilitated computationally intensive optimization for complex acoustic barrier designs.

Conclusions:

  • The developed noise prediction surrogate model and Bayesian optimization framework enable efficient multi-objective optimization of acoustic barriers.
  • This approach effectively balances acoustic performance with economic and shape constraints for practical engineering solutions.
  • The study demonstrates a viable method for designing optimized noise barriers considering various physical and economic factors.