Surrogate models are data-based approximations of computationally expensive simulations that enable efficient exploration of the model's design space and informed decision-making in many physical domains. The usage of surrogate models in the vibroacoustic domain, however, is challenging due to the non-smooth, complex behavior of wave phenomena. This paper investigates four Machine Learning (ML) approaches in the modelling of surrogates of Sound Transmission Loss (STL). Feature importance and feature engineering are used to improve the models' accuracy while increasing their interpretability and physical consistency. The transfer of the proposed techniques to other problems in the vibroacoustic domain and possible limitations of the models are discussed.
翻译:代用模型是计算成本昂贵模拟的数据近似值,能够有效探索模型的设计空间,在许多物理领域作出知情决策,但是,由于波浪现象的非光谱、复杂的行为,代用模型的使用具有挑战性。本文调查了代用音频传输损失代用模型的四种机器学习方法(STL),使用了特性重要性和特征工程来提高模型的准确性,同时提高其可解释性和物理一致性。讨论了将拟议技术转移到振波声学领域的其他问题和模型的可能局限性。