2022
DOI: 10.48550/arxiv.2201.06090
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Efficient Training of Transfer Mapping in Physics-Infused Machine Learning Models of UAV Acoustic Field

Abstract: Physics-Infused Machine Learning (PIML) architectures aim at integrating machine learning with computationallyefficient, low-fidelity (partial) physics models, leading to improved generalizability, extrapolability, and robustness to noise, compared to pure data-driven approximation models. End-uses of PIML include, but are not limited to, model-based optimization and model-predictive control. Recently a new PIML architecture was reported by the same authors, known as Opportunistic Physics-mining Transfer Mappi… Show more

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