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arxiv: 1903.12319 · v2 · pith:GBKAYKTWnew · submitted 2019-03-29 · ⚛️ physics.ao-ph · eess.SP

Deep-learning source localization using multi-frequency magnitude-only data

classification ⚛️ physics.ao-ph eess.SP
keywords datasourcedeepacousticapproachbottomdiscretizedgrid
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A deep learning approach based on big data is proposed to locate broadband acoustic sources using a single hydrophone in ocean waveguides with uncertain bottom parameters. Several 50-layer residual neural networks, trained on a huge number of sound field replicas generated by an acoustic propagation model, are used to handle the bottom uncertainty in source localization. A two-step training strategy is presented to improve the training of the deep models. First, the range is discretized in a coarse (5 km) grid. Subsequently, the source range within the selected interval and source depth are discretized on a finer (0.1 km and 2 m) grid. The deep learning methods were demonstrated for simulated magnitude-only multi-frequency data in uncertain environments. Experimental data from the China Yellow Sea also validated the approach.

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