Acoustic propagation models are widely used in numerous oceanic and other underwater applications. Most conventional models are approximate solutions of the acoustic wave equation, and require accurate environmental knowledge to be available beforehand. Environmental parameters may not always be easily or accurately measurable. While data-driven techniques might allow us to model acoustic propagation without the need for extensive prior environmental knowledge, such techniques tend to be data-hungry and often infeasible in oceanic applications where data collection is difficult and expensive. We propose a data-aided ray physics based high frequency acoustic propagation modeling approach that enables us to train models with only a small amount of data. The proposed framework is not only data-efficient, but also offers flexibility to incorporate varying degrees of environmental knowledge, and generalizes well to permit extrapolation beyond the area where data was collected. We demonstrate the feasibility and applicability of our method through four numerical case studies, and one controlled experiment. We also benchmark our method's performance against classical data-driven techniques.
翻译:声学传播模型被广泛用于许多海洋和其他水下应用,大多数传统模型是声波方程式的近似解决办法,需要事先获得准确的环境知识;环境参数可能并不总是容易或准确的可测量;虽然数据驱动技术可能使我们能够模拟声学传播,而不需要广泛的事先环境知识,但这类技术往往缺乏数据,而且往往在数据收集困难和昂贵的海洋应用中不可行;我们提议采用基于数据辅助的光物理学高频声传播模型方法,使我们能够仅用少量数据来培训模型;拟议的框架不仅具有数据效率,而且具有灵活性,可以纳入不同程度的环境知识,而且很通俗地允许在收集数据的地区以外进行外推演;我们通过四个数字案例研究和一个受控实验,展示我们方法的可行性和适用性;我们还根据古典数据驱动技术衡量我们方法的性能。