基于深度学习的低频水声建模

R. Azhagumurugan, C. Sai Ganesh, K. Porkumaran, Sr Y Aouthithiye Barathwaj, C. Nayanatara, N. C. Haariharan
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引用次数: 0

摘要

在海洋环境中,声通信是最有效的方法,对海洋中声音行为及其性质的研究被称为海洋声学。由于海洋的环境行为随气候、季节、水生生物和其他形式的化学反应而变化,因此建立海洋声传播模型是设计声学装置的重要步骤。基于抛物方程的声传播建模是最有效的方法之一,特别是在低频应用中。本文提出的预测模型解决了抛物方程建模的计算复杂度和时间问题。对具有不同声学参数的几种环境进行建模,为预测建模系统生成必要的数据。深度学习是基于权重和偏差的生物系统启发的学习数据的过程。开发了一个定制的深度学习模型,用于理解不同海洋环境的传输损耗数据。在声通信中,传输损耗是指声信号在海洋环境参数作用下的衰减。开发了一个类似于传统建模的用户应用程序,但由一个深度学习系统支持,该系统可以预测整个环境的传输损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low Frequency Underwater Acoustic Modelling Based on Deep Learning
In ocean environments, acoustic communication is the most efficient method and the study of the behaviour of sound and its nature in the ocean is called ocean acoustics. Modelling of ocean acoustic propagation is an essential step for designing acoustic devices as the environmental behaviour of the ocean varies with climate, seasons, aquatic life and other form of chemical reactions. Modelling acoustic propagation based on parabolic equations is one of the most efficient ways, especially with low-frequency applications. The computational complexity and the time for modelling the parabolic equations are resolved by the predictive modelling presented in this paper. Modelling of several environments with different acoustic parameters generates the necessary data for the predictive modelling system. Deep learning is the process of learning data inspired by biological systems based on weights and biases. A custom deep learning model is developed for the understanding of transmission loss data of different ocean environments. In acoustic communication, transmission loss is the decrease in the sound signal by the ocean environmental parameters. A user application is developed that resembles the traditional modelling but is backed by a deep learning system that predicts the transmission loss for the entire environment.
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