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Rapid Modeling of the Sound Speed Field in the South China Sea Based on a Comprehensive Optimal LM-BP Artificial Neural Network

机译:基于全面最优LM-BP人工神经网络的南海声速场的快速建模

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摘要

Ocean sound speed is an essential foundation for marine scientific research and marine engineering applications. In this article, a model based on a comprehensive optimal back propagation artificial neural network model is developed. The Levenberg–Marquardt algorithm is used to optimize the model, and the momentum term, normalization, and early termination method were used to predict the high precision marine sound speed profile. The sound speed profile was described by five indicators: date, time, latitude, longitude, and depth. The model used data from the CTD observation dataset of scientific investigation over the South China Sea (2009–2012) (108°–120° E, 6°–8° N), which includes comprehensive scientific investigation data from four voyages. The feasibility of modeling the sound speed field in the South China Sea is investigated. The proposed model uses the momentum term, normalization, and early termination in a traditional BP artificial neural network structure and mitigates issues with overtraining and difficulty when determining the BP neural network parameters. With the LM algorithm, a fast-modeling method for the sound field effectively achieves the precision requirement for sound speed prediction. Through the prediction and verification of the data from 2009 to 2012, the newly proposed optimized BP network model is shown to dramatically reduce the training time and improve precision compared to the traditional network model. Results showed that the root mean squared error decreased from 1.7903 m/s to 0.95732 m/s, and the training time decreased from 612.43 s to 4.231 s. Finally, the sound ray tracing simulations confirm that the model meets the accuracy requirements of acoustic sounding and verify the model’s feasibility for the real-time prediction of the vertical sound speed in saltwater bodies.
机译:海洋音响是海洋科学研究和海洋工程应用的重要基础。在本文中,开发了一种基于全面的最佳反向传播人工神经网络模型的模型。 Levenberg-Marquardt算法用于优化模型,并且使用动量术语,归一化和早期终止方法来预测高精度船用声速型材。声速轮廓由五个指标描述:日期,时间,纬度,经度和深度。该型号来自南海(2009 - 2012年)科学调查的CTD观察数据集(2009-2012)(108°-120°E,6°-8°N),包括来自四个航行的全面科学调查数据。调查了南海音响速度建模的可行性。所提出的模型使用传统的BP人工神经网络结构中的势头,正常化和早期终止,并在确定BP神经网络参数时减轻过度训练和困难的问题。利用LM算法,声场的快速建模方法有效地实现了声速预测的精度要求。通过2009年至2012年的数据的预测和验证,与传统网络模型相比,新提出的优化BP网络模型显示出显着降低训练时间并提高精度。结果表明,根部平均方形误差从1.7903 m / s降低至0.95732 m / s,训练时间从612.43 s降至4.231秒。最后,声光跟踪模拟确认该模型符合声学探测的精度要求,并验证了盐水体中垂直声速实时预测的模型的可行性。

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