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Passive Source Ranging Using Residual Neural Network With One Hydrophone in Shallow Water

机译:残留神经网络与一台水听器在浅水中的被动源测距

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The source ranging problem can be regard as a classification problem in machine learning. The paper used a deep neural network (ResNet18) as a deep learning model to estimate the source range based on a single hydrophone in the shallow water. The simulation data generated by the acoustic propagation model were used as the training data. The trial data from the SACLANT experiment (1993) as test data have demonstrated the performance of the method. The results indicate that a single hydrophone in the shallow water environment is applicable to predict the source range when choosing an appropriate deep learning model. The analyzation of a shallow water sea trial data shows that the average of the range estimation for samples is 5.44 km. And the mean square error and the mean absolute percentage error of ranging were 0.036 km2 and 1.5308%, respectively.
机译:源测距问题可以视为机器学习中的分类问题。本文使用深度神经网络(ResNet18)作为深度学习模型,基于浅水区中的单个水听器来估算源范围。由声传播模型生成的模拟数据用作训练数据。 SACLANT实验(1993年)的试验数据作为测试数据证明了该方法的有效性。结果表明,在选择合适的深度学习模型时,浅水环境中的单个水听器可用于预测源范围。浅海试验数据分析表明,样本测距的平均值为5.44 km。均方误差和测距的绝对绝对百分比误差为0.036 km 2 和1.5308%。

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