Localization Of Immersed Sources By Modified Convolutional Neural Network: Application To A Deep-Sea Experiment

SENSORS(2021)

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摘要
A modified convolutional neural network (CNN) is proposed to enhance the reliability of source ranging based on acoustic field data received by a vertical array. Compared to the traditional method, the output layer is modified by outputting Gauss regression sequences, expressed using a Gaussian probability distribution form centered on the actual distance. The processed results of deep-sea experimental data confirmed that the ranging performance of the CNN with a Gauss regression output was better than that using single regression and classification outputs. The mean relative error between the predicted distance and the actual value was similar to 2.77%, and the positioning accuracy with 10% and 5% error was 99.56% and 90.14%, respectively.
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关键词
vertical linear array, Gauss regression output, source ranging, convolutional neural
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