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Localization of Immersed Sources by Modified Convolutional Neural Network: Application to a Deep-Sea Experiment

机译:通过改进的卷积神经网络定位浸没来源:应用于深海实验

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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 ~2.77%, and the positioning accuracy with 10% and 5% error was 99.56% and 90.14%, respectively.
机译:提出了一种修改的卷积神经网络(CNN),以提高基于由垂直阵列接收的声场数据的源测距的可靠性。与传统方法相比,通过输出高斯回归序列来修改输出层,使用以实际距离为中心的高斯概率分布形式表示。深海实验数据的加工结果证实,CNN具有高斯回归输出的测距性能优于使用单一回归和分类输出。预测距离和实际值之间的平均相对误差为2.77%,分别为10%和5%误差的定位精度分别为99.56%和90.14%。

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