Mutual-Impedance Calculation for Arrays of Sonar Transducers by Integration on Neural Networks

Kun-Chou Lee, J. Jhang
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Abstract

In this paper, the mutual-impedances within arrays of sonar transducers are calculated by integration on neural networks. The multi-dimensional integrations appearing in mutual-impedance formulations are replaced by integration on neural networks. Initially, the integrand is modeled by a trained neural network. The multi-dimensional integrations on the integrand can then be replaced by integrations on the output of neural network. Neither numerical nor artificial integration operation is required. With this replacement, the computation efforts are well reduced. Numerical examples show that the results calculated by the proposed method in this paper are consistent with those calculated by other existing studies. The method proposed in this paper can be easily applied to many other engineering problems.
基于神经网络集成的声纳换能器阵列互阻抗计算
本文采用神经网络积分法计算了声纳换能器阵列间的互阻抗。在互阻抗公式中出现的多维积分被神经网络上的积分所取代。首先,被积函数由训练好的神经网络建模。被积体上的多维积分可以用神经网络输出上的积分代替。既不需要数值积分,也不需要人工积分。通过这种替换,计算工作量大大减少。数值算例表明,本文方法的计算结果与已有研究结果一致。本文提出的方法可以很容易地应用于许多其他工程问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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