论文标题

使用基于物理的建模和机器学习的海床分类

Seabed classification using physics-based modeling and machine learning

论文作者

Frederick, Christina, Villar, Soledad, Michalopoulou, Zoi-Heleni

论文摘要

在这种基于工作模型的方法中,采用了机器学习技术,以基于两层海床的地球声性质在海洋环境中对沉积物进行分类。研究了两种不同的情况。首先,设置了一个简单的低频案例,在其中用正常模式对声场进行建模。为海底沉积物可能性提出了四种不同的假设,并使用各种机器学习技术和简单的匹配场方法探索了这些假设。对于大多数噪声水平,后者的性能较差。其次,考虑了来自粗糙的两层海底的散射的高频模型。同样,通过机器学习将四种不同的沉积物可能性分类。为了提高精度,采用了1D卷积神经网络(CNN)。在这两种情况下,我们都看到机器学习方法以简单和更复杂的配方都带来有效的沉积物表征。我们的结果评估了不同分类器的噪声和模型错误指定的鲁棒性。

In this work model-based methods are employed along with machine learning techniques to classify sediments in oceanic environments based on the geoacoustic properties of a two-layer seabed. Two different scenarios are investigated. First, a simple low-frequency case is set up, where the acoustic field is modeled with normal modes. Four different hypotheses are made for seafloor sediment possibilities and these are explored using both various machine learning techniques and a simple matched-field approach. For most noise levels, the latter has an inferior performance to the machine learning methods. Second, the high-frequency model of the scattering from a rough, two-layer seafloor is considered. Again, four different sediment possibilities are classified with machine learning. For higher accuracy, 1D Convolutional Neural Networks (CNNs) are employed. In both cases we see that the machine learning methods, both in simple and more complex formulations, lead to effective sediment characterization. Our results assess the robustness to noise and model misspecification of different classifiers.

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