A DNN-Based Method for Sea Clutter Doppler Parameters Prediction

Xiaoyu Li, Yushi Zhang, Jinpeng Zhang
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Abstract

With the dramatic development of information technology and rapid growth of computation performances, artificial intelligent techniques have been gradually applied in all aspects of industrial research, especially in radar signal processing. However, deep learning methods utilized in radar sea clutter are just beginning, and related researches on Doppler characteristics of sea clutter remain sparse. In this paper, artificial intelligent research on sea clutter Doppler parameters prediction is developed based on real data. Firstly, classical signal processing methods for sea clutter spectral parameters extraction are introduced. Secondly, a deep neural network model is built to predict sea clutter Doppler parameters. Finally, the raised DNN model is compared to three other classical machine learning models which are widely used in regression prediction. After comprehensive comparisons with other models in different metrics, it can be concluded that DNN model built in this paper achieves better prediction results.
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一种基于dnn的海杂波多普勒参数预测方法
随着信息技术的飞速发展和计算性能的飞速提高,人工智能技术已逐渐应用于工业研究的各个方面,尤其是雷达信号处理领域。然而,深度学习方法在雷达海杂波中的应用才刚刚起步,对海杂波多普勒特性的相关研究还比较少。本文以实际数据为基础,开展了海杂波多普勒参数预测的人工智能研究。首先,介绍了海杂波频谱参数提取的经典信号处理方法。其次,建立深度神经网络模型,预测海杂波多普勒参数;最后,将提出的深度神经网络模型与其他三种广泛用于回归预测的经典机器学习模型进行了比较。通过与其他模型在不同指标上的综合比较,可以得出本文构建的DNN模型具有更好的预测效果。
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