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A Parallel Efficient Partitioning Algorithm for the statistical model of dynamic sea clutter at low grazing angle

机译:低掠角动态海杂波统计模型的并行有效划分算法

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Study of characteristics of sea clutter is very important for signal processing of radar, detection of targets on sea surface and remote sensing. The sea state is complex at Low grazing angle (LGA), and it is difficult with its large irradiation area and a great deal simulation facets. A practical and efficient model to obtain radar clutter of dynamic sea in different sea condition is proposed, basing on the physical mechanism of interaction between electromagnetic wave and sea wave. The classical analysis method for sea clutter is basing on amplitude and spectrum distribution, taking the clutter as random processing model, which is equivocal in its physical mechanism. To achieve electromagnetic field from sea surface, a modified phase from facets is considered, and the backscattering coefficient is calculated by Wu's improved two-scale model, which can solve the statistical sea backscattering problem less than 5 degree, considering the effects of the surface slopes joint probability density, the shadowing function, the skewness of sea waves and the curvature of the surface on the backscattering from the ocean surface. We make the assumption that the scattering contribution of each facet is independent, the total field is the superposition of each facet in the receiving direction. Such data characters are very suitable to compute on GPU threads. So we can make the best of GPU resource. We have achieved a speedup of 155-fold for S band and 162-fold for KuX band on the Tesla K80 GPU as compared with Intel(R) Core(TM) CPU. In this paper, we mainly study the high resolution data, and the time resolution is millisecond, so we may have 10,00 time points, and we analyze amplitude probability density distribution of radar clutter.
机译:研究海杂波的特性对于雷达的信号处理,海面目标的检测和遥感等非常重要。在低掠射角(LGA)下,海状态很复杂,并且由于其照射面积大和模拟面多而难以实现。基于电磁波与海浪相互作用的物理机理,提出了一种实用有效的获取不同海况下动态海浪雷达杂波的模型。海浪杂波的经典分析方法是基于幅度和频谱分布,将海浪杂波作为随机处理模型,其物理机制是模棱两可的。为了从海面获得电磁场,考虑了小平面的修正相位,并使用吴氏改进的两尺度模型计算了背向散射系数,考虑了表面坡度的影响,该方法可以解决小于5度的统计海背向散射问题。联合概率密度,阴影函数,海浪偏度和海面向后散射的表面曲率。我们假设每个小面的散射贡献是独立的,总场是每个小面在接收方向上的叠加。这样的数据字符非常适合在GPU线程上进行计算。因此,我们可以充分利用GPU资源。与Intel®CoreTM CPU相比,我们在Tesla K80 GPU上实现了S波段155倍的加速和Ku \ X波段162倍的加速。本文主要研究高分辨率数据,时间分辨率为毫秒,因此可能有1万个时间点,并分析了雷达杂波的幅度概率密度分布。

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