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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Improving weather radar estimates of rainfall using feed-forward neural networks.
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Improving weather radar estimates of rainfall using feed-forward neural networks.

机译:使用前馈神经网络改善天气雷达对降雨量的估计。

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摘要

In this paper an approach is described to improve weather radar estimates of rainfall based on a neural network technique. Other than rain gauges which measure the rain rate R directly on the ground, the weather radar measures the reflectivity Z aloft and the rain rate has to be determined over a Z-R relationship. Besides the fact that the rain rate has to be estimated from the reflectivity many other sources of possible errors are inherent to the radar system. In other words the radar measurements contain an amount of observation noise which makes it a demanding task to train the network properly. A feed-forward neural network with Z values as input vector was trained to predict the rain rate R on the ground. The results indicate that the model is able to generalize and the determined input-output relationship is also representative for other sites nearby with similar conditions.
机译:在本文中,描述了一种基于神经网络技术来改善气象雷达降雨量的方法。除了直接在地面上测量雨量R的雨量计之外,气象雷达还可以测量高空反射率Z,并且必须通过Z-R关系确定雨量。除了必须根据反射率估算降雨率这一事实外,雷达系统还固有许多其他可能的误差源。换句话说,雷达测量结果包含大量的观察噪声,这使得正确训练网络成为一项艰巨的任务。训练以Z值作为输入向量的前馈神经网络,以预测地面上的降雨率R。结果表明,该模型能够推广,确定的投入产出关系也可以代表附近其他条件相似的地点。

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