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Research on recognition method of cloud precipitation particle shape based on BP neural network

机译:基于BP神经网络的云沉淀粒子形状识别方法研究

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In order to solve the problem that the shape of cloud particle images measured by airborne cloud imaging probe (CIP) cannot be automatically recognized, this paper proposes an automatic recognition method of cloud and precipitation particle shape based on BP neural network. This method mainly uses a set of geometric parameters which can better describe the shape characteristics of cloud precipitation particles. Based on the cloud precipitation particle images measured by CIP in the precipitation stratiform clouds in northern China, a particle shape data training set and a testing set were constructed to train and verify the effect of the selected BP neural network model. The selected BP neural network model can classify the cloud particle image into tiny, column, needle, dendrite, aggregate, graupel, sphere, hexagonal and irregular. Utilizing the field campaign data measured by CIP, the habit identified results by the improved Holroyd method and by the selected BP neural network model were compared, which shows that the accuracy of BP neural network method is better than that of improved Holroyd method.
机译:为了解决空气传播云成像探针(CIP)测量的云粒子图像的形状,本文提出了一种基于BP神经网络的云和析出粒子形状的自动识别方法。该方法主要使用一组几何参数,该几何参数可以更好地描述云降水颗粒的形状特性。基于通过CIP测量的云降析粒子图像在中国北部的沉淀层状云中,构建了一种粒子形状数据训练和测试组,以训练并验证所选择的BP神经网络模型的效果。所选的BP神经网络模型可以将云粒子图像分类为微小,柱,针,枝晶,骨料,Graupel,球体,六边形和不规则。利用CIP测量的现场活动数据,比较了通过改进的Holroyd方法和所选择的BP神经网络模型的习惯确定的结果,表明BP神经网络方法的准确性优于改进的Holroyd方法。

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