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Prediction of Aerosol Particle Size Distribution Based on Neural Network

机译:基于神经网络的气溶胶粒度分布预测

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Aerosol plays a very important role in affecting the earth-atmosphere radiation budget, and particle size distribution is an important aerosol property parameter. Therefore, it is necessary to determine the particle size distribution. However, the particle size distribution determined by the particle extinction efficiency factor according to the Mie scattering theory is an ill-conditioned integral equation, namely, the Fredholm integral equation of the first kind, which is very difficult to solve. To avoid solving such an integral equation, the BP neural network prediction model was established. In the model, the aerosol optical depth obtained by sun photometer CE-318 and kernel functions obtained by Mie scattering theory were used as the inputs of the neural network, particle size distributions collected by the aerodynamic particle sizer APS 3321 were used as the output, and the Levenberg–Marquardt algorithm with the fastest descending speed was adopted to train the model. For verifying the feasibility of the prediction model, some experiments were carried out. The results show that BP neural network has a better prediction effect than that of the RBF neural network and is an effective method to obtain the aerosol particle size distribution of the whole atmosphere column using the data of CE-318 and APS 3321.
机译:气溶胶在影响地球大气辐射预算方面发挥着一种非常重要的作用,粒度分布是一个重要的气溶胶属性参数。因此,有必要确定粒度分布。然而,根据MIE散射理论根据粒子消光效率决定的粒度分布是一种不良的整体方程,即第一种的Fredholm积分方程,这是非常难以解决的。为避免求解这种积分方程,建立了BP神经网络预测模型。在该模型中,使用MIE散射理论获得的SUR光度计CE-318获得的气溶胶光学深度和由MIE散射理论获得的内核功能作为神经网络的输入,由空气动力学粒子Sizer AP 3321收集的粒度分布用作输出,并采用具有最快降速速度的Levenberg-Marquardt算法来训练模型。为了验证预测模型的可行性,进行了一些实验。结果表明,BP神经网络具有比RBF神经网络更好的预测效果,并且是使用CE-318和AP 3321的数据获得整个大气柱的气溶胶粒度分布的有效方法。

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