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Probabilistic Visibility Forecasting Using Neural Networks

机译:神经网络的概率能见度预测

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摘要

Statistical methods are widely applied in visibility forecasting. In this article, further improvements are explored by extending the standard probabilistic neural network approach. The first approach is to use several models to obtain an averaged output, instead of just selecting the overall best one, while the second approach is to use deterministic neural networks to make input variables for the probabilistic neural network. These approaches are extensively tested at two sites and seen to improve upon the standard approach, although the improvements for one of the sites were not found to be of statistical significance.
机译:统计方法已广泛应用于能见度预测中。在本文中,将通过扩展标准概率神经网络方法来探索进一步的改进。第一种方法是使用几种模型来获得平均输出,而不是仅仅选择总体上最佳的模型,而第二种方法是使用确定性神经网络为概率神经网络生成输入变量。这些方法已在两个站点进行了广泛测试,并被认为比标准方法有所改进,尽管未发现其中一个站点的改进具有统计意义。

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