Improved frost forecast using machine learning methods

José Roberto Rozante , Enver Ramirez , Diego Ramirez , Gabriela Rozante
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Abstract

Frosts are one of the atmospheric phenomena with one of the larger negative effects on the agricultural sector in the southern region of Brazil, therefore, an earlier forecast can minimize their impacts. In the present work, artificial neural networks (ANNs) techniques were applied in order to improve the predicting capabilities of frost events in southern Brazil. In the study, two multilayer perceptron (MLP) ANNs were built, one with ADAM optimizer and the other with SGD. The input parameters MLP-ANNs were numerical predictions of the Eta model. The ANNs were trained using four years (2012–2015), while validation and testing were performed using 2016 and 2017, respectively. An episode of frost that occurred on May 21st, 2018, related to an intense cold air mass, was also utilized to evaluate the performance of the ANNs. The best configurations (topologies and hyperparameters) of the ANNs were identified through experiments, using the highest accuracy obtained during the validation period as a metric. The results of the ANNs with ADAM and SGD optimizers were compared with the predictions of the Eta model. For the case study, an additional comparison against the operational frost index (IG) from the National Institute for Space Research (INPE) was also included. The performance of both ANNs (properly configured) with ADAM and SGD optimizers are comparable one to the other. And both are significantly better compared to the Eta model. The ANNs were able to drastically reduce the underestimation trends of frost events caused by the warm bias of the Eta model. The ANNs also indicated more satisfactory performances when compared to the INPE IG. In general, the ANNs were able to identify deficiencies in Eta predictions, and consequently improve their results. In this sense, the use of ANNs to predict frost events can be a very useful tool in an operational environment.

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使用机器学习方法改进霜冻预报
霜冻是对巴西南部地区农业部门产生较大负面影响的大气现象之一,因此,较早的预报可以将其影响降到最低。为了提高巴西南部地区霜冻事件的预测能力,本文采用了人工神经网络(ann)技术。在研究中,构建了两个多层感知器(MLP)人工神经网络,一个带有ADAM优化器,另一个带有SGD。mlp - ann的输入参数是Eta模型的数值预测。人工神经网络的训练时间为4年(2012-2015年),验证和测试时间分别为2016年和2017年。2018年5月21日发生的与强冷空气团有关的霜冻事件也被用来评估人工神经网络的性能。通过实验确定人工神经网络的最佳配置(拓扑和超参数),使用在验证期间获得的最高精度作为度量。采用ADAM和SGD优化器的人工神经网络的预测结果与Eta模型的预测结果进行了比较。在案例研究中,还包括了与国家空间研究所(INPE)的运行霜冻指数(IG)的额外比较。使用ADAM和SGD优化器的ann(正确配置)的性能是相当的。两者都比Eta模型好得多。人工神经网络能够大大减少由Eta模式的暖偏引起的霜冻事件的低估趋势。与INPE IG相比,人工神经网络也表现出更令人满意的性能。总的来说,人工神经网络能够识别出Eta预测中的缺陷,从而改进他们的结果。从这个意义上说,使用人工神经网络来预测霜冻事件在作战环境中是一个非常有用的工具。
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