Gold Standard in selection of rainfall forecasting models for soybean crops region

Márcio Paulo de Oliveira, M. A. U. Opazo, M. Galea, J. Johann
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Abstract

Rainfall data forecasting is essential in agricultural sciences due to impacts caused by water excess or deficit on crop growth. Our study aimed to develop a method to select rainfall forecast models using references with negligible error denoted as the gold standard. To this end, we used forecasting models from national centers such as Canadian Meteorological Center (CMC), European Center for Medium-Range Weather Forecasts (ECMWF), National Center for Environmental Prediction (NCEP), and Center for Weather Forecasting and Climate Studies (CPTEC). The study area comprised the western mesoregion of Paraná State (Brazil), and data were gathered from October to March between the soybean crop seasons of 2010/2011 and 2015/2016. Ten-day period clusters, corresponding to 240 h forecasts in the centers, were used to assess agreement with the gold standard. Our results showed that forecasting center selection must be based on rainfall value ranges and geographic locations. Selection according to the highest agreement with the gold standard was estimated at 76.9% for range 1 in CPTEC, 38.5% for range 2 and 4 in ECMWF, and 38.5% for range 3 in NCEP. In conclusion, the proposed method was efficient in selecting forecasting centers in areas of interest
大豆种植区降雨预报模型选择的金标准
由于水分过剩或不足对作物生长的影响,降雨数据预报在农业科学中至关重要。本研究旨在建立一种以误差可忽略为金标准的参考资料选择降雨预报模型的方法。为此,我们使用了来自加拿大气象中心(CMC)、欧洲中期天气预报中心(ECMWF)、国家环境预报中心(NCEP)和天气预报与气候研究中心(CPTEC)等国家中心的预测模型。研究区域为巴西帕拉纳州西部中央区,数据采集时间为2010/2011年和2015/2016年大豆种植季之间的10月至3月。十天周期集群,对应于中心的240小时预测,被用来评估与金标准的一致性。结果表明,预报中心的选择必须基于降雨量范围和地理位置。根据与金标准最高一致性的选择,CPTEC的范围1估计为76.9%,ECMWF的范围2和4为38.5%,NCEP的范围3为38.5%。总之,所提出的方法在感兴趣的区域中选择预测中心是有效的
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