集成模型输出统计量在校准和短期天气预报中的应用

Fajar Dwi Cahyoko, Sutikno, Purhadi
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引用次数: 0

摘要

数值天气预报是一种天气预报方法,它被转换成一个数学方程组,用数值方法求解。将NWP的基本理论转化为计算机代码仍然会产生错误。为了减少误差,提高NWP模型预测结果的准确性,可以使用模型输出统计(model Output Statistics, MOS)方法进行统计后处理。使用模型输出统计量进行天气预报仍然存在一个不足,即它仍然会产生高偏差。为了提高预测模型的准确性,可以使用集成模型输出统计(EMOS)。这种方法是从集合预测系统(EPS)出发的,它被理解为由同时验证的两个或多个单一预测模型的组合组成的模型。这种技术产生的概率预报采用高斯预测概率密度函数(pdf)的形式,用于连续的天气变量。本研究的集合成员包括PLS、PCR和Ridge回归的预测。在这些性能中,EMOS从连续天气变量的集合预报中提供预测PDF和CDF,但不考虑空间相关性。在20、30和40天以上的培训期间,3个站点的EMOS温度预报均为良好和一般。基于RMSE和CRPS等天气预报评价指标,EMOS在准确度和精密度上都优于原始集合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Usage of Ensemble Model Output Statistics for Calibration and Short-term Weather Forecast
Numerical Weather Prediction is a weather forecasting method that is translated into a system of mathematical equations that are solved by numerical methods. The transformation of the basic theory of NWP into computer code still produces errors. To reduce errors and increase the accuracy of the prediction results of the NWP model, statistical postprocessing can be performed using the Model Output Statistics (MOS) method. The use of model output statistics for weather prediction still has a deficiency, namely, it still produces high bias. To increase the accuracy of the prediction model, it can use the ensemble model output statistics (EMOS). This approach is set out from the ensemble prediction system (EPS) which has an understanding as a model consisting of a combination of two or more single prediction models that are verified at the same time. This technique yields probabilistic forecasts that take the form of Gaussian predictive probability density functions (PDFs) for continuous weather variables. The ensemble members in this study consist of prediction from PLS, PCR, and Ridge Regression. In these performances, EMOS offers predictive PDF and CDF from an ensemble forecast of a continuous weather variable, but it is not considered spatial correlation. For the training period over 20,30 and 40 days, EMOS temperature forecast at 3 sites into good and fair ones. Based on weather prediction assessment indicators like RMSE and CRPS, EMOS is better than raw ensemble in terms of accuracy and precision.
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