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Multi-site post-processing of numerical forecasts using a polynomial network substitution for the general differential equation based on operational calculus

机译:基于操作微积分的一般微分方程多项式网络替换的多网站后处理

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摘要

Precise daily forecasts of local wind speed are necessary for planning of the changeable wind power production. Anomalies in local weather cause inaccuracies in daily predictions using meso-scale numerical models. Statistical methods using historical data can adapt the forecasts to specific local conditions. Based on a 2-stage approach of the Perfect Prog method, used routinely in meteorology, the article proposes an enhanced forecast correction procedure with initial estimations of the optimal numbers of training days whose latest data observations are used to elicit daily prediction models. Determination of this main training parameter allows for improvements in the middle-term numerical forecasts of wind speed in the majority of prediction days. Subsequently in the 2nd stage the correction model post-processes numerical forecasts of the training input variables to calculate 24-hour prediction series of the target wind speed at the corresponding time. Differential polynomial network is used to develop the test and post-processing models, which represent the current spatial data relations between the relevant meteorological inputs-output quantities. This innovative machine learning method defines and substitutes for the general linear partial differential equation being able to describe the local atmospheric dynamics which is too complex and uncertain to be represented by standard soft-computing techniques. The complete derivative formula is decomposed into specific sub-solutions of node unknown sum functions in the multi-layer polynomial network structure using Operational Calculus to model the searched separable output function. (C) 2018 Elsevier B.V. All rights reserved.
机译:对局部风速的精确日常预测是规划可变风电量的必要条件。使用中间规模数值模型,当地天气中的异常导致日常预测中的不准确性。使用历史数据的统计方法可以使预测适应特定的当地条件。基于完美PROG方法的2阶段方法,通常在气象中使用,文章提出了增强的预测校正程序,其初始估计最新数据观察用于引出日常预测模型的培训日。该主要培训参数的测定允许改进大​​多数预测天中的风速中期数值预测。随后在第二阶段,校正模型后处理训练输入变量的数字预测,以在相应的时间计算24小时预测系列的目标风速。差分多项式网络用于开发测试和后处理模型,其代表相关气象输入输出量之间的当前空间数据关系。这种创新的机器学习方法定义和替代通用线性部分微分方程,能够描述太复杂和不确定的局部大气动态,并且不确定是由标准软计算技术表示的。完整的衍生公式用操作微积分在多层多项式网络结构中分解为节点未知和函数的特定子解,以模拟搜索到的可分离输出功能。 (c)2018 Elsevier B.v.保留所有权利。

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