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An Adaptive Bilevel Programming Model for Nonparametric Prediction Intervals of Wind Power Generation

机译:风力发电非参数预测区间的自适应双层规划模型

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It is hard to obtain precise wind power forecasting due to the chaotic nature of weather systems. Prediction intervals become an efficient tool to quantify the uncertainty involved in wind power forecasting. Traditional central prediction intervals are widely produced by forecasters, however, which might be conservative with respect to interval width and not well fit the practical conditions. This paper develops a novel adaptive bilevel programming (ABP) model, with extreme learning machine based quantile regression as the follower's problem and tuning hyperparameters of quantile proportions as the leader's problem. The proposed ABP model aims at minimizing the average interval width subject to well calibration. In order to overcome the difficulties in disposing of the intractable nested structure of bilevel programming, the ABP model is equivalently transformed into a single-level nonlinear programming problem with bilinear terms. An improved spatial branch-and-bound (ISBB) algorithm is proposed to efficiently solve the reformulated bilinear programming problem. In the ISBB algorithm, an innovative bounds tightening method is developed to tighten the convex relaxation of the bilinear constraint and enhance the convergence. Experimental studies based on actual wind farm of USA under four seasons show the significant effectiveness and high robustness of the developed ABP model, as well as the excellent global optimum attainment and convergence performance of the proposed ISBB algorithm. Moreover, the widely used traditional interval scores are first verified to be prejudiced in probabilistic wind power forecasting evaluation.
机译:由于天气系统的混乱性质,很难获得精确的风能预测。预测间隔成为量化风电预测中涉及的不确定性的有效工具。传统的中央预测区间是由预报员广泛产生的,但是,区间区间的宽度可能是保守的,并不适合实际情况。本文开发了一种新颖的自适应双层编程(ABP)模型,其中基于极限学习机的分位数回归是追随者的问题,而调整分位数比例的超参数是领导者的问题。所提出的ABP模型旨在最小化井校准后的平均间隔宽度。为了克服处理双层编程的难解嵌套结构的困难,将ABP模型等效地转换为具有双线性项的单级非线性编程问题。提出了一种改进的空间分支定界算法(ISBB),以有效地解决重构的双线性规划问题。在ISBB算法中,开发了一种创新的边界收紧方法,以收紧双线性约束的凸松弛并增强收敛性。根据美国在四个季节下的实际风电场进行的实验研究表明,所开发的ABP模型具有显着的有效性和高鲁棒性,并且所提出的ISBB算法具有出色的全局最优获得和收敛性能。此外,首先验证了广泛使用的传统区间得分对概率风电预测评估有偏见。

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