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Wind speed deterministic forecasting and probabilistic interval forecasting approach based on deep learning, modified tunicate swarm algorithm, and quantile regression

机译:基于深度学习,修改统一群算法和分位式回归的风速确定性预测和概率间隔预测方法

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摘要

As a renewable, clean and economical energy source, wind energy has rapidly infiltrated into the modern power grid system. Wind speed forecasting, the crucial technology of wind power grid connection, has attracted large amounts of scholars for research and modeling. However, a large number of models only focus on the point forecasts, which are far from meeting the requirements of risk control and evaluation of power system. To fill the gap, a novel forecasting model which combined the modified multi-objective tunicate algorithm, benchmark models, and Quantile regression is proposed for deterministic and probabilistic interval forecasts. Theoretical proof demonstrates that the proposed modified algorithm can combine the merits of all benchmark models and better solve the nonlinear characteristics of wind speed. Comparative experiments which include sixteen relevant models are performed on three datasets to validate the performance of the proposed model. Simulation results show that the proposed model is the most accurate in all datasets, and can also get the interval forecast results with relatively high coverage and the narrowest width. Therefore, this model can provide accurate point forecasting results and uncertainty information, which is beneficial to the real-time control of wind turbine and power grid dispatching. (c) 2021 Elsevier Ltd. All rights reserved.
机译:作为可再生,清洁,经济的能源,风能迅速渗透到现代电网系统中。风速预测,风电网连接的关键技术,吸引了大量的研究和建模学者。然而,大量模型仅关注点预测,这远未满足风险控制和电力系统评估的要求。为了填补差距,提出了一种组合修改的多目标统计算法,基准模型和量子回归的新型预测模型,用于确定性和概率间隔预测。理论证明表明,所提出的修改算法可以结合所有基准模型的优点,更好地解决风速的非线性特征。在三个数据集上执行包含十六个相关模型的比较实验,以验证所提出的模型的性能。仿真结果表明,该模型在所有数据集中最准确,也可以获得相对覆盖率和最窄宽度的间隔预测结果。因此,该模型可以提供准确的点预测结果和不确定性信息,这有利于风力涡轮机和电网调度的实时控制。 (c)2021 elestvier有限公司保留所有权利。

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