Wind power prediction method based on multi-loop improved gradient boosting decision tree

Zheng He, Lin Xu, Yufei Ai, Wei Li, Huanhuan Dong
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Abstract

With the increase in energy demand, carbon emissions, environmental pollution, climate change and other issues have become increasingly prominent, China has accelerated the construction of new energy sources. Especially in the field of wind power generation, it is the most potential type of large-scale development of non-hydroelectric renewable energy. Due to the volatility, intermittency and low energy density of wind power, the power of wind power also fluctuates. However, with the early digital transformation of my country's energy industry, a large number of meteorological environments and equipment measurement points have been accumulated in wind power production sites. Power generation related data, using artificial intelligence, deep learning and other technologies can effectively predict the power generation of the station with high precision. A model algorithm of multi-loop gradient boosting decision tree is used in this paper, considering the stationarity test of time series and wind power fluctuation attribute, the accuracy of wind power prediction is effectively improved. Help the power dispatching department to pre-arrange dispatching plans according to wind power changes. Ensure the smooth and safe operation of the power grid.
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基于多回路改进梯度增强决策树的风电功率预测方法
随着能源需求的增加,碳排放、环境污染、气候变化等问题日益突出,中国加快了新能源的建设。特别是在风力发电领域,它是最具大规模开发潜力的非水电可再生能源类型。由于风电的波动性、间歇性和低能量密度,风电的功率也会出现波动。但随着我国能源行业数字化转型的早期,风电生产现场积累了大量气象环境和设备测量点。发电相关数据,利用人工智能、深度学习等技术,可以有效、高精度地预测电站的发电量。本文采用多环梯度增强决策树模型算法,考虑了时间序列的平稳性检验和风电功率波动属性,有效提高了风电功率预测的精度。根据风电变化情况,协助电力调度部门提前安排调度方案。确保电网平稳、安全运行。
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