Fast and accurate hourly forecasts of wind speed and power are crucial in quantifying and planning the energy budget in the electric grid. Modeling wind at a high resolution brings forth considerable challenges given its turbulent and highly nonlinear dynamics. In developing countries, where wind farms over a large domain are currently under construction or consideration, this is even more challenging given the necessity of modeling wind over space as well. In this work, we propose a machine learning approach to model the nonlinear hourly wind dynamics in Saudi Arabia with a domain-specific choice of knots to reduce the spatial dimensionality. Our results show that for locations highlighted as wind abundant by a previous work, our approach results in an 11% improvement in the two-hour-ahead forecasted power against operational standards in the wind energy sector, yielding a saving of nearly one million US dollars over a year under current market prices in Saudi Arabia.
翻译:快速和准确的小时风速和电力预报对于量化和规划电网能源预算至关重要。 以高分辨率建模风能因其动荡和非线性高度的动态而带来巨大的挑战。 在发展中国家,大面积的风力农场目前正在建设或考虑建造或考虑,鉴于在空间上建模风力的必要性,这甚至更具有挑战性。 在这项工作中,我们提出一个机器学习方法,在沙特阿拉伯建模非线性小时风力动力,以特定领域选择节节来降低空间维度。 我们的结果显示,对于以往工作突出显示为充裕风的地点,我们的方法是,根据风能部门的运行标准,将两小时预测的电量提高11%,在沙特阿拉伯目前的市场价格下,每年节省近100万美元。