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72hr forecast of wind power in Mani#x0307;sa, Turkey by using the WRF model coupled to WindSim

机译:WRF模型与WindSim结合对土耳其曼尼萨的风能72小时预报

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Wind power forecasting has recently become important to fulfill the increasing demand on energy usage. Two main approaches are applied to the wind power forecasting which can vary from 6 hours to 48 hours. One way is to model the atmosphere dynamically and the other method is to analyze wind speed and direction statistically. Although dynamical models forecast better than statistical models, since the former solves the problem physically, statistical models can be preferable when short term forecasting is needed due to their quick response time. Most of the currently available wind power forecasting systems analyzes the effect of wind field on wind power based on numerical weather prediction models. However, the resolution of these models is not sufficient enough when the scale of the turbines on the wind farms is considered. It is possible to overcome this problem by using computational fluid dynamics (CFD) models, which can provide both linear and nonlinear solutions on the turbine scale in terms of both wind speed and wind power forecasting. In this study, the WRF model is used for 72-hour wind speed and direction forecasting. The initial and boundary conditions of the model are provided by ECMWF operational forecasting data with the resolution of 0.25 degree. The WRF model is downscaled to 1 km resolution over Manisa Soma wind farm and 72-hour forecasts for each day of 2010 are accomplished. WindSim uses wind speed and direction values, which are solved on the nearest grid point of the WRF model to the location of a wind turbine, to simulate high-resolution wind speed values for 72hours. These WRF to WindSim coupled model results are compared to the wind power observations. As a result, we found that daily wind power generation errors per turbine vary between 90kW and 200kW for the seasons of spring, summer, and fall, whereas the error is about 150–350kW for winter. We also compared the errors of 24 hourly model outputs and we found that there is no sig- ificant difference among the first, the second, and the third 24 hourly forecasts. We finally applied model output statistics to the WRF to WindSim coupled model results in order to minimize their errors.
机译:风力发电预测最近已变得很重要,可以满足日益增长的能源使用需求。风能预测采用两种主要方法,其范围从6小时到48小时不等。一种方法是动态模拟大气,另一种方法是统计分析风速和风向。尽管动态模型的预测要比统计模型更好,但是由于前者可以物理地解决问题,因此,由于需要快速预测,因此当需要短期预测时,统计模型可能更可取。当前大多数可用的风能预报系统都基于数值天气预报模型来分析风场对风能的影响。但是,当考虑风电场中涡轮机的规模时,这些模型的分辨率不足。可以通过使用计算流体力学(CFD)模型来克服此问题,该模型可以在风速和风能预测方面在涡轮机规模上提供线性和非线性解决方案。在这项研究中,WRF模型用于72小时风速和风向预测。该模型的初始条件和边界条件由ECMWF运行预测数据提供,分辨率为0.25度。 WRF模型在Manisa Soma风力发电场上的分辨率下调至1 km,并完成了2010年每天72小时的预报。 WindSim使用风速和方向值(在WRF模型的最靠近网格的网格点上求解)来模拟72小时的高分辨率风速值。将这些WRF与WindSim耦合的模型结果与风能观测值进行比较。结果,我们发现,在春季,夏季和秋季,每个涡轮的每日风力发电误差在90kW和200kW之间变化,而在冬季,误差在150-350kW之间。我们还比较了24小时模型输出的误差,发现第一,第二和第三24小时预测之间没有显着差异。最后,我们将模型输出统计信息应用于WRF和WindSim耦合模型结果,以最大程度地减少其误差。

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