一种预测风电场产量的优化方法

E. Carlini, A. Ianniciello, C. Pisani, A. Vaccaro, D. Villacci
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引用次数: 7

摘要

可再生能源(RES)被广泛认为是应对石油资源迅速枯竭的有效解决方案,是确保能源供应安全和满足致力于对抗全球变暖的国际监管框架所规定目标的有趣能源选择。风能无疑是能够为实现负荷曲线提供重要贡献的主要能源之一。尽管如此,由于(i)物理现象的高度不确定性和随机性,(ii)对场地地形的强烈依赖,(iii)所涉及过程的高度非线性,风能资源是最具挑战性的预测之一。因此,风力发电场在现有电力系统中的大规模渗透明显影响到相关的安全运行。为了解决上述问题,本文旨在开发一种先进的方法来估计风电场的生产能力,并对欧洲中期天气预报中心(ECMWF)模型或小规模模拟联盟(COSMO)模型的局部预测进行表征。高分辨率的数字地形模型、cosmos - i2模型提供的合适的横向边界条件、应用风速-功率统计识别技术得到的优化的风力生成曲线是该方法的优化要素。研究活动包括在与意大利TSO, TERNA和意大利航空航天研究中心(CIRA)合作的研究项目中。
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An optimised methodology to predict the wind farms production
Renewable energy sources (RES), are widely recognized as an effective solution to face with the rapid depletion of oil resources and an interesting energy option to ensure the energy supplies security and the meeting of the targets imposed by the international regulatory frameworks devoted to contrast the global warming. Wind energy source is undoubtedly one of the primary energy source able to provide a significant contribution to the fulfillment of the load curve. Nonetheless, wind energy source is one of the most challenging to predict due to the (i) high level of uncertainty and randomness of the physical phenomenon, (ii) strong dependence on the site topography, (iii) high non-linearity of the involved processes. The massive penetration of wind farms in the existing electrical power systems hence sensibly affects the related secure operation. To provide a solution at the above issue, the present paper aims at the development of an advanced methodology for estimating the wind farms producibility and for characterizing locally the predictions of European Center for Medium-Range Weather Forecasts (ECMWF) model or equivalently the ones of the Consortium for Small-scale Modeling (COSMO). The ingredients which makes the developed methodology optimal are high resolution digital terrain models, proper lateral boundary conditions provided by COSMO-I2 model, optimized wind generation curves derived by the application of statistical identification techniques on wind speed-power. The research activities are included in a research project with the partnership of the Italian TSO, TERNA, and the Italian Center for Aereospatial Research, CIRA.
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