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Predicting the Power Output of Distributed Renewable Energy Resources within a Broad Geographical Region

机译:预测广泛地理区域内分布式可再生能源资源的权力输出

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In recent years, estimating the power output of inherently intermittent and potentially distributed renewable energy sources has become a major scientific and societal concern. In this paper, we provide an algorithmic framework, along with an interactive web-based tool, to enable short-to-middle term forecasts of photovoltaic (PV) systems and wind generators output. Importantly, we propose a generic PV output estimation method, the backbone of which is a solar irradiance approximation model that incorporates free-to-use, readily available meteorological data coming from online weather stations. The model utilizes non-linear approximation components for turning cloud-coverage into radiation forecasts, such as an MLP neural network with one hidden layer. We present a thorough evaluation of the proposed techniques, and show that they can be successfully employed within a broad geographical region (the Mediterranean belt) and come with specific performance guarantees. Crucially, our methods do not rely on complex and expensive weather models and data, and our web-based tool can be of immediate use to the community as a simulation data acquisition platform.
机译:近年来,估计固有的间歇性和潜在的分布式可再生能源的功率输出已经成为一个重大的科学和社会的关注。在本文中,我们提供了一个算法框架,一个互动的基于Web的工具一起,使光伏(PV)系统和风力发电机输出的短期至中期预测。重要的是,我们提出了一个通用的PV量推定方法,它的主干是太阳辐射近似模型,结合了免费使用的,随手可得的气象数据从在线气象站到来。该模型利用用于车削云覆盖成辐射的预测,例如具有一个隐藏层的MLP神经网络的非线性近似的组件。我们目前所提出的技术进行全面评价,并表明他们可以成功地采用了广阔的地理区域(地中海带)内,并配有特定的性能保证。最重要的是,我们的方法不依赖于复杂和昂贵的气象模型和数据,我们的基于Web的工具可以直接使用,以社区为模拟数据采集平台。

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