A Bayesian Approach of the Availability Complementarity of Renewable Resources

F. Munteanu, A. Ciobanu, C. Nemeş
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Abstract

The availability and the autonomy of local power systems supplied from renewable sources are the main subject of the paper. Due to pure random nature of solar and wind characteristics, the Bayes network methodology was selected to study the available generated power of given resources non-optimally located but near the load. The Bayes networks were generated from a large database. The corresponding information was recorded using a professional meteorological station while the Essential Graph Search was the algorithm to generate the final Bayes network structure and parameters. The network allows for weather estimation also. The final results were validated by meteorological experts.
可再生资源可用性互补性的贝叶斯方法
可再生能源供电的地方电力系统的可用性和自主性是本文的主要主题。由于太阳能和风能特性的纯粹随机性,选择贝叶斯网络方法来研究非最优位置但靠近负荷的给定资源的可用发电量。贝叶斯网络是从一个大型数据库生成的。使用专业气象站记录相应信息,Essential Graph Search算法生成最终的贝叶斯网络结构和参数。该网络还允许天气预报。最后的结果得到了气象专家的验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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