面向可再生能源随机分析的灵活情景生成工具

Tao Wang, H. Chiang, R. Tanabe
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引用次数: 14

摘要

提出了一种支持多种场景生成方法的可再生场景生成工具。该工具可以对多种依赖结构进行建模,使用户更灵活地满足对可再生能源不确定性进行精确建模的需要。所提出的工具使用直方图中的边际分布描述了从位于不同地点的不同可再生能源获得的测量结果的不确定性。为了捕获建模和采样中的依赖性,所提出的工具因此由两个关键组件组成:(i)通过适当的copula建模的分布和依赖性;(ii)拉丁超立方体抽样方法生成依赖场景。生成的场景依赖于依赖性建模以及用于捕获依赖性的采样技术。所提出的情景生成工具通过实际风电输出测量和预测功率输出进行了数值测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward a flexible scenario generation tool for stochastic renewable energy analysis
A renewable scenario generation tool is proposed for supporting multiple scenario generation methods. This tool can model a variety of dependence structures, allowing users more flexibility to meet the needs of accurately modeling the uncertainty in renewable energy. The proposed tool describes uncertainty in measurements obtained from different renewable sources located in different sites using marginal distributions in histograms. To capture dependence in modeling and sampling, the proposed tool is thus composed of two key components: (i) distribution and dependence modeled by proper copula; (ii) dependent scenario generation by the Latin hypercube sampling method. The scenarios produced rely on dependence modeling as well as the sampling technique used to capture dependence. The proposed scenario generation tool is numerically tested with actual wind power output measurements and forecasted power outputs.
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