基于优化的电力交易快速分析框架

K. Kasiviswanathan, P. Luh, G. Merchel, J. Palmberg, D.T. O'Connor
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引用次数: 2

摘要

有效的电力交易可以降低电力公司的发电成本。然而,做出好的交易决策并不是一件容易的事情,因为交易是通过电力系统需求和储备需求与发电机组的调度相结合的。然而,在竞争日益激烈的电力市场中,交易决策的速度和质量对于抓住频繁出现的机会变得至关重要。当交易机会出现时,可以一次分析一个已知的机会。随着时间的推移,当大量这样的机会一个接一个地出现时,这种分析将给交易分析人员带来巨大的负担。本文提出了一种不同的框架。在分析一组已知的机会时,还分析了进一步购买/出售固定大小的电力块的经济影响。在该框架内,利用拉格朗日松弛法解决了调度与事务的集成问题。开发了优化交易级别和/或持续时间的四种交易模式,以处理各种交易机会。然后建立一个参考表,以帮助事务分析人员快速处理新出现的机会。该算法还可以定期重新运行,以在求解另一组已知事务的同时更新引用表。基于美国东北公用事业公司数据集的数值测试结果表明,该方法可以在合理的计算时间内获得结果,从而帮助交易分析人员做出快速、审慎的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimization-based framework for the quick analysis of power transactions
Effective power transactions can reduce generation costs for an electric utility. Making good transaction decisions, however, is not an easy task since transactions are coupled with the scheduling of generating units through power system demand and reserve requirements. The speed and quality of transaction decisions are nonetheless becoming critical to capture frequently emerging opportunities in the increasingly competitive power market. As transaction opportunities emerge, the known opportunities can be analyzed one at a time. When a large number of such opportunities emerge one by one as time proceeds, this kind of analysis will however lay a huge burden on transaction analysts. A different framework is presented in this paper. While analyzing a known set of opportunities, the economic effects of further purchasing/selling fixed sizes of power blocks are also analyzed. Within the framework, the integrated scheduling and transaction problem is solved by using the Lagrangian relaxation method. Four transaction modes that optimize transaction level and/or duration are developed to deal with various transaction opportunities. A reference table is then established to help transaction analysts quickly deal with emerging opportunities. The algorithm can also be re-run periodically to update the reference table while solving another set of known transactions. Numerical testing results based on Northeast Utilities (USA) data sets show that results can be obtained in reasonable computational times to help transaction analysts make quick and prudent decisions.
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