基于动态场景的太阳能热发电机组调度方法

Forhad Zaman, R. Sarker, Guijuan Chang
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引用次数: 5

摘要

发电机经济高效调度是一个复杂的优化问题。当考虑到不确定的太阳能来源时,问题变得更加复杂。在过去的十年中,针对这个问题已经开发了不同的基于场景的解决方法,其中不确定的太阳能生产被表示为随机场景。尽管这种方法对于提前一天的调度是有益的,但是选择适当数量的场景是非常具有挑战性的。需要大量的场景才能得到稳定的解,但需要较长的计算时间来求解。本文建立了一种基于场景的动态优化模型,该模型在评估过程中动态设置场景数量。采用自适应调整控制参数的微分进化方法求解优化模型,以获得更好的性能。从文献中提取了一个24小时范围内的19个单位的太阳能热问题,并使用提出的和传统的方法来解决。分析结果表明,该方法在计算效率和求解稳定性方面具有一定的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic scenario-based solution approach for scheduling solar-thermal generators
The economic and efficient scheduling of electrical generators is a complex optimization problem. The problem becomes even more complex when the uncertain solar sources are considered. Over the last decade, different scenario-based solution approaches have been developed for this problem in which the uncertain solar productions are represented as random scenarios. Although this approach is beneficial for a day-ahead scheduling, the selection of an appropriate number of scenarios is very challenging. A large number of scenarios is required to obtain a stable solution, but it takes longer computational time to solve. In this paper, a dynamic scenariobased optimization model is developed in which the number of scenarios is dynamically set during the process of evaluations. The optimization model is solved using a differential evolution in which the control parameters are self-adaptively adjusted for better performance. A 19-unit solar thermal problem for a 24-hour time horizon is taken from the literature and solved using the proposed and conventional approaches. The obtained results are analyzed that shows that the proposed approach has some merits in terms of computational efficiency and solution stability.
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