首页> 外文学位 >Enhanced Reserve Procurement Policies for Power Systems with Increasing Penetration Levels of Stochastic Resources
【24h】

Enhanced Reserve Procurement Policies for Power Systems with Increasing Penetration Levels of Stochastic Resources

机译:随机资源渗透水平提高的电力系统增强后备采购政策

获取原文
获取原文并翻译 | 示例

摘要

The uncertainty and variability associated with stochastic resources, such as wind and solar, coupled with the stringent reliability requirements and constantly changing system operating conditions (e.g., generator and transmission outages) introduce new challenges to power systems. Contemporary approaches to model reserve requirements within the conventional security-constrained unit commitment (SCUC) models may not be satisfactory with increasing penetration levels of stochastic resources; such conventional models pro-cure reserves in accordance with deterministic criteria whose deliverability, in the event of an uncertain realization, is not guaranteed. Smart, well-designed reserve policies are needed to assist system operators in maintaining reliability at least cost.;Contemporary market models do not satisfy the minimum stipulated N-1 mandate for generator contingencies adequately. This research enhances the traditional market practices to handle generator contingencies more appropriately. In addition, this research employs stochastic optimization that leverages statistical information of an ensemble of uncertain scenarios and data analytics-based algorithms to design and develop cohesive reserve policies. The proposed approaches modify the classical SCUC problem to include reserve policies that aim to preemptively anticipate post-contingency congestion patterns and account for resource uncertainty, simultaneously. The hypothesis is to integrate data-mining, reserve requirement determination, and stochastic optimization in a holistic manner without compromising on efficiency, performance, and scalability. The enhanced reserve procurement policies use contingency-based response sets and post-contingency transmission constraints to appropriately predict the influence of recourse actions, i.e., nodal reserve deployment, on critical transmission elements.;This research improves the conventional deterministic models, including reserve scheduling decisions, and facilitates the transition to stochastic models by addressing the reserve allocation issue. The performance of the enhanced SCUC model is compared against con-temporary deterministic models and a stochastic unit commitment model. Numerical results are based on the IEEE 118-bus and the 2383-bus Polish test systems. Test results illustrate that the proposed reserve models consistently outperform the benchmark reserve policies by improving the market efficiency and enhancing the reliability of the market solution at reduced costs while maintaining scalability and market transparency. The proposed approaches require fewer ISO discretionary adjustments and can be employed by present-day solvers with minimal disruption to existing market procedures.
机译:与随机资源(例如风能和太阳能)相关的不确定性和可变性,再加上严格的可靠性要求和不断变化的系统运行条件(例如发电机和输电中断),给电力系统带来了新的挑战。在常规的安全约束单位承诺(SCUC)模型中,对储备要求进行模型化的现代方法可能无法满足不断增加的随机资源渗透水平的需求。这种常规模型根据确定性标准来采购储量,在不确定的实现情况下,其交付能力得不到保证。需要明智,精心设计的备用政策,以帮助系统运营商以最低的成本维持可靠性。;当代的市场模型不能充分满足发电机意外事故的最低规定N-1要求。这项研究增强了传统的市场惯例,以更适当地处理发电机意外事故。此外,本研究采用随机优化方法,该方法利用了不确定情景的整体统计信息和基于数据分析的算法来设计和开发具有凝聚力的储备政策。所提出的方法修改了经典的SCUC问题,以包括旨在先行预测应急后的拥塞模式并同时解决资源不确定性的储备政策。假设是在不影响效率,性能和可伸缩性的情况下,以整体方式集成数据挖掘,储备需求确定和随机优化。增强的储备采购政策使用基于应变的响应集和应变后的传输约束来适当地预测追索行动(即节点储备的部署)对关键传输要素的影响。;本研究改进了常规确定性模型,包括储备调度决策,并通过解决储备金分配问题来促进向随机模型的过渡。将改进的SCUC模型的性能与当代确定性模型和随机单位承诺模型进行比较。数值结果基于IEEE 118总线和2383总线波兰语测试系统。测试结果表明,通过提高市场效率并以降低的成本增强市场解决方案的可靠性,同时保持可扩展性和市场透明度,拟议的储备金模型始终优于基准储备金政策。拟议的方法需要较少的ISO自由裁量调整,并且可以被当今的求解器采用,而对现有市场程序的破坏最小。

著录项

  • 作者

    Singhal, Nikita Ghanshyam.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Electrical engineering.;Energy.;Operations research.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 191 p.
  • 总页数 191
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号