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Optimal GENCO bidding strategy.

机译:GENCO最佳竞标策略。

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摘要

Electricity industries worldwide are undergoing a period of profound upheaval. The conventional vertically integrated mechanism is being replaced by a competitive market environment. Generation companies have incentives to apply novel technologies to lower production costs, for example: Combined Cycle units. Economic dispatch with Combined Cycle units becomes a non-convex optimization problem, which is difficult if not impossible to solve by conventional methods. Several techniques are proposed here: Mixed Integer Linear Programming, a hybrid method, as well as Evolutionary Algorithms. Evolutionary Algorithms share a common mechanism, stochastic searching per generation. The stochastic property makes evolutionary algorithms robust and adaptive enough to solve a non-convex optimization problem. This research implements GA, EP, and PS algorithms for economic dispatch with Combined Cycle units, and makes a comparison with classical Mixed Integer Linear Programming.;The electricity market equilibrium model not only helps Independent System Operator/Regulator analyze market performance and market power, but also provides Market Participants the ability to build optimal bidding strategies based on Microeconomics analysis. Supply Function Equilibrium (SFE) is attractive compared to traditional models. This research identifies a proper SFE model, which can be applied to a multiple period situation. The equilibrium condition using discrete time optimal control is then developed for fuel resource constraints. Finally, the research discusses the issues of multiple equilibria and mixed strategies, which are caused by the transmission network. Additionally, an advantage of the proposed model for merchant transmission planning is discussed.;A market simulator is a valuable training and evaluation tool to assist sellers, buyers, and regulators to understand market performance and make better decisions. A traditional optimization model may not be enough to consider the distributed, large-scale, and complex energy market. This research compares the performance and searching paths of different artificial life techniques such as Genetic Algorithm (GA), Evolutionary Programming (EP), and Particle Swarm (PS), and look for a proper method to emulate Generation Companies' (GENCOs) bidding strategies.;After deregulation, GENCOs face risk and uncertainty associated with the fast-changing market environment. A profit-based bidding decision support system is critical for GENCOs to keep a competitive position in the new environment. Most past research do not pay special attention to the piecewise staircase characteristic of generator offer curves. This research proposes an optimal bidding strategy based on Parametric Linear Programming. The proposed algorithm is able to handle actual piecewise staircase energy offer curves. The proposed method is then extended to incorporate incomplete information based on Decision Analysis. Finally, the author develops an optimal bidding tool (GenBidding) and applies it to the RTS96 test system.
机译:全球的电力行业正经历着深刻的动荡时期。竞争激烈的市场环境正在取代传统的垂直整合机制。发电公司有动力采用新技术来降低生产成本,例如:联合循环机组。具有联合循环单元的经济调度成为非凸优化问题,即使不是不可能通过常规方法解决,也很难解决。这里提出了几种技术:混合整数线性规划,混合方法以及进化算法。进化算法共享一种通用机制,即每代随机搜索。随机属性使演化算法具有足够的鲁棒性和自适应性,可以解决非凸优化问题。本研究以联合循环为单位实现经济调度的GA,EP和PS算法,并与经典的混合整数线性规划进行了比较。电力市场均衡模型不仅帮助独立系统运营商/监管者分析市场绩效和市场力量,而且还使市场参与者能够基于微观经济学分析来制定最佳出价策略。与传统模型相比,供给函数均衡(SFE)具有吸引力。这项研究确定了适当的SFE模型,可以将其应用于多个时期的情况。然后针对燃料资源约束开发了使用离散时间最优控制的平衡条件。最后,研究讨论了由传输网络引起的多重均衡和混合策略问题。此外,还讨论了所提出的模型用于商户传输计划的优点。市场模拟器是一种有价值的培训和评估工具,可帮助卖方,买方和监管机构了解市场表现并做出更好的决策。传统的优化模型可能不足以考虑分布式,大规模和复杂的能源市场。这项研究比较了遗传算法(GA),进化规划(EP)和粒子群(PS)等不同人工生命技术的性能和搜索路径,并寻找了一种模拟发电公司(GENCO)竞标策略的合适方法。;放松管制后,GENCO面临着与瞬息万变的市场环境相关的风险和不确定性。基于利润的投标决策支持系统对于GENCO在新环境中保持竞争地位至关重要。过去的大多数研究并没有特别注意发电机的分段阶梯特性曲线。该研究提出了一种基于参数线性规划的最优投标策略。所提出的算法能够处理实际的分段楼梯能量供应曲线。然后将提出的方法扩展为基于决策分析合并不完整的信息。最后,作者开发了一种最佳出价工具(GenBidding),并将其应用于RTS96测试系统。

著录项

  • 作者

    Gao, Feng.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Engineering Electronics and Electrical.;Energy.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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