Operations Research Helps the Optimal Bidding of Virtual Power Plants

Daehong Kim, Hyungkyu Cheon, D. Choi, Seong-Cheol Im
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引用次数: 1

Abstract

As distributed energy resources (DERs) continue to emerge, a new cloud-based information technology platform business model, the virtual power plant (VPP), is being introduced into the electricity market. The competitiveness of VPPs mainly depends on data analytics and operational technologies. Among the several operational problems, we focus on the optimal bidding decision problem in the day-ahead market. The bidding decision is a VPP’s commitment to supply the market with electricity from uncertain DERs, thereby affecting the VPP’s profits. Based on a collaboration with a VPP company in South Korea, H Energy Co. Ltd., we formulate a Markov decision process model for the problem and use a stochastic dynamic programming-based solution approach. This is the first study under the incentive-based market structure. To describe the uncertainty in the power supply from DERs, we build frameworks to generate scenario trees or lattices. Additionally, we apply heuristic techniques to reduce the computational burden. Through a pilot test based on real data, we verify the performance and practicality of our proposed model and solution approach. The case company has begun implementing the model and solution approach on its platform and has found that performance has improved after using advanced forecasting models for DERs.
运筹学有助于虚拟电厂的最优报价
随着分布式能源(DERs)的不断涌现,一种新的基于云的信息技术平台商业模式——虚拟电厂(VPP)正被引入电力市场。vpp的竞争力主要取决于数据分析和运营技术。其中,重点研究了日前市场下的最优竞价决策问题。投标决策是VPP向市场提供不确定der电力的承诺,从而影响VPP的利润。基于与韩国一家VPP公司H Energy Co. Ltd的合作,我们建立了问题的马尔可夫决策过程模型,并使用基于随机动态规划的解决方法。这是第一个基于激励的市场结构下的研究。为了描述来自DERs的电力供应的不确定性,我们构建了框架来生成场景树或格。此外,我们应用启发式技术来减少计算负担。通过基于实际数据的中试,验证了所提出的模型和解决方法的性能和实用性。案例公司已经开始在其平台上实施模型和解决方案方法,并发现在使用先进的DERs预测模型后,性能有所提高。
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