Prediction interval (PI) is an effective tool to quantify uncertainty and usually serves as an input to downstream robust optimization. Traditional approaches focus on improving the quality of PI in the view of statistical scores and assume the improvement in quality will lead to a higher value in the power systems operation. However, such an assumption cannot always hold in practice. In this paper, we propose a value-oriented PI forecasting approach, which aims at reducing operational costs in downstream operations. For that, it is required to issue PIs with the guidance of operational costs in robust optimization, which is addressed within the contextual bandit framework here. Concretely, the agent is used to select the optimal quantile proportion, while the environment reveals the costs in operations as rewards to the agent. As such, the agent can learn the policy of quantile proportion selection for minimizing the operational cost. The numerical study regarding a two-timescale operation of a virtual power plant verifies the superiority of the proposed approach in terms of operational value. And it is especially evident in the context of extensive penetration of wind power.
翻译:预测间隔期(PI)是量化不确定性的有效工具,通常是对下游稳健优化的一种投入。传统方法侧重于从统计分数的角度提高PI的质量,并假定质量的提高将导致动力系统运行的价值提高。然而,这种假设并不总能维持在实际操作中。我们在本文件中提出一种注重价值的PI预测方法,目的是降低下游操作的运营成本。为此,需要以稳健优化的方式发布具有运营成本指导的PI,此处的上下文带宽框架将述及这一点。具体地说,代理商用来选择最佳的定量比例,而环境则显示作为代理商回报的操作成本。因此,代理商可以学习四分制比例选择政策,以最大限度地降低操作成本。关于虚拟电厂两时规模运行的数字研究证实了拟议方法在操作价值方面的优势。在风力广泛渗透的背景下,这一点尤为明显。