Co-optimizing Energy Storage for Prosumers using Convex Relaxations

Md Umar Hashmi, Deepjyoti Deka, A. Bušić, Lucas Pereira, S. Backhaus
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引用次数: 4

Abstract

This paper presents a new co-optimization formulation for energy storage for performing energy arbitrage and power factor correction (PFC) in the time scale of minutes to hours, along with peak demand shaving in the time scale of a month. While the optimization problem is non-convex, we present an efficient penalty based convex relaxation to solve it. Furthermore, we provide a mechanism to increase the storage operational life by tuning the cycles of operation using a friction coefficient. To demonstrate the effectiveness of energy storage performing multiple tasks simultaneously, we present a case study with real data for a time scale of several months. We are able to show that energy storage can realistically correct power factor without significant change in either arbitrage gains or peak demand charges. We demonstrate a real-time Model Predictive Control (MPC) based implementation of the proposed formulation with AutoRegressive forecasting of net-load and electricity price. Numerical results indicate that arbitrage gains and peak demand shaving are more sensitive to parameter uncertainty for faster ramping battery compared to slower ramping batteries. However, PFC gains are insensitive to forecast inaccuracies.
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利用凸松弛对产消者储能进行协同优化
本文提出了一种新的储能协同优化公式,用于在分钟到小时的时间尺度上进行能量套利和功率因数校正(PFC),以及在一个月的时间尺度上进行峰值剃须。针对非凸优化问题,提出了一种有效的基于惩罚的凸松弛方法。此外,我们还提供了一种机制,通过使用摩擦系数调整操作周期来增加存储的使用寿命。为了证明同时执行多个任务的能量存储的有效性,我们提出了一个具有几个月时间尺度的真实数据的案例研究。我们能够证明,储能可以在不显著改变套利收益或峰值需求费用的情况下,切实纠正功率因数。我们演示了基于实时模型预测控制(MPC)的实现,该实现具有净负荷和电价的自回归预测。数值结果表明,与慢速爬坡电池相比,快速爬坡电池的套利增益和峰值需求剃须对参数不确定性更为敏感。然而,PFC增益对预测的不准确性不敏感。
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