Adaptive Chance Constrained MPC under Load and PV Forecast Uncertainties

Avik Ghosh, Cristian Cortes-Aguirre, Yi-An Chen, Adil Khurram, J. Kleissl
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Abstract

The recent increase in the intermittent variable renewable energy sources (VRES) results in mismatches between demand and supply that can cause grid instability. These issues can be mitigated with battery energy storage systems (BESS). However, BESS are generally dispatched conservatively to manage uncertainties in VRE forecast. Therefore, this paper proposes an online adaptive stochastic model predictive control (A-SMPC) based approach that minimizes electricity costs by expanding the BESS state of charge (SOC) limits beyond the nominal range of 20% – 80%. Allowing the SOC limits to expand, results in violation of the nominal SOC constraints. Chance constraints are implemented in the proposed A-SMPC method that guarantee that the probability of violating nominal SOC constraints remains below a desired value. Furthermore, the A-SMPC cost function includes time-of-use demand charges that have not been considered before in this type of model. Simulations based on historical load and PV generation data from the Port of San Diego for January 2019 shows that the proposed formulation outperforms the traditional MPC formulation, that does not include nominal SOC constraint violation, by reducing the monthly electricity costs by 7%. The proposed A-SMPC method results in 8% higher BESS utilization which translates to about 1 extra charging/discharging cycle during the analyzed month which is unlikely to have a significant impact on BESS lifetime.
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负荷和PV预测不确定性下的自适应机会约束MPC
近年来,间歇性可变可再生能源(VRES)的增加导致供需不匹配,可能导致电网不稳定。这些问题可以通过电池储能系统(BESS)得到缓解。然而,为了管理VRE预测中的不确定性,BESS通常被保守地分配。因此,本文提出了一种基于在线自适应随机模型预测控制(A-SMPC)的方法,通过将BESS充电状态(SOC)限制扩展到20% - 80%的标称范围之外,从而最大限度地降低电力成本。允许SOC限制扩大,导致违反标称SOC约束。在提出的a - smpc方法中实现了机会约束,保证违反标称SOC约束的概率保持在期望值以下。此外,A-SMPC成本函数包括使用时间需求费用,这在这种类型的模型中以前没有考虑过。基于2019年1月圣地亚哥港历史负荷和光伏发电数据的模拟表明,拟议的配方优于传统的MPC配方,每月减少7%的电力成本,不包括标称SOC约束违规。拟议的a - smpc方法使BESS利用率提高8%,这意味着在分析的月份中大约有1个额外的充电/放电周期,这不太可能对BESS寿命产生重大影响。
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