通过随机模型预测控制实现储能系统的战略隐式平衡

Ruben Smets;Kenneth Bruninx;Jérémie Bottieau;Jean-François Toubeau;Erik Delarue
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摘要

电池储能系统(BESS)可以通过跨期套利利用不平衡结算机制中不断增加的价格波动。然而,参与这些市场需要在预期利润之间进行谨慎的权衡,考虑到BESS行动对当前不平衡价格的影响,财务风险和产生的电池退化成本。本文介绍了一种新的预测信息模型预测控制(MPC)方法,在该方法中,战略和潜在风险厌恶的BESS通过在接近实时的情况下采取不平衡的头寸来执行隐式平衡。因此,它预测了欧洲式平衡市场的预期不平衡价格,并考虑了充电依赖电池退化成本的状态。为此,利用基于注意力的递归神经网络预测技术对系统失衡进行预测。提出的方法在比利时平衡市场的现实案例研究中进行了测试。2兆瓦/2兆瓦时BESS的预期利润(21,784欧元/兆瓦/月)超过了文献中可用的不同基准,包括参与具有完美价格预见的前一天能源市场的相关利润(7,082欧元/兆瓦/月)。从系统的角度来看,BESS所有者执行的这些隐式平衡动作减少了75%的系统不平衡,从而提高了电力系统的成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strategic Implicit Balancing With Energy Storage Systems via Stochastic Model Predictive Control
Battery Energy Storage Systems (BESS) may exploit the increasing price volatility in imbalance settlement mechanisms via inter-temporal arbitrage. However, participating in these markets requires a careful trade-off between expected profits, accounting for the impact of BESS actions on prevailing imbalance prices, the financial risks and the incurred battery degradation costs. This paper introduces a novel forecast-informed Model Predictive Control (MPC) methodology in which a strategic and potentially risk-averse BESS performs implicit balancing by taking out-of-balance positions in near-real time. Thereby it anticipates expected imbalance prices in a European-style balancing market, and takes into account state of charge-dependent battery degradation costs. To this end, an attention-based recurrent neural network forecasting technique is leveraged to predict the System Imbalance. The proposed methodology is tested on a real-life case study of the Belgian balancing market. Expected profits of a 2 MW/2 MWh BESS (21,784 €/MW/month) are shown to exceed those of different benchmarks available in the literature, including the profit associated with participating in the day-ahead energy market with perfect price foresight (7,082 €/MW/month). From a system perspective, these implicit balancing actions performed by the BESS owner reduce the system imbalance in 75% of all cases, thus improving the cost-efficiency of power systems.
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