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A Hierarchical Model Predictive Control Approach for Handling Demand Charges Using Battery Systems

机译:使用电池系统处理需求电荷的分层模型预测控制方法

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Applications in energy systems often require to simultaneously mitigate long-term and short-term electricity costs. Demand charges, in particular, constitute an important component of the electricity bills for large consumption units such as buildings and manufacturing plants. Mitigating long-term and short-term costs poses a challenging multiscale planning problem that should make decisions at fine timescales and over long time horizons. This work presents a hierarchical model predictive control (MPC) approach to tackle this problem in the context of stationary battery systems. The goal is to determine the optimal charge-discharge policy for the battery to minimize hourly costs and a monthly demand charge. In the proposed hierarchical MPC approach, the state of charge (SOC) policy is assumed to be periodic, which allows to cast the long-term planning problem as a tractable stochastic programming problem. Here, every period (e.g., a day or week) represents an operational scenario and the targets for the periodic SOC levels and the peak cost are to be determined. The long-term planner MPC communicates the periodic SOC targets and maximum peak level to a short-term MPC controller. The short-term MPC controller determines the intra-period charge/discharge policies (at high resolution) while meeting the targets of the long-term planning. A simulation case study for a university campus is presented to demonstrate that the hierarchical MPC scheme yields optimal demand charge and charge-discharge policy under nominal (perfect forecast) conditions. Comparative studies of the proposed hierarchical MPC scheme and standard MPC schemes that use ad-hoc approaches to handle demand charges are also presented. Under imperfect forecasts, the simulations show that the hierarchical MPC scheme results in significant improvements in demand charge reduction over a standard MPC scheme that uses a discounting factor to capture long-term effects.
机译:能源系统中的应用通常需要同时缓解长期和短期电力成本。特别是需求收费构成了大型消费单位等电费的重要组成部分,如建筑物和制造工厂。缓解长期和短期成本造成了挑战的多尺度规划问题,这些问题应该在精细时间尺度和长时间视野中做出决定。这项工作提出了一种分层模型预测控制(MPC)方法来解决静止电池系统的上下文中的这个问题。目标是确定电池的最佳充电放电策略,以最大限度地减少每月成本和每月需求费用。在所提出的分层MPC方法中,假设充电状态(SOC)策略是定期的,这允许将长期规划问题作为一种易于随机编程问题。这里,每个时期(例如,每天或一周)代表操作场景,并且要确定周期SOC水平的目标和峰值成本。长期规划员MPC将周期性SOC目标和最大峰值电平传送到短期MPC控制器。短期MPC控制器确定周期内充电/放电策略(在高分辨率下),同时满足长期规划的目标。提出了一个大学校园的模拟案例研究,以证明分层MPC方案在标称(完美预测)条件下产生最佳需求费用和充放电政策。还提出了拟议的分层MPC方案和标准MPC方案的比较研究,该计划使用临时方法处理需求费用。在不完善预测下,模拟表明,分层MPC方案导致使用折扣因子捕获长期效果的标准MPC方案的需求电荷降低的显着改进。

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