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Adaptive Model Predictive Control for Real-Time Dispatch of Energy Storage Systems

机译:储能系统实时调度的自适应模型预测控制

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Energy storage systems are flexible and controllable resources that can provide a number of services for the electric power grid. Many technologies are available, and corresponding models vary greatly in level of detail and tractability. In this work, we propose an adaptive optimal control and estimation approach for real-time dispatch of energy storage systems that neither requires accurate state-of-energy measurements nor knowledge of an accurate state-of-energy model. Specifically, we formulate an online optimization problem that simultaneously solves moving horizon estimation and model predictive control problems, which results in estimates of the state-of-energy, estimates of the charging and discharging efficiencies, and future dispatch signals. We present a numerical example in which the plant is a nonlinear, time-varying Lithium-ion battery model and show that our approach effectively estimates the state-of-energy and dispatches the system without accurate knowledge of the dynamics and in the presence of significant measurement noise.
机译:储能系统是灵活且可控制的资源,可以为电网提供多种服务。有许多技术可用,并且相应的模型在细节和易处理性方面差异很大。在这项工作中,我们为能量存储系统的实时调度提出了一种自适应的最优控制和估计方法,该方法既不需要精确的能量状态测量,也不需要准确的能量状态模型的知识。具体来说,我们制定了一个在线优化问题,该问题可以同时解决移动视界估计和模型预测控制问题,从而得出能量状态的估计,充电和放电效率的估计以及未来的调度信号。我们给出了一个数值示例,其中该工厂是一个非线性的,时变的锂离子电池模型,并表明我们的方法有效地估计了能量状态,并且在没有精确的动力学知识的情况下并且在存在大量重要信息的情况下调度了系统测量噪声。

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