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Distributed Dynamic State Estimation for Microgrids

机译:微电网的分布动态状态估计

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Conventionally, the dynamic state estimation of variables in power networks is performed based on the forecasting-aided model of bus voltages. This approach is effective in the stiff grids at the transmission level, where the bus voltages are less sensitive to variations of the load. However, in microgrids, bus voltages can fluctuate significantly under load changes, the forecasting-aided model may not sufficiently accurate. To resolve this problem, this paper proposes a dynamic state estimation scheme for microgrids using the state-space model derived from differential equations of power networks. In the proposed scheme, the branch currents are the state variables, whereas the bus voltages become the inputs which can vary freely with loads. As a result, the entire microgrids system can be partitioned into local areas, where neighbor areas share the common inputs. The proposed estimation scheme then can be implemented in a distributed manner. A novel Kalman-based filtering method is derived to estimate both states and inputs simultaneously. Only information of common inputs is exchanged between neighboring estimators. Simulation results of the 13-bus Potsdam microgrid (New York State) are provided to prove the feasibility and performances of the proposed scheme.
机译:传统上,基于总线电压的预测辅助模型执行电网中变量的动态状态估计。这种方法在传输电平的刚性网格中有效,其中总线电压对负载的变化不太敏感。然而,在微电网中,总线电压可以在负载变化下显着波动,预测辅助模型可能无法充分准确。为了解决这个问题,本文提出了一种使用来自电网差分方程的状态空间模型的微电网的动态状态估计方案。在所提出的方案中,分支电流是状态变量,而总线电压变为可以用载荷自由变化的输入。结果,整个微电网系统可以被划分为局域区域,其中邻居区域共享公共输入。然后,所提出的估计方案可以以分布式方式实施。导出了一种新颖的基于卡尔曼的滤波方法,以同时估计两个状态和输入。在邻近估计器之间交换常用输入的信息。提供了13母波茨坦微电网(纽约州)的仿真结果,以证明所提出的方案的可行性和性能。

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