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State estimation and learning of unknown branch current flows using decentralized Kalman filter with virtual disturbance model

机译:虚拟干扰模型的分散卡尔曼滤波用于未知分支电流的状态估计和学习。

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This paper presents the design of a decentralized Kalman filter (DKF) without communication to be used for state estimation in distributed generation-based power systems. The idea is to reconstruct information about the system states in the power network, avoiding as much as possible the use of communication channels. The DKF is synthesized based on local models of the power network associated with a virtual disturbance model. The synthesized local Kalman filters of the DKF approach are used for local state estimation while the dynamics of the rest of the power network are lumped into the time-varying virtual disturbance model. The proposed solution is applied to an interconnected power network. By choosing appropriate models for the virtual disturbance the DKF can be suited for both DC and AC distribution systems. It is shown for both cases that the DKF can learn (infer) the local states of the network including the aggregated branch currents coming from the other buses. The herein presented approach is well suited for the agent-based distributed control of micro-grids.
机译:本文介绍了分散的卡尔曼滤波器(DKF)的设计,而无需用于分布式基于生成的电力系统中的状态估计。该想法是重建关于电力网络中系统状态的信息,尽可能多地利用通信信道。基于与虚拟干扰模型相关联的电力网络的本地模型来合成DKF。 DKF方法的合成本地Kalman滤波器用于局部状态估计,而电网其余部分的动态被集合到时变的虚拟干扰模型中。所提出的解决方案应用于互连的电网。通过为虚拟干扰选择适当的模型,DKF可以适用于DC和AC分配系统。这两种情况显示了DKF可以学习(推断)网络的本地状态,包括来自其他总线的聚合分支电流。本文提出的方法非常适用于微网的基于药剂的分布式控制。

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