Belief Condensation Filtering for Voltage-Based State Estimation in Smart Grids

Shervin Mehryar, M. Win
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引用次数: 2

Abstract

Today's power generation and distribution networks are quickly moving toward automated control and integration of renewable resources - a complex, integrated system termed the Smart Grid. A key component in planning and managing of Smart Grids is State Estimation (SE). The state-of-the art SE technologies today operate on the basis of slow varying dynamics of the current network and make simplifying linearity assumptions. However, the integration of smart readers and green resources will result in significant non-linearity and unpredictability in the network. Therefore in future Smart Grids, there is need for ever more accurate and real-time algorithms. In this work, we propose and examine a new SE method named the Belief Condensation Filter (BCF) that aims to achieve these measures by approximating the true distribution of the state variables, rather than a linearized version as done for instance in Kalman filtering. Through simulations we show that in the presence of non-linearities, our general SE framework improves accuracy where linear and Kalman-like filters exhibit impaired performance.
基于信念凝聚滤波的智能电网电压状态估计
今天的发电和配电网络正迅速向可再生资源的自动化控制和集成方向发展,这是一个复杂的集成系统,称为智能电网。在智能电网的规划和管理中,状态估计是一个重要的组成部分。目前最先进的SE技术是基于当前网络的缓慢变化动态,并简化线性假设。然而,智能阅读器与绿色资源的融合将导致网络的显著非线性和不可预测性。因此,在未来的智能电网中,需要更加精确和实时的算法。在这项工作中,我们提出并研究了一种名为信念凝聚滤波器(BCF)的新的SE方法,该方法旨在通过近似状态变量的真实分布来实现这些度量,而不是像卡尔曼滤波那样的线性化版本。通过模拟,我们表明,在非线性存在的情况下,我们的一般SE框架提高了精度,而线性和卡尔曼滤波器表现出受损的性能。
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