Outage detection in power distribution networks with optimally-deployed power flow sensors

Yue Zhao, R. Sevlian, R. Rajagopal, A. Goldsmith, H. Poor
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引用次数: 38

Abstract

An outage detection framework for power distribution networks is proposed. The framework combines the use of optimally deployed real-time power flow sensors and that of load estimates via Advanced Metering Infrastructure (AMI) or load forecasting mechanisms. The distribution network is modeled as a tree network. It is shown that the outage detection problem over the entire network can be decoupled into detection within subtrees, where within each subtree only the sensors at its root and on its boundary are used. Outage detection is then formulated as a hypothesis testing problem, for which a maximum a-posteriori probability (MAP) detector is applied. Employing the maximum misdetection probability Pmaxe as the detection performance metric, the problem of finding a set of a minimum number of sensors that keeps Pmaxe below any given probability target is formulated as a combinatorial optimization. Efficient algorithms are proposed that find the globally optimal solutions for this problem, first for line networks, and then for tree networks. Using these algorithms, optimal three-way tradeoffs between the number of sensors, the load estimate accuracy, and the outage detection performance are characterized for line and tree networks using the IEEE 123 node test feeder system.
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优化配置潮流传感器的配电网停电检测
提出了一种配电网停电检测框架。该框架结合了优化部署的实时潮流传感器和通过高级计量基础设施(AMI)或负荷预测机制进行负荷估计的使用。将配电网建模为树形网络。结果表明,整个网络的中断检测问题可以解耦为子树内的检测问题,其中每个子树内仅使用其根和边界上的传感器。然后将中断检测表述为一个假设检验问题,其中应用了最大后验概率检测器(MAP)。采用最大误检概率pmax作为检测性能指标,将寻找一组最小数量的传感器使pmax低于任何给定概率目标的问题表述为组合优化问题。本文首先针对线形网络,然后针对树形网络,提出了求解该问题全局最优解的有效算法。使用这些算法,在使用IEEE 123节点测试馈线系统的线和树网络中,对传感器数量、负载估计精度和中断检测性能之间的最佳三向权衡进行了表征。
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