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Tractable structure learning in radial physical flow networks

机译:径向物理流量网络中的贸易结构学习

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Physical Flow Networks are different infrastructure networks that allow the flow of physical commodities through edges between its constituent nodes. These include power grid, natural gas transmission network, water pipelines etc. In such networks, the flow on each edge is characterized by a function of the nodal potentials on either side of the edge. Further the net flow in and out of each node is conserved. Learning the structure and state of physical networks is necessary for optimal control as well as to quantify its privacy needs. We consider radial flow networks and study the problem of learning the operational network from a loopy graph of candidate edges using statistics of nodal potentials. Based on the monotonic properties of the flow functions, the key result in this paper shows that if variance of the difference of nodal potentials is used to weight candidate edges, the operational edges form the minimum spanning tree in the loopy graph. Under realistic conditions on the statistics of nodal injection (consumption or production), we provide a greedy structure learning algorithm with quasilinear computational complexity in the number of candidate edges in the network. Our learning framework is very general due to two significant attributes. First it is independent of the specific marginal distributions of nodal potentials and only uses order properties in their second moments. Second, the learning algorithm is agnostic to exact flow functions that relate edge flows to corresponding potential differences and is applicable for a broad class of networks with monotonic flow functions. We demonstrate the efficacy of our work through realistic simulations on diverse physical flow networks and discuss possible extensions of our work to other regimes.
机译:物理流量网络是不同的基础设施网络,其允许通过其组成节点之间的边缘流动物理商品。这些包括电网,天然气传输网络,水管道等在这种网络中,每个边缘的流动的特征在于边缘两侧的节点电位的功能。此外,每个节点中的净流动是保守的。学习物理网络的结构和状态对于最佳控制是必要的,并量化其隐私需求。我们考虑径向流量网络,并研究使用节点电位的统计数据从候选边缘的循环图学习运营网络的问题。基于流函数的单调性能,本文的关键结果表明,如果节点电位差异的方差用于重量候选边缘,则操作边缘形成了循环图中的最小生成树。在节点注射统计(消费或生产)的现实条件下,我们在网络中候选边缘的数量提供了一种贪婪的结构学习算法,具有Quasilinear计算复杂性。由于两个重要属性,我们的学习框架非常一般。首先,它与节点潜力的特定边际分布无关,并且仅在其第二矩中使用订单属性。其次,学习算法对于与相应的电位差异相关的精确流函数是不可知的,其与相应的电位差异相应,并且适用于具有单调流动功能的广泛网络。我们通过对不同物流网络的现实模拟来展示我们工作的功效,并讨论我们对其他制度的工作的可能扩展。

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