实用程序的属性传播

Dev Oliver, P. Bakalov, Sangho Kim, E. Hoel
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引用次数: 0

摘要

公用事业系统,如电力、光纤/电信、天然气和水,需要对网络属性或值进行实时建模。例如,考虑管网中的液压压力;当水从储层或泵流出时,由于管道摩擦、泄漏、消耗等原因,压力降低。属性传播是计算和维护网络属性随距离变化的过程(例如,最大允许工作压力,相位等)。这对提高安全性和效率都很重要。然而,由于数据的大小,属性传播是具有挑战性的,每个实用程序可能有数千万个节点和边,在全国范围内可能有数十亿个节点和边。此外,结果可能需要被计算出来,并且可以快速地用于交互分析。以前的方法需要立即更新正在编辑的节点/边缘下游的所有节点和边缘(以考虑属性值的变化),这可能是计算密集型的,并且导致编辑属性值的用户体验缓慢。本文提出了传播器,它的特点是在内存中进行属性传播。传播器利用网络索引以及基于具有相似属性值的并置源的启发式方法来增加计算节省。通过实验验证了传播器的可扩展性,并在ArcGIS Pro和ArcGIS Enterprise中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attribute Propagation for Utilities
Utility systems such as electric, fiber/telco, gas, and water require the realistic modeling of network attributes or values over distance. For example, consider hydraulic pressure in a pipe network; as water flows away from the reservoir or pump, pressure decreases due to pipe friction, leakage, consumption, etc. Attribute propagation is the process whereby network attributes that change over distance (e.g., maximum allowable operating pressure, phase, etc.) are calculated and maintained. This is important for improving safety as well as efficiency. However, attribute propagation is challenging due to the size of the data, which could have tens of millions of nodes and edges per utility, and billions of nodes and edges at the nationwide scale. Additionally, results may need to be calculated and available quickly for interactive analysis. Previous approaches require immediate updates to all nodes and edges downstream of a node/edge being edited (to account for changes in attribute values), which could be computationally intensive and result in a slow user experience for editing attribute values. This paper presents Propagators, which feature an in-memory approach to attribute propagation. Propagators leverage a network index as well as a heuristic based on colocated sources with similar attribute values to increase computational savings. We present experiments that demonstrate the scalability of Propagators, which have been implemented in ArcGIS Pro and ArcGIS Enterprise.
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