Distributed State Estimation for Multi-Area Data Reconciliation

V. Erofeeva, S. Parsegov, Pavel Osinenko, S. Kamal
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引用次数: 1

Abstract

Data reconciliation is an essential tool in data processing in various industries. It helps to improve accuracy of decision-making algorithms by reducing the influence of random errors in measurements. In this paper, we consider large-scale data reconciliation problems in which multiple areas communicate over a network to obtain an optimal solution of the centralized problem. Our proposed approach accounts for the boundaries between different areas avoiding a mismatch and sub-optimality as well as reduces computational and communication complexities. The proposed distributed data reconciliation method is compared to a centralized reference in different scenarios.
多区域数据协调的分布式状态估计
数据对账是各行各业数据处理中必不可少的工具。通过减少测量中随机误差的影响,有助于提高决策算法的准确性。在本文中,我们考虑了多区域通过网络通信的大规模数据协调问题,以获得集中问题的最优解。我们提出的方法考虑了不同区域之间的边界,避免了不匹配和次优性,并降低了计算和通信的复杂性。在不同场景下,将分布式数据协调方法与集中式数据协调方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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