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Distributed and decentralized state estimation in gas networks as distributed parameter systems

机译:燃气网络中的分布式和分散状态估计作为分布式参数系统

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In this paper, a framework for distributed and decentralized state estimation in high-pressure and long-distance gas transmission networks (GTNs) is proposed. The non-isothermal model of the plant including mass, momentum and energy balance equations are used to simulate the dynamic behavior. Due to several disadvantages of implementing a centralized Kalman filter for large-scale systems, the continuous/discrete form of extended Kalman filter for distributed and decentralized estimation (DDE) has been extended for these systems. Accordingly, the global model is decomposed into several subsystems, called local models. Some heuristic rules are suggested for system decomposition in gas pipeline networks. In the construction of local models, due to the existence of common states and interconnections among the subsystems, the assimilation and prediction steps of the Kalman filter are modified to take the overlapping and external states into account. However, dynamic Riccati equation for each subsystem is constructed based on the local model, which introduces a maximum error of 5% in the estimated standard deviation of the states in the benchmarks studied in this paper. The performance of the proposed methodology has been shown based on the comparison of its accuracy and computational demands against their counterparts in centralized Kalman filter for two viable benchmarks. In a real life network, it is shown that while the accuracy is not significantly decreased, the real-time factor of the state estimation is increased by a factor of 10. (C) 2015 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了一种高压长距离输气管网的分布式状态估计框架。该工厂的非等温模型包括质量,动量和能量平衡方程,用于模拟动态行为。由于为大型系统实现集中式卡尔曼滤波器的几个缺点,用于这些系统的分布式和分散式估计(DDE)的扩展卡尔曼滤波器的连续/离散形式已得到扩展。因此,全局模型被分解为几个子系统,称为局部模型。对于天然气管道网络中的系统分解,提出了一些启发式规则。在局部模型的构造中,由于子系统之间存在公共状态和互连,因此修改了卡尔曼滤波器的同化和预测步骤,以考虑重叠状态和外部状态。但是,每个局部子系统的动态Riccati方程都是基于局部模型构建的,在本文研究的基准中,这会在状态的估计标准偏差中引入5%的最大误差。基于针对两个可行基准的集中式卡尔曼滤波器的准确性和计算要求与对应方法的比较,表明了所提出方法的性能。在现实生活的网络中,表明精度没有显着降低,但状态估计的实时因素却增加了10倍。(C)2015 ISA。由Elsevier Ltd.出版。保留所有权利。

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