Hierarchical Network Partitioning for Solution of Potential-Driven, Steady-State Nonlinear Network Flow Equations

IF 2 Q2 AUTOMATION & CONTROL SYSTEMS IEEE Control Systems Letters Pub Date : 2025-01-23 DOI:10.1109/LCSYS.2025.3533383
Shriram Srinivasan;Kaarthik Sundar
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Abstract

The solution of potential-driven steady-state flow in large networks is a task which manifests in various engineering applications, such as transport of natural gas or water through pipeline networks. The resultant system of nonlinear equations depends on the network topology, and in general, there is no numerical algorithm that offers guaranteed convergence to the solution (assuming a solution exists). Some methods offer guarantees in cases where the network topology satisfies certain assumptions, but these methods fail for larger networks. On the other hand, the Newton-Raphson algorithm offers a convergence guarantee if the starting point lies close to the (unknown) solution. It would be advantageous to compute the solution of the large nonlinear system through the solution of smaller nonlinear sub-systems wherein the solution algorithms (Newton-Raphson or otherwise) are more likely to succeed. This letter proposes and describes such a procedure, a hierarchical network partitioning algorithm that enables the solution of large nonlinear systems corresponding to potential-driven steady-state network flow equations.
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势驱动稳态非线性网络流方程解的分层网络划分
求解大型管网中势能驱动的稳态流问题是一项体现在各种工程应用中的任务,例如通过管网输送天然气或水。所得到的非线性方程组依赖于网络拓扑结构,一般来说,没有数值算法可以保证解的收敛性(假设存在解)。有些方法在网络拓扑满足某些假设的情况下提供保证,但这些方法不适用于较大的网络。另一方面,Newton-Raphson算法在起始点靠近(未知)解时提供收敛保证。通过求解较小的非线性子系统来计算大型非线性系统的解将是有利的,其中求解算法(牛顿-拉夫森或其他)更有可能成功。这封信提出并描述了这样一个过程,一个分层网络划分算法,使解决对应于势驱动的稳态网络流方程的大型非线性系统。
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来源期刊
IEEE Control Systems Letters
IEEE Control Systems Letters Mathematics-Control and Optimization
CiteScore
4.40
自引率
13.30%
发文量
471
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