Analysing region of attraction of load balancing on complex network
Author:
Zou Mengbang1ORCID,
Guo Weisi1
Affiliation:
1. Cranfield University Department of Aerospace, , Cranfield MK43 0AL, UK
Abstract
Abstract
Many complex engineering systems network together functional elements to balance demand spikes but suffer from stability issues due to cascades. The research challenge is to prove the stability conditions for any arbitrarily large and dynamic network topology with any complex balancing function. Most current analyses linearize the system around fixed equilibrium solutions. This approach is insufficient for dynamic networks with multiple equilibria, for example, with different initial conditions or perturbations. Region of attraction (ROA) estimation is needed in order to ensure that the desirable equilibria are reached. This is challenging because a networked system of non-linear dynamics requires compression to obtain a tractable ROA analysis. Here, we employ master stability-inspired method to reveal that the extreme eigenvalues of the Laplacian are explicitly linked to the ROA. This novel relationship between the ROA and the largest eigenvalue in turn provides a pathway to augmenting the network structure to improve stability. We demonstrate using a case study on how the network with multiple equilibria can be optimized to ensure stability.
Funder
Engineering and Physical Sciences Research Council (EPRSC) CoTRE - Complexity Twin for Resilient Ecosystems
Mengbang Zou is a PhD student supported by China Scholarship Council
Publisher
Oxford University Press (OUP)
Subject
Applied Mathematics,Computational Mathematics,Control and Optimization,Management Science and Operations Research,Computer Networks and Communications
Reference32 articles.
1. Probabilistic stability of traffic load balancing on wireless complex networks;Moutsinas,;IEEE Syst. J.,2019
2. An intelligent UAV deployment scheme for load balance in small cell networks using machine learning;Hu,,2019
3. Dynamic cell expansion with self-organizing cooperation;Guo,;IEEE J. Sel. Areas Commun.,2013
4. Universal resilience patterns in complex networks;Gao,;Nature,2016
5. Uncertainty of resilience in complex networks with nonlinear dynamics;Moutsinas,;IEEE Syst. J.,2020
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