多层拓扑结构下网络模型的控制
Control of Network Models under Multi-Layer Topology
DOI: 10.12677/iae.2024.123055, PDF,    科研立项经费支持
作者: 鲁晓艺:新疆工程学院信息工程学院,新疆 乌鲁木齐;杨学海:新疆工程学院机电工程学院,新疆 乌鲁木齐;魏鑫彤:新疆工程学院控制工程学院,新疆 乌鲁木齐;胡中明:新疆工程学院能源工程学院,新疆 乌鲁木齐;朱 剑*:新疆工程学院数理学院,新疆 乌鲁木齐
关键词: 多层网络拓扑结构控制关键节点研究进展Multi-Layer Network Topology Control Key Nodes Research Progress
摘要: 与单层网络相比,多层拓扑结构下网络模型可以反映不同类型的连接模式和动态过程。本文基于多层拓扑结构下网络模型的控制的现状,展示基于多层拓扑结构下网络模型的控制的最新理论成果,包括多层网络控制的优化、多层网络控制优化等方面。此外,介绍了多层网络关键节点识别方法、多层拓扑结构下网络模型的内外同步、有限固定时间同步、具有噪声干扰的网络同步。最后提出了多层网络控制领域亟待解决的关键问题,以期推动该领域的持续发展与突破。
Abstract: Compared with single-layer networks, network models under multi-layer topology can reflect different types of connection patterns and dynamic processes. Based on the current status of control of network models under multi-layer topology, this paper presents the latest theoretical results of control based on network models under multi-layer topology, including optimization of multi-layer network control and optimization of multi-layer network control. In addition, the identification method of key nodes in multi-layer networks, internal and external synchronization of network models under multi-layer topology, limited fixed time synchronization, and network synchronization with noise interference are introduced. Finally, the key issues that need to be solved in the field of multi-layer network control are proposed in order to promote continuous development and breakthroughs in this field.
文章引用:鲁晓艺, 杨学海, 魏鑫彤, 胡中明, 朱剑. 多层拓扑结构下网络模型的控制[J]. 仪器与设备, 2024, 12(3): 433-437. https://doi.org/10.12677/iae.2024.123055

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