Synchronization Strategies for Multi-agent Networked Control Systems
Pratik K. Bajaria

TL;DR
This paper explores synchronization strategies in multi-agent networked control systems, focusing on power systems and smart applications, proposing new control methods inspired by natural phenomena and physics to enhance real-time distributed control.
Contribution
It introduces innovative synchronization-based control strategies for multi-agent systems, integrating concepts from physics and power systems to improve distributed control in real-time applications.
Findings
Demonstrated synchronization techniques improve power flow management.
Developed a platform for fast, distributed control strategy development.
Connected natural phenomena to control system design.
Abstract
With the advent of 21st century and increasing advancements in the field of technology and connectivity, inter-networking in real-time has achieved great importance. Distributed control and multi-agent paradigm has groped rapidly with history of big time failures of centralized systems in the past. The concepts of synchronization and network control systems have been used extensively in the near past to map, analyze and solve defined set of objectives. In this thesis, a diverse set of applications from power flow point of view are taken into consideration and modelled/analyzed using synchronization as the central theme. These systems are proposed (or assumed) to be network connected and its control has been devised accordingly. It has been shown how some examples from nature can help recreate similar dynamics synthetically and help achieve system objectives. Few of the applications of…
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Taxonomy
TopicsSmart Grid Security and Resilience · Smart Grid Energy Management · Microgrid Control and Optimization
