Regulating Stability Margins in Symbiotic Control: A Low-Pass Filter Approach
Emre Yildirim, Tansel Yucelen, and John T. Hrynuk

TL;DR
This paper introduces a low-pass filter-based fixed-gain control method within symbiotic control to effectively regulate stability margins, balancing system robustness and performance without prior uncertainty bounds.
Contribution
It proposes a novel low-pass filter approach to fixed-gain control that maintains stability margins in symbiotic control systems, addressing a key practical challenge.
Findings
Theoretical stability analysis of the proposed control architecture.
Numerical examples demonstrating stability margin regulation.
Guidelines for selecting low-pass filter parameters for stability control.
Abstract
Symbiotic control synergistically integrates fixed-gain control and adaptive learning architectures to mitigate system uncertainties more predictably than adaptive learning alone and without requiring prior knowledge of uncertainty bounds as compared to fixed-gain control alone. Specifically, increasing the fixed-gain control parameter achieves a desired level of closed-loop system performance while the adaptive law simultaneously learns and suppresses the system uncertainties. However, stability margins can be reduced when this parameter is large and this paper aims to address this practical challenge. To this end, we propose a new fixed-gain control architecture predicated on a low-pass filter approach to regulate stability margins in the symbiotic control framework. In addition to the presented system-theoretical results focusing on the stability of the closed-loop system, we provide…
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Taxonomy
TopicsTraffic control and management
