Towards a constructive framework for control theory
Pavel Osinenko

TL;DR
This paper introduces a constructive analysis framework for control theory that explicitly incorporates computational uncertainty, aiming to improve the reliability of control system analysis and synthesis in practical implementations.
Contribution
It develops a general constructive analysis framework for control theory, explicitly addressing computational uncertainty in controller design and system analysis.
Findings
Framework accounts for finite precision computations
Constructive Danskin's theorem for adversarial control
Addresses stability and optimal control under computational uncertainty
Abstract
This work presents a framework for control theory based on constructive analysis to account for discrepancy between mathematical results and their implementation in a computer, also referred to as computational uncertainty. In control engineering, the latter is usually either neglected or considered submerged into some other type of uncertainty, such as system noise, and addressed within robust control. However, even robust control methods may be compromised when the mathematical objects involved in the respective algorithms fail to exist in exact form and subsequently fail to satisfy the required properties. For instance, in general stabilization using a control Lyapunov function, computational uncertainty may distort stability certificates or even destabilize the system despite robustness of the stabilization routine with regards to system, actuator and measurement noise. In fact,…
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