Control Methodologies for Systems with Set-Valued Uncertainties

dc.contributor.advisorMesbahi, Mehran
dc.contributor.authorDeole, Aditya
dc.date.accessioned2026-02-05T19:30:17Z
dc.date.available2026-02-05T19:30:17Z
dc.date.issued2026-02-05
dc.date.submitted2025
dc.descriptionThesis (Ph.D.)--University of Washington, 2025
dc.description.abstractThis dissertation develops control methodologies for systems with set-valued uncertainties in modeling and estimation, with applications spanning spacecraft navigation and neuromodulation. The work is organized into two major parts. The first part addresses estimation-related uncertainties in vision-guided navigation and their integration into planning and control. The second part focuses on modeling uncertainty in neuronal systems, presenting a controller design and model inference framework for neuromodulation.In the context of spacecraft navigation, we design a pose-estimation pipeline supported by a photorealistic simulation environment for satellite rendezvous operations. A Machine Learning (ML)-based platform is developed to detect the pose of a target spacecraft, and the simulation environment is used to generate test and validation data with a minimal simulation-to-reality (sim2real) gap. The platform also serves as a tool for modeling ML-based uncertainties, thereby enabling robust controller design. Building on this foundation, two approaches are proposed for incorporating ML-based estimation into navigation systems. The first introduces a controller design methodology that constructs invariant funnels for slope-bounded uncertainty models around nominal trajectories. The second employs a passivity-based framework to characterize uncertainties that define a family of feasible controllers. Furthermore, we demonstrate that multi-agent consensus, viewed as an interconnection of passive agents, can enhance estimation performance in distributed settings. We further investigate estimation-aware trajectory design for improving the performance of state-dependent sensors such as perception maps. A class of state-dependent, set-valued output uncertainty models is formalized as state-to-output uncertainty set maps. An observability-based metric is introduced to quantify the estimator’s sensitivity to output perturbations, and this metric is optimized to generate trajectories that improve estimation performance. Extensions of this framework to multi-agent trajectory planning are also presented. The final part of the dissertation develops a feedback control framework for neuromodulation. By analyzing neuronal system trajectories during experimental sessions, we show that average neuronal dynamics in closed-loop scenarios can be approximated as a linear parameter-dependent system, with parameter-dependent internal processes. For a fixed parameter, the trial-averaged dynamics exhibit closed-loop linear behavior. A proportional–integral (PI) feedback controller is demonstrated to effectively track reference signals over a finite horizon, outperforming feedforward control in both tracking accuracy and disturbance rejection, while also reducing trial-to-trial variability. Moreover, in a ``reward-induced'' brain state with more consistent parameters, a sample-based approach is shown to enable controller optimization. Together, these contributions advance the integration of machine learning, robust control, and trajectory optimization in the presence of set-valued uncertainty, providing new methodologies for controlling uncertain dynamical systems in both engineering and biological domains.
dc.embargo.termsOpen Access
dc.format.mimetypeapplication/pdf
dc.identifier.otherDeole_washington_0250E_28933.pdf
dc.identifier.urihttps://hdl.handle.net/1773/55122
dc.language.isoen_US
dc.rightsCC BY
dc.subjectNeuromodulation
dc.subjectPassivity based Control
dc.subjectSet-valued analysis
dc.subjectState Estimation
dc.subjectTrajectory optimization
dc.subjectAerospace engineering
dc.subject.otherAeronautics and astronautics
dc.titleControl Methodologies for Systems with Set-Valued Uncertainties
dc.typeThesis

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Deole_washington_0250E_28933.pdf
Size:
17.67 MB
Format:
Adobe Portable Document Format