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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/21469
Title: A Real-Time Capable Adaptive Optimal Controller for a Commuter Train
Authors: Yazhemsky, Dennis Ion
Advisor: Sirouspour, Shahin
Department: Electrical and Computer Engineering
Keywords: Optimal Control;Commuter Train;Numerical Optimization;Convex;Second Order Cone Program;Multi-Vehicle;Real-Time;Sparse Optimization;Non-Convex Optimization;Energy Optimal;Time Optimal;Closed-Loop;Embedded Systems;Convex Solver;Non-Linear Programming
Publication Date: 2017
Abstract: This research formulates and implements a novel closed-loop optimal control system that drives a train between two stations in an optimal time, energy efficient, or mixed objective manner. The optimal controller uses sensor feedback from the train and in real-time computes the most efficient control decision for the train to follow given knowledge of the track profile ahead of the train, speed restrictions and required arrival time windows. The control problem is solved both on an open track and while safely driving no closer than a fixed distance behind another locomotive. In contrast to other research in the field, this thesis achieves a real-time capable and embeddable closed-loop optimization with advanced modeling and numerical solving techniques with a non-linear optimal control problem. This controller is first formulated as a non-convex control problem and then converted to an advanced convex second-order cone problem with the intent of using a simple numerical solver, ensuring global optimality, and improving control robustness. Convex and non-convex numerical methods of solving the control problem are investigated and closed-loop performance results with a simulated vehicle are presented under realistic modeling conditions on advanced tracks both on desktop and embedded computer architectures. It is observed that the controller is capable of robust vehicle driving in cases both with and without modeling uncertainty. The benefits of pairing the optimal controller with a parameter estimator are demonstrated for cases where very large mismatches exists between the controller model and the simulated vehicle. Stopping performance is consistently within 25cm of target stations, and the worst case closed-loop optimization time was within 100ms for the computation of a 1000 point control horizon on an i7-6700 machine.
URI: http://hdl.handle.net/11375/21469
Appears in Collections:Open Access Dissertations and Theses

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Dennis Yazhemsky Thesis April 26 Final Submission1.01 MBAdobe PDFView/Open
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