
NSF Org: |
DMS Division Of Mathematical Sciences |
Recipient: |
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Initial Amendment Date: | July 27, 2020 |
Latest Amendment Date: | December 23, 2021 |
Award Number: | 2009659 |
Award Instrument: | Standard Grant |
Program Manager: |
Pedro Embid
DMS Division Of Mathematical Sciences MPS Directorate for Mathematical and Physical Sciences |
Start Date: | August 1, 2020 |
End Date: | July 31, 2024 (Estimated) |
Total Intended Award Amount: | $270,032.00 |
Total Awarded Amount to Date: | $278,032.00 |
Funds Obligated to Date: |
FY 2022 = $8,000.00 |
History of Investigator: |
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Recipient Sponsored Research Office: |
202 HIMES HALL BATON ROUGE LA US 70803-0001 (225)578-2760 |
Sponsor Congressional District: |
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Primary Place of Performance: |
304 Lockett Hall Baton Rouge LA US 70803-2701 |
Primary Place of
Performance Congressional District: |
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Unique Entity Identifier (UEI): |
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Parent UEI: |
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NSF Program(s): | APPLIED MATHEMATICS |
Primary Program Source: |
01002021DB NSF RESEARCH & RELATED ACTIVIT |
Program Reference Code(s): |
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Program Element Code(s): |
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Award Agency Code: | 4900 |
Fund Agency Code: | 4900 |
Assistance Listing Number(s): | 47.049 |
ABSTRACT
This project will devise mathematical methods to control the behavior of dynamical systems that arise in the field of marine robotics and other engineering applications. The methods will entail event-triggered feedback control, whereby the systems use feedback about their states and their surroundings, help decide future optimizing courses of action, and where events like potential violations of constraints are used to determine when to change the controls. The project will seek finite-time control methods, which enable control objectives such as tracking and station keeping to be realized by prescribed finite-time deadlines. Using applied mathematics to control ecological robotic systems will promote scientific progress, by leading to more effective ways to understand the effects of pollutions, oil spills, or other environmental stresses in complex, dynamic, and unstructured marine environments. The work will be collaborative with two Ph.D. students whose research at the interface of engineering and mathematics will help prepare them for a wide variety of potential careers. The investigators will also deliver presentations on elementary aspects of the project to grade school students in Louisiana or New York. This outreach can help inspire a diverse, qualified cadre of students to consider pursuing careers in engineering or mathematics. The project's applied part will focus on algorithmic development and marine robots. Additionally, this research will have the potential for applications in other settings with event-triggered controls, safety or timing constraints, and uncertainties, such as renewable energy networks or intelligent transportation systems.
The project will help address significant challenges in control theory for nonlinear control systems with communication or state constraints or optimization requirements, using three strategies. The first will design event- or self-triggered feedback controls for systems with time deadlines, whose triggers are computed from output measurements, and which determine when to recompute the control to avoid undesirable operating modes, with the goal of ensuring finite time convergence. This will help overcome the obstacles to using standard feedback controls, which require the user to continuously or frequently recompute control values without optimizing cost criteria or meeting time deadlines, and which therefore are less suitable in engineering applications. This will build on the nonlead investigator's prior work in event-triggered nonlinear control theory that developed several constructive design tools for various classes of nonlinear systems. The second will develop robust forward invariance methods under event- or self-triggered controls, which help predict and quantify the degree of uncertainty that control systems can tolerate without violating tolerance and safety bounds. This will build on the lead investigator's prior work that computed bounds on allowable uncertainties in marine robotic curve tracking. The third involves finite time learning-based adaptive dynamic programming that approximates optimal policies, to help overcome the curse of dimensionality that arises in traditional dynamic programming. This will build on the nonlead investigator's prior work in adaptive dynamic programming that proposed computational algorithms to learn suboptimal controllers from input-state or input-output data. The work will include applications to, and experiments with, underwater marine robots, where event-triggering will cope with intermittent communication and constrained power resources. Real physical marine robotic platforms will be used to explore numerical aspects and to evaluate the mathematical algorithms.
This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH
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PROJECT OUTCOMES REPORT
Disclaimer
This Project Outcomes Report for the General Public is displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed in this Report are those of the PI and do not necessarily reflect the views of the National Science Foundation; NSF has not approved or endorsed its content.
The research provided a mathematical analysis of feedback controls that are used to model possible forces that can be applied to dynamical systems. Feedback controls are mechanisms for using information about the past or current performance of the dynamical systems, in order to influence future behavior of the systems. This process of influencing the dynamics is then called feedback control, and can achieve objectives such as ensuring that a robotic vehicle tracks a desired path or that it remains in some prescribed region of interest. The mathematical analysis was conducted using classes of systems of differential or difference equations, which included dynamical systems that arise in many biological and engineering applications. A key feature of the feedback controls in this project was that they were event-triggered, meaning that
information about the states of the dynamical systems was used to determine not only the feedback control values, but also to determine when changes in the feedback control values are required in order to control the systems. This is motivated by many significant applications in which limited communication or limited energy resources make it impractical to change the control values unless it is essential to change them. For example, the applications in the project included mathematical models of underwater robots that can be used to detect pollution or to study corals, but which are constrained by limited communication
resources. The project results were tested in experiments. The work also included observer designs, which were mathematical methods to estimate current states of dynamical systems using delayed, partial, or sampled measurements that were obtained from the dynamical systems. This is significant because of the need for the estimates in many feedback control mechanisms. Other applications in the project included nonlinear mathematical models for (a) delay compensation in hybrid energy storage systems, which arise in the study of renewable energy and (b) estimating the magnitudes of
allowable measurement uncertainties when controlling SIQR systems that model the spread of COVID-19 or other diseases. In addition to producing several journal articles by the collaborating PIs and Co-PI, the project trained PhD and REU students to conduct research on feedback controls. This interdisciplinary research setting significantly enhanced the preparation of the students for a wide variety of possible careers that can include careers in academia, government laboratories, or industry. For instance, one REU student
who was co-advised by the PI and Co-PI is now an engine manufacturing engineer at Blue Origin.
Last Modified: 12/02/2024
Modified by: Michael Malisoff
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