An online optimization algorithm for tracking a linearly varying optimal point with zero steady-state error
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Wu, Alex
Petersen, Ian R.
Ugrinovskii, Valery
Shames, Iman
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Institute of Electrical and Electronics Engineers Inc.
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In this paper, we develop an online optimization algorithm for solving a class of nonconvex optimization problems with a linearly varying optimal point. The global convergence of the algorithm is guaranteed using the circle criterion for the class of functions whose gradient is bounded within a sector. Also, we show that the corresponding Luré-type nonlinear system involves a double integrator, which demonstrates its ability to track a linearly varying optimal point with zero steady-state error. The algorithm is applied to solving a time-of-arrival based localization problem with constant velocity and the results show that the algorithm is able to estimate the source location with zero steady-state error.
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2025 American Control Conference, ACC 2025
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