Continual online learning-based optimal tracking control of nonlinear strict-feedback systems: application to unmanned aerial vehicles

Irfan Ganie , Sarangapani Jagannathan

Complex Engineering Systems ›› 2024, Vol. 4 ›› Issue (1) : 4

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Complex Engineering Systems ›› 2024, Vol. 4 ›› Issue (1) :4 DOI: 10.20517/ces.2023.35
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Research Article

Continual online learning-based optimal tracking control of nonlinear strict-feedback systems: application to unmanned aerial vehicles

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Abstract

A novel optimal trajectory tracking scheme is introduced for nonlinear continuous-time systems in strict feedback form with uncertain dynamics by using neural networks (NNs). The method employs an actor-critic-based NN backstepping technique for minimizing a discounted value function along with an identifier to approximate unknown system dynamics that are expressed in augmented form. Novel online weight update laws for the actor and critic NNs are derived by using both the NN identifier and Hamilton-Jacobi-Bellman residual error. A new continual lifelong learning technique utilizing the Fisher Information Matrix via Hamilton-Jacobi-Bellman residual error is introduced to obtain the significance of weights in an online mode to overcome the issue of catastrophic forgetting for NNs, and closed-loop stability is analyzed and demonstrated. The effectiveness of the proposed method is shown in simulation by contrasting the proposed with a recent method from the literature on an underactuated unmanned aerial vehicle, covering both its translational and attitude dynamics.

Keywords

Continual lifelong learning / optimal control / neural networks / unmanned aerial vehicles / strict-feedback systems

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Irfan Ganie, Sarangapani Jagannathan. Continual online learning-based optimal tracking control of nonlinear strict-feedback systems: application to unmanned aerial vehicles. Complex Engineering Systems, 2024, 4(1): 4 DOI:10.20517/ces.2023.35

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