Bessa, Wallace MoreiraCadengue, Lucas Solano2022-05-042022-05-042022-03-11CADENGUE, Lucas Solano. Controle inteligente de robôs omnidirecionais utilizando redes neurais recorrentes. 2022. 60f. Dissertação (Mestrado em Engenharia Elétrica e de Computação) - Centro de Tecnologia, Universidade Federal do Rio Grande do Norte, Natal, 2022.https://repositorio.ufrn.br/handle/123456789/47099Due to their great efficiency, security and flexibility, mobile robots are being increasingly used in industry. However, their positioning control is a great challenge due to the nonlinear nature of this plant and the difficulty of estimating certain parameters, for example, the friction effects. Besides that, a precise tracking might be essential to some operations in mobile robots, such as narrow paths. In this work, non-linear controllers are applied to the trajectory control of an omnidirectional robot under the effect of unmodeled dynamics. The control approaches used in this work were both non-linear control strategies, Feedback Linearization (FBL) and Sliding Modes (SMC) both incorporated with an intelligent compensator utilizing Recurrent Neural Networks in order to assist the control by estimating uncertainties. The chosen architecture of the neural network was based in the need to compensate more complex dynamics and at the same time the restriction of computational complexity so that it could be embedded in the hardware of a mobile robot. The stability properties were proven by the principle of assintotic stability proposed by Lyapunov and the performance of the strategies were verifed through both simulations and experiments using Robotino®, an omnidirectional mobile robot produced by Festo Didatics and a performance gain was observed when compared with the neural network without the recurrence.Acesso AbertoControle não linearControle inteligenteRedes neurais recorrentesLinearização por realimentaçãoModos deslizantesRobôs móveisControle inteligente de robôs omnidirecionais utilizando redes neurais recorrentesmasterThesis