Download PDFOpen PDF in browserEnhancing Visual Servoing Robustness: Integrating ISMC with Adaptive Neural NetworksEasyChair Preprint 131938 pages•Date: May 6, 2024AbstractVisual servoing systems play a crucial role in robotics by enabling precise control of manipulators based on visual feedback. However, these systems often face challenges such as uncertainties, disturbances, and changes in environmental conditions. In this paper, we propose a novel approach to enhance the robustness of visual servoing systems by integrating Integral Sliding Mode Control (ISMC) with Adaptive Neural Networks (ANN). By combining the robustness of ISMC with the adaptability of ANN, the integrated framework aims to address the limitations of traditional control methods and improve performance in dynamic and uncertain environments. Through comprehensive simulations and experimental validations, we demonstrate the effectiveness of the proposed approach in achieving precise and reliable control in various visual servoing tasks. Keyphrases: Dynamic Environments, Integral sliding mode control, Robotics, Uncertainties, adaptive neural networks, robustness, visual servoing
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