Visual Servoing of Constrained Mobile Robots Based on Model Predictive Control
提出一种基于模型预测控制的图像视觉伺服策略,解决受限移动机器人的稳定控制问题,通过二次规划和神经网络优化实现,实验验证了有效性。
This paper develops an image-based visual servoing (IBVS) control strategy using model predictive control (MPC) to stabilize a physically constrained mobile robot. In IBVS strategy, ambiguity, and degeneracy problems of the homography and fundamental matrix-based algorithms can be avoided. Moreover, a synthetic error vector incorporating the advantages of IBVS and position-based visual servoing is defined that includes both the robot angle and image coordinates. By using linear system control theory, the kinematics of nonholonomic chained robotic systems can be transformed into a skew-symmetric form, and through introducing an exponential decay phase, the uncontrollable problem can be solved. Then, an MPC strategy is developed and, thereafter, iteratively transformed into a constrained quadratic programming (QP) problem. Subsequently, we utilize a primal-dual neural network (PDNN) to solve this QP problem. By using PDNN optimization, the cost function of MPC effectively converges to the exact optimal values. Finally, experimental studies on the actual robotic systems have been conducted to demonstrate the performance of the proposed approach.