In order to improve the position accuracy and trajectory accuracy of a 6R robotic arm, a robot arm inverse solution algorithm based on the MQACA- (improved quantum ant colony-) RBF network is proposed. This algorithm establishes the prediction model through the neural network and uses the quantum ant colony algorithm to optimize the output weight. In order to solve the problem that the quantum ant colony algorithm has low convergence precision and easy to fall into the local optimal solution in the inverse solution algorithm of the multifreedom robotic arm, improved measures such as 2-opt local optimization and maximum minimum pheromone limit and variation are adopted. By comparing the simulation results of the 6R robotic arm simulation res...
Robot arms are essential tools nowadays in industries due to its accuracy through high speed manufac...
Inverse kinematic is one of the most interesting problems of industrial robot. The inverse kinematic...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
The solution of robot inverse kinematics has a direct impact on the control accuracy of the robot. C...
In recent decades, Artificial Neural Networks (ANNs) have become the focus of considerable attention...
This paper presents an inverse kinematic solver for a robotic arm based on an artificial neural netw...
Inverse kinematics analysis plays an important role in developing a robot manipulator. But it is not...
The problem of inverse kinematics is fundamental in robot control. Many traditional inverse kinemati...
For the 6R robot, there is no analytical solution for some configurations, so it is necessary to ana...
The foundation and emphasis of robotic manipulator control is Inverse Kinematics (IK). Due to the co...
This paper studies the inverse kinematics of two non-spherical wrist configurations of painting robo...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
Abstract — Inverse kinematics computation using an artificial neural network that learns the inverse...
In view of the problem that Bloch Quantum Genetic Algorithm (BQGA) is easy to fall into local optimu...
Model-based control is now a significant technology for the control of robots. Models and control sc...
Robot arms are essential tools nowadays in industries due to its accuracy through high speed manufac...
Inverse kinematic is one of the most interesting problems of industrial robot. The inverse kinematic...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
The solution of robot inverse kinematics has a direct impact on the control accuracy of the robot. C...
In recent decades, Artificial Neural Networks (ANNs) have become the focus of considerable attention...
This paper presents an inverse kinematic solver for a robotic arm based on an artificial neural netw...
Inverse kinematics analysis plays an important role in developing a robot manipulator. But it is not...
The problem of inverse kinematics is fundamental in robot control. Many traditional inverse kinemati...
For the 6R robot, there is no analytical solution for some configurations, so it is necessary to ana...
The foundation and emphasis of robotic manipulator control is Inverse Kinematics (IK). Due to the co...
This paper studies the inverse kinematics of two non-spherical wrist configurations of painting robo...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
Abstract — Inverse kinematics computation using an artificial neural network that learns the inverse...
In view of the problem that Bloch Quantum Genetic Algorithm (BQGA) is easy to fall into local optimu...
Model-based control is now a significant technology for the control of robots. Models and control sc...
Robot arms are essential tools nowadays in industries due to its accuracy through high speed manufac...
Inverse kinematic is one of the most interesting problems of industrial robot. The inverse kinematic...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...