The problem of inverse kinematics is fundamental in robot control. Many traditional inverse kinematics solutions, such as geometry, iteration, and algebraic methods, are inadequate in high-speed solutions and accurate positioning. In recent years, the problem of robot inverse kinematics based on neural networks has received extensive attention, but its precision control is convenient and needs to be improved. This paper studies a particle swarm optimization (PSO) back propagation (BP) neural network algorithm to solve the inverse kinematics problem of a UR3 robot based on six degrees of freedom, overcoming some disadvantages of BP neural networks. The BP neural network improves the convergence precision, convergence speed, and generalizatio...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
Abstract—Inverse kinematics of robot manipulator is to determine the joint variables for a given Car...
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 this study, an adapted Particle Swarm Optimization (PSO) algorithm is proposed for the inverse ki...
Robots whose geometric structure does not meet the Pieper criterion are called general robots. For t...
In recent decades, Artificial Neural Networks (ANNs) have become the focus of considerable attention...
This paper discusses the overall positioning accuracy of a neurosurgical robot system. First, the ov...
A neural network based inverse kinematics solution of a robotic manipulator is presented in this pap...
Inverse kinematics analysis plays an important role in developing a robot manipulator. But it is not...
The paper presents the Inverse Kinematics (IK) close form derivation steps using combination of anal...
AbstractThis paper presents a non-conventional technique for solving the inverse kinematics problem ...
A novel hybrid algorithm that employs BP neural network (BPNN) and particle swarm optimization (PSO)...
In robotics, the solutions to the inverse kinematics equations of open-chain articulated robotic ma...
This research presents an optimal trajectory tracking control method for improving the accuracy of 3...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
Abstract—Inverse kinematics of robot manipulator is to determine the joint variables for a given Car...
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 this study, an adapted Particle Swarm Optimization (PSO) algorithm is proposed for the inverse ki...
Robots whose geometric structure does not meet the Pieper criterion are called general robots. For t...
In recent decades, Artificial Neural Networks (ANNs) have become the focus of considerable attention...
This paper discusses the overall positioning accuracy of a neurosurgical robot system. First, the ov...
A neural network based inverse kinematics solution of a robotic manipulator is presented in this pap...
Inverse kinematics analysis plays an important role in developing a robot manipulator. But it is not...
The paper presents the Inverse Kinematics (IK) close form derivation steps using combination of anal...
AbstractThis paper presents a non-conventional technique for solving the inverse kinematics problem ...
A novel hybrid algorithm that employs BP neural network (BPNN) and particle swarm optimization (PSO)...
In robotics, the solutions to the inverse kinematics equations of open-chain articulated robotic ma...
This research presents an optimal trajectory tracking control method for improving the accuracy of 3...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...
Abstract—Inverse kinematics of robot manipulator is to determine the joint variables for a given Car...
In this paper, the Bees algorithm was used to train multi-layer perceptron neural networks to model ...