Javad Meigolinedjad

Work place: Industrial Electrical and Electronic Engineering SanatkadeheSabze Pasargad. CO (S.S.P. Co), NO:16, PO.Code 71347-66773, Fourth floor, Dena Apr, Seven Tir Ave, Shiraz, Iran

E-mail: SSP.ROBOTIC@gmail.com

Website:

Research Interests: Artificial Intelligence, Robotics, Process Control System

Biography

Javad Meigolinedjad is a mechanical engineer researcher of research and development company SSP. Co. He is now pursuing his Master in mechanics. His research activities deal with the robotics and artificial nonlinear control.

Author Articles
Design Serial Fuzzy Variable Structure Compensator for Linear PD Controller: Applied to Rigid Robot

By Farzin Piltan Saleh Mehrara Javad Meigolinedjad Reza Bayat

DOI: https://doi.org/10.5815/ijitcs.2013.11.12, Pub. Date: 8 Oct. 2013

In this paper, a PD-serial fuzzy based robust nonlinear estimator for a robot manipulator is proposed by using robust factorization approach. That is, considering the uncertainties of dynamic model consisting of measurement error and disturbances, a PD with fuzzy estimator variable structure nonlinear feedback control scheme is designed to reduce effect of uncertainties. This research aims to design a new methodology to fix the position in robot manipulator. PD method is a linear methodology which can be used for highly nonlinear system’s (e.g., robot manipulator). To estimate this method, new serial fuzzy variable structure method (PD.FVSM) is used. This estimator can estimate the parameters to have the best performance.

[...] Read more.
Adaptive Artificial Intelligence Based Model Base Controller: Applied to Surgical Endoscopy Telemanipulator

By Farzin Piltan Ali Badri Javad Meigolinedjad Mohammad Keshavarz

DOI: https://doi.org/10.5815/ijisa.2013.09.12, Pub. Date: 8 Aug. 2013

This research involved developing a surgical robot assistant using an articulated PUMA robot running on a linear or nonlinear axis. The research concentrated on studying the artificial intelligence based switching computed torque controller to localization of an endoscopic tool. Results show that the switching artificial nonlinear control algorithm is capable to design a stable controller. For this system, error was used as the performance metric. Positioning of the endoscopic manipulator relative to the world coordinate frame was possible to within 0.05 inch. Error in maintaining a constant point in space is evident during repositioning however this was caused by limitations in the robot arm.

[...] Read more.
GDO Artificial Intelligence-Based Switching PID Baseline Feedback Linearization Method: Controlled PUMA Workspace

By Farzin Piltan Reza Bayat Saleh Mehara Javad Meigolinedjad

DOI: https://doi.org/10.5815/ijieeb.2012.05.03, Pub. Date: 8 Oct. 2012

Congetive method is used in this research to create portfilo of movement robot manipulator. Gradient descent (GD) artificial intelligence based switching feedback linearization controller was used and robot's postures and trajectory were expected in MATLAB/SIMULINK environment. Feedback linearization controller (CTC) is an influential nonlinear controller to certain systems which it is based on feedback linearization and computes the required torques using the nonlinear feedback control law in certain systems. Practically a large amount of systems have uncertainties accordingly this method has a challenge. Switching feedback linearization controller is a significant combination nonlinear stable-robust controller under condition of partly uncertain dynamic parameters of system. This technique is used to control of highly nonlinear systems especially in nonlinear time varient nonlinear dynamic system. To increase the stability and robustness with regards to improve the robustness switching methodology is applied to feedback linearization controller. Lyapunov stability is proved in proposed controller based on switching function. To compensate for the dependence on switching parameters baseline methodology is used.The nonlinear model dynamic formulation problem in uncertain system can be solved by using artificial intelligence theorem. Fuzzy logic theory is used to estimate the system dynamic. Forward kinematics implemented the manipulator's movements. Results validated the robot's range of possible postures and trajectories

[...] Read more.
Other Articles