Friday 26th of April 2024
 

Comparison and Application of Metaheuristic Population-Based Optimization Algorithms in Manufacturing Automation


Rhythm Suren Wadhwa

The paper presents a comparison and application of metaheuristic population-based optimization algorithms to a flexible manufacturing automation scenario in a metacasting foundry. It presents a novel application and comparison of Bee Colony Algorithm (BCA) with variations of Particle Swarm Optimization (PSO) and Ant Colony Optimization (ACO) for object recognition problem in a robot material handling system. To enable robust pick and place activity of metalcasted parts by a six axis industrial robot manipulator, it is important that the correct orientation of the parts is input to the manipulator, via the digital image captured by the vision system. This information is then used for orienting the robot gripper to grip the part from a moving conveyor belt. The objective is to find the reference templates on the manufactured parts from the target landscape picture which may contain noise. The Normalized cross-correlation (NCC) function is used as an objection function in the optimization procedure. The ultimate goal is to test improved algorithms that could prove useful in practical manufacturing automation scenarios.

Keywords: Bee Colony Algorithm, Particle Swarm Optimization, Ant Colony Optimization, Foundry Automation

Download Full-Text


ABOUT THE AUTHOR

Rhythm Suren Wadhwa
Rhythm Suren Wadhwa is a PhD student at the department of production and quality engineering, NTNU. She has worked in the Manufacturing Automation industry for five years. Current research interests include assembly automation, optimization techniques, assembly simulation and industrial robotics. She was the president of Society of Women Engineers at the University of Michigan. She has a Masters Degree in Mechanical Engineering and Bachelors degree in Manufacturing Processes Automation Engineering.


IJCSI Published Papers Indexed By:

 

 

 

 
+++
About IJCSI

IJCSI is a refereed open access international journal for scientific papers dealing in all areas of computer science research...

Learn more »
Join Us
FAQs

Read the most frequently asked questions about IJCSI.

Frequently Asked Questions (FAQs) »
Get in touch

Phone: +230 911 5482
Email: info@ijcsi.org

More contact details »