학술논문

Optimization Using Neural Network Modeling and Swarm Intelligence in the Machining of Titanium (Ti 6Al 4V) Alloy
Document Type
Conference
Source
2009 Eighth Mexican International Conference on Artificial Intelligence Artificial Intelligence, 2009. MICAI 2009. Eighth Mexican International Conference on. :33-38 Nov, 2009
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Neural networks
Particle swarm optimization
Machining
Titanium alloys
Aerospace materials
Conducting materials
Thermal conductivity
Predictive models
Aerospace industry
Error correction
Neural network
Machining parameters
Surface roughness
Multi-Objective
Titanium
Swarm
Language
Abstract
The process of titanium’s machining in the aerospace industry today is by trial and error, it produce non efficient results, because this material is classified by the high chemical reaction with other materials and its low thermal conductivity such as a difficult to machine, so the process of finding the correct parameters for machining are hard to determine, and today researchers are looking to develop new models to predict and optimize these parameters. A recently developed optimization algorithm called particle swarm optimization is used to find optimum process parameters.Accordingly, the results indicate that a system where neural network is used to model and predict process outputs and particle swarm optimization is used to obtain optimum process parameters can be successfully applied to multi-objective optimization of titanium’s machining process