scispace - formally typeset
Journal ArticleDOI

Neuro-genetic approach to optimize parameter design of dynamic multiresponse experiments

Hsu-Hwa Chang, +1 more
- Vol. 11, Iss: 1, pp 436-442
Reads0
Chats0
TLDR
This study incorporates desirability functions into a hybrid neural network/genetic algorithm approach to optimize the parameter design of dynamic multiresponse with continuous values of parameters and reveals that the approach has higher performance than the traditional experimental design.
Abstract
Engineers have widely applied the Taguchi method, a traditional approach for robust experimental design, to a variety of quality engineering problems for enhancing system robustness. However, the Taguchi method is unable to deal with dynamic multiresponse owing to increasing complexity of the product or design process. Although several alternative approaches have been presented to resolve this problem, they cannot effectively treat situations in which the control factors have continuous values. This study incorporates desirability functions into a hybrid neural network/genetic algorithm approach to optimize the parameter design of dynamic multiresponse with continuous values of parameters. The objective is to find the optimal combination of control factors to simultaneously maximize robustness of each response. The proposed approach is based on three stages which (1) use neural networks for constructing a response function model of a dynamic multiresponse system, (2) use exponential desirability functions for evaluating overall performance of a specific factor combination, and (3) use a genetic algorithm to optimize parameter design. Effectiveness of the proposed approach is illustrated with a simulated example. Analysis results reveal that the approach has higher performance than the traditional experimental design.

read more

Citations
More filters
Journal ArticleDOI

An integrated approach to optimise parameter design of multi-response processes based on Taguchi method and artificial intelligence

TL;DR: An integrated model for experimental design of processes with multiple correlated responses is proposed, composed of three stages which use Taguchi’s quality loss function to present relative significance of responses and multivariate statistical methods to uncorrelate and synthesise responses into a single performance measure.
Journal ArticleDOI

A novel approach for optimization of correlated multiple responses based on desirability function and fuzzy logics

TL;DR: A method is presented for optimizing the problem of correlated multiple responses where relationship among response and design variables is highly nonlinear by means of Neuro-Fuzzy and principal component analysis derived desirability function and the assumption that variance of each response is invariant over the feasible region is relaxed.
Journal ArticleDOI

Thermal parameters optimization of a reflow soldering profile in printed circuit board assembly: A comparative study

TL;DR: The evaluation results show that all three methods provide satisfactory soldering performance in terms of the process capability, sigma level, and process window indices (PWIs).
Journal ArticleDOI

Applying soft computing techniques to optimise a dental milling process

TL;DR: A novel soft computing procedure based on the application of artificial neural networks, genetic algorithms and identification systems makes it possible to optimise the implementation conditions in the manufacturing process of high precision parts, including finishing precision, while saving both time and financial costs and/or energy.
Journal ArticleDOI

A neuro-data envelopment analysis approach for optimization of uncorrelated multiple response problems with smaller the better type controllable factors

TL;DR: A new method is proposed to optimize a multi-response optimization problem based on the Taguchi method for the processes where controllable factors are the smaller-the-better (STB)-type variables and the analyzer desires to find an optimal solution with smaller amount of controLLable factors.
References
More filters
Book

Genetic algorithms and engineering design

光男 玄, +1 more
TL;DR: Findings of Genetic Algorithms and Selected Topics in Engineering Design help solve problems in optimization, including Flow-Shop Sequencing Problems, Machine Scheduling Problems, and Facility Layout Design Problems.
Journal ArticleDOI

Modified Desirability Functions for Multiple Response Optimization

TL;DR: Modified desirability functions that are everywhere differentiable are presented so that more efficient gradient-based optimization methods can be used instead of search methods to optimize the overall desIRability response.
Journal ArticleDOI

A review of robust optimal design and its application in dynamics

TL;DR: The robust design of a vibration absorber with mass and stiffness uncertainty in the main system is used to demonstrate the robust design approach in dynamics as discussed by the authors, and the results show a significant improvement in performance compared with the conventional solution.
Journal ArticleDOI

Global optimization of absorption chiller system by genetic algorithm and neural network

TL;DR: A new concept of integrating neural network (NN) and genetic algorithm (GA) in the optimal control of absorption chiller system is introduced and results appear promising.
Journal ArticleDOI

Multi-response robust design by principal component analysis

TL;DR: In this paper, an effective procedure on the basis of principal component analysis (PCA) was proposed to optimize the multi-response problems in the Taguchi method, where a set of original responses can be transformed into a set uncorrelated components.
Related Papers (5)