Estimation of Permeability of Green Sand Mould by Performing Sensitivity Analysis on Neural Networks Model
Estimation of Permeability of Green Sand Mould by Performing Sensitivity Analysis on Neural Networks Model

초록

Permeability is the ability of a material to transmit fluid/gases. It is an important material property and it depends on mould parameters such as grain fineness number, clay, moisture, mulling time, and hardness. Modeling the relationships among these variable and interactions by mathematical models is complex. Hence a biologically inspired artificial neural-network technique with a back-propagation-learning algorithm was developed to estimate the permeability of green sand. The developed model was used to perform a sensitivity analysis to estimate permeability. The individual as well as the combined influence of mould parameters on permeability were simulated. The model was able to describe the complex relationships in the system. The optimum process window for maximum permeability was obtained as 8.75-10.5% clay and 3.9-9.5% moisture. The developed model is very useful in understanding various interactions between inputs and their effects on permeability.

키워드

Green sand mouldPermeabilityNeural networksSensitivity analysis
제목
Estimation of Permeability of Green Sand Mould by Performing Sensitivity Analysis on Neural Networks Model
제목 (타언어)
Estimation of Permeability of Green Sand Mould by Performing Sensitivity Analysis on Neural Networks Model
저자
수바레디백용현김성경허보영
DOI
10.7777/jkfs.2014.34.3.107
발행일
2014-06
저널명
한국주조공학회지
34
3
페이지
107 ~ 111