A Study of Fatigue Damage Model using Neural Networks in 2024-T3 Aluminium Alloy

신경회로망을 이용한 Al 2024-T3 합금의 피로손상모델에 관한 연구

  • 홍순혁 (동아대 대학원) ;
  • 조석수 (삼척대 기계·정밀기계·자동차공학과) ;
  • 주원식 (동아대 기계·산업시스템공학과)
  • Published : 2001.08.01

Abstract

To estimate crack growth rate and cycle ratio uniquely, many investigators have developed various kinds of mechanical parameters and theories. But, thes have produced local solution space through single parameter. Neural Networks can perform patten classification using several input and output parameters. Fatigue damage model by neural networks was used to recognize the relation between da/dN/N/N(sub)f, and half-value breadth ratio B/Bo, fractal dimension D(sub)f, and fracture mechanical parameters in 2024-T3 aluminium alloy. Learned neural networks has ability to predict both crack growth rate da/dN and cycly ratio /N/N(sub)f within engineering estimated mean error(5%).

Keywords

References

  1. 金屬疲勞の硏究の歷史 日本材料學會,疲勞部門委員會
  2. Trans.ASME.Basic Eng. v.85 A Critcal Analysis of Crack Propagation Laws P.C.Paris;F.Erodgan
  3. 金屬の疲勞强度 中澤一;本間寬臣
  4. 대한기계학회논문집(A) v.20 no.9 신경회로망을 이용한 고온 저사이클 피로균열성장 모델링에 관한 연구 주원식;조석수
  5. 日本機械學會論文集(A) v.62 no.597 ニュ-ラルネシトワ-ヮを用いた非彈性のモデソク 奧田洋司;宮崎博;矢川元基
  6. 신경과학 박찬응;김승업
  7. Bulletin of Mathmetical Biophysis v.5 A Longical Calculus of The Ideas Imminebt in Nervous Activity W.S.Mcculloch;W.Pitts
  8. Neural networks-Theory and Application 김대수
  9. 日本機械學會論文集(A) v.51 no.462 微少き裂 ぱ則と部材の 疲勞 壽命との關係 西谷弘信;後藤眞宏
  10. 日本機械學會論文集(A) v.55 no.510 炭 素鋼の 疲勞過程における陂4勞破害 とX線半價幅の關係 西谷弘信;藤村顯世;福田幸雄;福田孝之
  11. International Journal of Fracture v.74 Fractal effects of crack porpagation in dynamic stress intensity factors and crack velocities Heping Xie;David J.Sanderson
  12. Computational Mecha-nics v.11 Detection of Structural Damage by Vibration Test and Neural Network Techniques X-Wu;T.C.Pan;S.T.Wong