All Issue

2013 Vol.15, Issue 2 Preview Page
31 March 2013. pp. 81-95
Abstract
References
1

1.Ahn, M.S., Ryu C.H., Park, J.N., Kwun J.A. (2001), “A study on the safe blast design to increase slope stability”, The Journal of Korea Society for Explosives and Blasting Engineering, Vol. 19, No. 1, pp. 85-92.

2

2.ANSYS, Inc. (2010), ANSYS AUTODYN, Ver. 13, ANSYS Inc., USA.

3

3.Cho, J.W., Yu, S.H., Jeon, S.W., Chang, S.H. (2008), “Numerical study on rock fragmentation by TBM disc cutter”, Journal of Korea Tunnelling Association, Vol. 10, No. 2, pp. 139-152.

4

4.Konya, C.J., Walter, E.J. (1991), Rock blasting and overbreak control, National Highway Institute, p. 430.

5

5.Math Works Inc. (2010), MATLAB : Neural NetworkToolboxTM User's Guide, Ver. R2011b, Math Works Inc., p. 404.

6

6.Pao, Y. (1989), Adaptive pattern recognition and neural networks, Addison - Wesley, p. 309.

7

7.Park, J.W. (2012), Analysis of structure subjected to blast load using parallel and domain, Master Thesis, Hanyang University, p. 50

8

8.Riedel, W., Thoma, K., Hiermaier, S., Schmolinske, E. (1999), “Penetration of reinforced concrete by BETAB-500 numerical analysis using a new macroscopic concrete model for hydrocodes” The 9th Int. Sym. Interaction of the Effects of Munitions with Structures, Berlin, Germany, pp. 315-322.

9

9.Shin, H.S., Kwon, Y.C. (2009), “Development of a window-shifting ANN training method for a quantitative rock classification in unsampled rock zone”, Journal of Korea Tunnelling Association, Vol. 11, No. 2, pp. 151-162.

10

10.SolidWorks Corp. (2011), SolidWorks 3D, Ver. 2011, SolidWorks Corp, Massachusetts, USA.

11

11.Wasserman, P.D. (1989), Neural computing : Theory and practice, Van Nostrand Reinhold Co., New York, USA, p. 230.

12

12.You, K.H., Kim, D.H. (2012), “A study on the influence of blasting location on tunnel fragmentation zone”, 2012 Korean Geotechnical Society, Geo Expo, pp. 1611-1615.

13

13.You, K.H., Son, M.K. (2013), “Hauling time prediction of the muck generated by a blasting around a tunnel”, Journal of Korean Tunnelling and Underground Space Association, Vol. 15, No. 1, pp. 33-47.

http://dx.doi.org/10.9711/KTAJ.2013.15.1.033
14

14.You. K.H., Song, W.Y. (2012), “A case study on a tunnel back analysis to minimize the uncertainty of ground properties based on artificial neural network”, Journal of Korean Tunnelling and Underground Space Association, Vol. 14, No. 1, pp. 37-53.

Information
  • Publisher :Korean Tunneling and Underground Space Association
  • Publisher(Ko) :한국터널지하공간학회
  • Journal Title :Journal of Korean Tunnelling and Underground Space Association
  • Journal Title(Ko) :한국터널지하공간학회 논문집
  • Volume : 15
  • No :2
  • Pages :81-95