期刊文献+

Performance assessment of genetic programming(GP)and minimax probability machine regression(MPMR)for prediction of seismic ultrasonic attenuation 被引量:2

Performance assessment of genetic programming(GP)and minimax probability machine regression(MPMR)for prediction of seismic ultrasonic attenuation
下载PDF
导出
摘要 The determination of seismic attenuation (s) (dB/cm) is a challenging task in earthquake science. This article employs genetic programming (GP) and minimax probability machine regression (MPMR) for prediction of s. GP is developed based on genetic algo- rithm. MPMR maximizes the minimum probability of future predictions being within some bound of the true regression function. Porosity (n) (%), permeability (k) (millidarcy), grain size (d) (μm), and clay content (c) (%) have been considered as inputs of GP and MPMR. The output of GP and MPMR is s. The developed GP gives an equation for prediction of s. The results of GP and MPMR have been compared with the artificial neural net- work. This article gives robust models based on GP and MPMR for prediction of s. The determination of seismic attenuation (s) (dB/cm) is a challenging task in earthquake science. This article employs genetic programming (GP) and minimax probability machine regression (MPMR) for prediction of s. GP is developed based on genetic algo- rithm. MPMR maximizes the minimum probability of future predictions being within some bound of the true regression function. Porosity (n) (%), permeability (k) (millidarcy), grain size (d) (μm), and clay content (c) (%) have been considered as inputs of GP and MPMR. The output of GP and MPMR is s. The developed GP gives an equation for prediction of s. The results of GP and MPMR have been compared with the artificial neural net- work. This article gives robust models based on GP and MPMR for prediction of s.
出处 《Earthquake Science》 2013年第2期147-150,共4页 地震学报(英文版)
关键词 Seismic attenuation Geneticprogramming Minimax probability machineregression Artificial neural network PREDICTION Seismic attenuation Geneticprogramming Minimax probability machineregression Artificial neural network Prediction
  • 相关文献

参考文献29

  • 1Azamathulla HM, Zahiri A (2012) Flow discharge prediction in compound channels using linear genetic programming. J Hydrol 454--455:203-207.
  • 2Biot MA (1956a) Theory of propagation of elastic waves in a fluid?saturated porous solid. II. Low frequency range. J Acoust Soc Am 28(10):169-178.
  • 3Biot MA (1956b) Theory of propagation of elastic waves in a fluid?saturated porous solid. II. High frequency range. J Acoust Soc Am 28:179-181.
  • 4Boadu FK (1997) Rock properties and seismic attenuation: neural network analysis. Pure Appl Geophys 149:507-524.
  • 5Brzostowski M, McMechan G (1992) 3-D tomographic imaging of near-surface seismic velocity and attenuation. Geophysics 57:396--403.
  • 6Guven A, Kisi a (2011) Daily pan evaporation modeling using linear genetic programming technique. Irrig Sci 29(2): 135-145.
  • 7Kecman V (2001) Learning and soft computing: Support vector machines, neural networks, and fuzzy logic models. MIT Press, Cambridge.
  • 8Kjartansson E (1979) Constant Q-wave propagation and attenuation. J Geophys Res 84:4137--4748.
  • 9Klimentos T, McCann C (1990) Relationships among compressional wave attenuation, porosity, clay content and permeability in sandstones. Geophysics 55:998-1014.
  • 10Koza JR (1992) Genetic programming: on the programming of computers by means of natural selection. MIT Press, Cambridge.

同被引文献22

引证文献2

二级引证文献19

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部