The objective of this book is to develop intelligent models
[geostatistic, artificial neural network (ANN) and support vector
machine(SVM)] to estimate corrected standard penetration test (SPT)
value, Nc, in the three dimensional (3D) subsurface of Bangalore. The
present book also highlights the capability of SVM over the developed
geostatistic models (simple kriging, ordinary kriging and disjunctive
kriging) and ANN models. Further in this book, liquefaction
susceptibility is evaluated from Standard Penetration Test (SPT), Cone
Penetration Test (CPT) and Shear Wave (Vs) data using ANN and SVM. In
this book, an attempt has also been made to evaluate geotechnical site
characterization by carrying out in situ tests using different in situ
techniques such as CPT, SPT and multi channel analysis of surface wave
(MASW) techniques. SVM model has been also adopted to determine over
consolidation ratio (OCR) based on piezocone data. SVM model outperforms
all the available methods for OCR prediction.