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Book ChapterDOI

Site Characterization Using GP, MARS and GPR

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TLDR
The developed GP, MARS and GPR give the spatial variability of Nc values at Bangalore, which is to be approximated with which N value at any half space point in Bangalore can be determined.
Abstract
This article examines the capability of Genetic Programming (GP), Multivariate Adaptive Regression Spline (MARS) and Gaussian Process Regression (GPR) for developing site characterization model of Bangalore (India) based on corrected Standard Penetration Test (SPT) value (Nc). GP, MARS and GPR have been used as regression techniques. GP is developed based on genetic algorithm. MARS does not assume any functional relationship between input and output variables. GPR is a probabilistic, non-parametric model. In GPR, different kinds of prior knowledge can be applied. In three dimensional analysis, the function\( {\mathrm{N}}_{\mathrm{c}}=\mathrm{f}\left(\mathrm{X},\mathrm{Y},\mathrm{Z}\right) \) where X, Y and Z are the coordinates of a point corresponding to N value, is to be approximated with which N value at any half space point in Bangalore can be determined. A comparative study between the developed GP, MARS and GPR has been carried out in the proposed book chapter. The developed GP, MARS and GPR give the spatial variability of Nc values at Bangalore.

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Journal ArticleDOI

35 Years of (AI) in Geotechnical Engineering: State of the Art

TL;DR: The main conclusions is that the number of researches in this field increases almost exponentially, the most used (AI) technique is the Artificial Neural Networks and its enhancements where it is presents about half the researches and finally correlating soil and rock properties is the most addressed subject with about 30% of the researched.
Journal ArticleDOI

Predicting permeability of tight carbonates using a hybrid machine learning approach of modified equilibrium optimizer and extreme learning machine

TL;DR: Novel hybrid models based on combination of the modified version of the equilibrium optimizer (EO) and two conventional machine learning algorithms, namely extreme learning machine (ELM) and artificial neural network (ANN) are constructed to predict the permeability of tight carbonates.
References
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A Gaussian Process Regression Model for the Traveling Salesman Problem

TL;DR: A combined procedure of the Nearest Neighbor (NN) method, Gaussian Process Regression (GPR) and the iterated local sea rch is proposed to solve a deterministic symmetric TSP with a single salesman.

Soft Computing in Earthquake Engineering: a Short Overview

TL;DR: A short review of nature inspired algorithms, like evolutionary algorithms, swarm intelligence, and neural networks, applied for solving the earthquake engineering problems and an overview of the possible directions for further development.
Journal ArticleDOI

Optimizing human activity patterns using global sensitivity analysis

TL;DR: This work shows how to tune an activity’s regularity by adjusting SampEn, thereby making it possible to realistically design activities when creating a schedule, and demonstrates how global sensitivity analysis can guide statistical emulation and global optimization algorithms to efficiently tune activities and generate realistic activity patterns.
Journal ArticleDOI

Empirical Analysis of Toll-Lane Processing Times Using Proportional Odds Augmented MARS

TL;DR: The proportional odds augmented multivariate adaptive regression splines (MARS) model outperformed the proportional odds model and was used as the final model in interpreting the results and indicates that plazas charging higher tolls and plaza requiring drivers to pay with inexact bills have larger processing times.
Journal ArticleDOI

Comparative analysis of software reliability predictions using statistical and machine learning methods

TL;DR: It is empirically demonstrated that performance of the SVM model is better than LR and other machine learning techniques in all datasets, and it is concluded that such methods can help in reliability prediction using real-life failure datasets.
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