A platform for research: civil engineering, architecture and urbanism
SOIL LABORATORY DATA INTERPRETATION USING GENERALIZED REGRESSION NEURAL NETWORK
Artificial intelligence techniques which incorporate empirical knowledge and/or pattern matching techniques are ideally suited to assist engineers to interpret information from site and laboratory investigations because of the “imprecise” nature of soil. This paper explores the pattern matching and prediction capabilities of neural networks to interpret laboratory test data. The neural network paradigm used in this paper is the generalized regression neural network (GRNN) algorithm. Detailed examples are given of the use of this approach to assist engineers to interpret laboratory test data from consolidation tests and to characterize soil types from laboratory particle size distribution information. The main advantage of the GRNN technique in comparison to the widely used back-propagation neural network algorithm is the speed at which the optimal neural network configuration is determined, since this process only involves adjusting one variable.
SOIL LABORATORY DATA INTERPRETATION USING GENERALIZED REGRESSION NEURAL NETWORK
Artificial intelligence techniques which incorporate empirical knowledge and/or pattern matching techniques are ideally suited to assist engineers to interpret information from site and laboratory investigations because of the “imprecise” nature of soil. This paper explores the pattern matching and prediction capabilities of neural networks to interpret laboratory test data. The neural network paradigm used in this paper is the generalized regression neural network (GRNN) algorithm. Detailed examples are given of the use of this approach to assist engineers to interpret laboratory test data from consolidation tests and to characterize soil types from laboratory particle size distribution information. The main advantage of the GRNN technique in comparison to the widely used back-propagation neural network algorithm is the speed at which the optimal neural network configuration is determined, since this process only involves adjusting one variable.
SOIL LABORATORY DATA INTERPRETATION USING GENERALIZED REGRESSION NEURAL NETWORK
Civil Engineering and Environmental Systems ; 16 ; 175-195
1999-05-01
21 pages
Article (Journal)
Electronic Resource
English
Soil Laboratory Data Interpretation using Generalized Regression Neural Network
British Library Online Contents | 1999
|Soil Laboratory Data Interpretation using Generalized Regression Neural Network
Online Contents | 1999
|Inversion of self-potential data using generalized regression neural network
Online Contents | 2022
|Generalized regression neural network in monthly flow forecasting
Online Contents | 2005
|Generalized Regression Neural Network in Monthly Flow Forecasting
British Library Online Contents | 2005
|