Prediction the effects of ZnO2 nanoparticles on splitting tensile strength and water absorption of high strength concrete
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Nazari:2012:MR,
-
title = "Prediction the effects of {ZnO2} nanoparticles on
splitting tensile strength and water absorption of high
strength concrete",
-
author = "Ali Nazari and Tohid Azimzadegan",
-
journal = "Materials Research",
-
publisher = "ABM, ABC, ABPol",
-
year = "2012",
-
keywords = "genetic algorithms, genetic programming, neural
networks, gene expression programming, nanoparticles,
concrete, tensile test, water permeability",
-
ISSN = "15161439",
-
bibsource = "OAI-PMH server at www.doaj.org",
-
language = "eng",
-
oai = "oai:doaj-articles:67aaaae2ca87020d0fa93f9056e0df78",
-
URL = "http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-14392012000300016&lng=en&nrm=iso&tlng=en",
-
DOI = "DOI:10.1590/S1516-14392012005000057",
-
size = "15 pages",
-
abstract = "In the present paper, two models based on artificial
neural networks (ANN) and gene expression programming
(GEP) for predicting splitting tensile strength and
water absorption of concretes containing ZnO2
nanoparticles at different ages of curing have been
developed. To build these models, training and testing
using experimental results for 144 specimens produced
with 16 different mixture proportions were conducted.
The used data in the multilayer feed forward neural
networks models and input variables of genetic
programming models are arranged in a format of eight
input parameters that cover the cement content (C),
nanoparticle content (N), aggregate type (AG), water
content (W), the amount of superplasticizer (S), the
type of curing medium (CM), Age of curing (AC) and
number of testing try (NT). According to these input
parameters, in the neural networks and genetic
programming models, the splitting tensile strength and
water absorption values of concretes containing ZnO2
nanoparticles were predicted. The training and testing
results in these two models have shown the strong
potential of the models for predicting the splitting
tensile strength and water absorption values of
concretes containing ZnO2 nanoparticles. Although
neural networks have predicted better results, genetic
programming is able to predict reasonable values with a
simpler method rather than neural networks.",
-
notes = "July 2014 doi on scielo.br web page appears to be
wrong",
- }
Genetic Programming entries for
Ali Nazari
Tohid Azimzadegan
Citations