Techno Press
Tp_Editing System.E (TES.E)
Login Search
You logged in as

cac
 
CONTENTS
Volume 12, Number 3, September 2013
 


Abstract
Recent developments in Artificial Intelligence (AI) and computational intelligence have made it viable in the construction industry and structural analysis. This study usesthe Adaptive Network-based Fuzzy Inference System (ANFIS) as a modelling tool to predict the strain in tie section for High Strength Self Compacting Concrete (HSSCC) deep beams. 3773 experimental data were collected. The input data andits corresponding strains in tie section as output data were recorded at all loading stages. Results from ANFIS are compared with the classical linear regression (LR). The comparison shows that the ANFIS\'s results are highly accurate, precise and satisfactory.

Key Words
deep beams; strut and tie; strain of tie section; ANFIS; LR

Address
Mohammad Mohammadhassani: Department of Civil Engineering, University Malaya, Malasiya
Hossein Nezamabadi-pour: Department of Electrical Engineering, Shahid Bahonar University of Kerman, Iran
Mohammed Jameel: Department of Civil Engineering, University Malaya, Malasiya
Karim Garmasiri: Department of Mechanical Engineering, Razi University, Tagh Bostan, Kermanshah, Iran

Abstract
This paper aims to contribute to the three-dimensional generalization of numerical prediction of crack propagation through the formulation of finite elements with embedded discontinuities. The analysis of crack propagation in two-dimensional problems yields lines of discontinuity that can be tracked in a relatively simple way through the sequential construction of straight line segments oriented according to the direction of failure within each finite element in the solid. In three-dimensional analysis, the construction of the discontinuity path is more complex because it requires the creation of plane surfaces within each element, which must be continuous between the elements. In the method proposed by Chaves (2003) the crack is determined by solving a problem analogous to the heat conduction problem, established from local failure orientations, based on the stress state of the mechanical problem. To minimize the computational effort, in this paper a new strategy is proposed whereby the analysis for tracking the discontinuity path is restricted to the domain formed by some elements near the crack surface that develops along the loading process. The proposed methodology is validated by performing three-dimensional analyses of basic problems of experimental fractures and comparing their results with those reported in the literature.

Key Words
embedded crack element; fracture; three-dimensional analysis; crack path

Address
O.L. Manzoli, G.K.S. Claro, E.A. Rodrigues and J.A. Lopes Jr.: Department of Civil Engineering, Univ Estadual Paulista - UNESP, Av. Luiz Edmundo C. Coube,14-01, 17033-360, Bauru, SP, Brazil

Abstract
This paper concentrates on the results of experimental work on tensile strength of self-compacting concrete (SCC) caused by flexure, which is called rupture modulus. The work focused on concrete mixes having water/binder ratios of 0.35 and 0.45, which contained constant total binder contents of 500 kg/m3 and 400 kg/m3, respectively. The concrete mixes had four different dosages of a superplasticizer based on polycarboxylic with and without silica fume. The percentage of silica fume that replaced cement in this research was 10%. Based upon the experimental results, the existing equations for anticipating the rupture modulus of SCC according to its compressive strength were not exact enough. Therefore, it is decided to use artificial neural networks (ANN) for anticipating the rupture modulus of SCC from its compressive strength and workability. The conclusion was that the multi layer perceptron (MLP) networks could predict the tensile strength in all conditions, but radial basis (RB) networks were not exact enough in some circumstances. On the other hand, RB networks were more users friendly and they converged to the final networks quicker.

Key Words
concrete; tensile strength; self-compacting; neural networks; perceptron; multi layer perceptron (MLP) and radial basis (RB) networks

Address
Moosa Mazloom and M.M. Yoosefi: Department of Civil Engineering, Shahid Rajaee Teacher Training University, Tehran, Iran

Abstract
The purpose of this study is to present different composed material models for reinforced concrete structures (RC). For this aim a nonlinear finite element analysis program is coded in MATLAB. This program contains several yield criteria and stress-strain relationships for compression and tension behavior of concrete. In this study, the well-known criteria, Drucker-Prager, von Mises, Mohr Coulomb, Tresca, and two new criteria, Hsieh-Ting-Chen and Bresler-Pister, are taken into account. It is concluded that the coded program, the new yield criteria, and the models considered can be effectively used in the nonlinear analysis of reinforced concrete beams.

Key Words
composed material model; elastic behavior; plastic behavior; nonlinear analysis

Address
Tayfun Dede: Department of Civil Engineering, Karadeniz Technical University, Trabzon, Türkiye
Yusuf Ayvaz: Department of Civil Engineering, Yildiz Technical University,Istanbul,Türkiye

Abstract
In this paper, the properties of the cement mortar modified with styrene acrylic ester copolymer were investigated. Expanded vermiculite as lightweight aggregate was used for making the polymer modified mortar test specimens. To study the effect of polymer–cement ratio and vermiculite-cement ratio on various properties, specimens were prepared by varying the polymer–cement and vermiculite-cement ratios. Tests of physical properties such as density, water absorption, thermal conductivity, three-point flexure and compressive tests were made on the specimens. Furthermore, a coupled thermal-structural finite element model of an entire corner wall was modelled in order to study the best material configuration. The wall is composed by a total of 132 bricks of 120 x 242 x 54 size, joined by means of a contact-bonded model. The use of advanced numerical methods allows us to obtain the optimum material properties. Finally, comparisons of polymer–cement and vermiculite-cement ratios on physical properties are given and the most important conclusions are exposed.

Key Words
polymer; lightweight mortar; expanded vermiculite; thermal conductivity; FEM and DOE analysis

Address
Fuat Köksal: Department of Civil Engineering, Faculty of Engineering and Architecture, Bozok University, Yozgat, Turkey
Juan J. del Coz Diaz and Felipe P. Alvarez Rabanal: Department of Construction, University of Oviedo, Spain
Osman Gencel: Department of Civil Engineering, Faculty of Engineering, Bartin University, Turkey

Abstract
Traditional concrete is effectively an insulator in the dry state. However, conductive concrete can attain relatively high conductivity by adding a certain amount of electronically conductive components in the regular concrete matrix. The main purpose of this study is to investigate the electrical and thermal properties of conductive concrete with various graphite contents, specimen dimensions and applied voltages. For this purpose, six different mixtures (the control mixtures and five conductive mixtures with steel fibers of 2% by weight of coarse aggregate and graphite as fine aggregate replacement at the levels of 0%, 5%, 10%, 15% and 20% by weight) were prepared and concrete blocks with two types of dimensions were fabricated. Four test voltage levels, 48 V, 60 V, 110 V, and 220 V, were applied for the electrical and thermal tests. Test results show that the compressive strength of specimens decreases as the amount of graphite increases in concrete. The rising applied voltage decreases electrical resistivity and increases heat of concrete. Meanwhile, higher electrical current and temperature have been obtained in small size specimens than the comparable large size specimens. From the results, it can be concluded that the graphite contents, applied voltage levels, and the specimen dimensions play important roles in electrical and thermal properties of concrete. In addition, the superior electrical and thermal properties have been obtained in the mixture adding 2% steel fibers and 10% graphite.

Key Words
electrical properties; thermal properties; conductive concrete; steel fibers; graphite

Address
Tehsien Wu: Institute of Materials Engineering, National Taiwan Ocean University, Keelung, Taiwan
Ran Huang: Department of Harbor and River Engineering, National Taiwan Ocean University, Keelung, Taiwan
Maochieh Chi: Department of Fire Science, Wufeng University, Chiayi, Taiwan
Tsailung Weng: Physics Division, Tatung University, Taipei, Taiwan

Abstract
Post-punching resistance of a flat slab can help redistribute the gravity loads and resist progressive collapse of a structure following initial damage. One important difficulty with accounting for the post-punching strength of a slab is the discontinuity that develops following punching shear. A numerical simulation technique is proposed here to model and evaluate post-punching resistance of flat slabs. It is demonstrated that the simulation results of punching shear and post-punching response of the model of a slab on a single column are in good agreement with corresponding experimental data. It is also shown that progressive collapse due to a column removal (explosion) can lead to punching failure over an adjacent column. Such failure can propagate throughout the structure leading to the progressive collapse of the structure. Through post-punching modeling of the slab and accounting for the associated discontinuity, it is also demonstrated that the presence of an adequate amount of integrity reinforcement can provide an alternative load path and help resist progressive collapse.

Key Words
progressive collapse; punching shear; post- punching; flat slab; finite element method; failure

Address
Yaser Mirzaei and Mehrdad Sasani: Northeastern University, 400 Snell Engineering Center, Boston, MA 02115, USA


Techno-Press: Publishers of international journals and conference proceedings.       Copyright © 2024 Techno-Press ALL RIGHTS RESERVED.
P.O. Box 33, Yuseong, Daejeon 34186 Korea, Email: info@techno-press.com