Optimizing ANN models with PSO for predicting short building seismic response

被引:0
作者
Hoang Nguyen
Hossein Moayedi
Loke Kok Foong
Husam Abdulrasool H. Al Najjar
Wan Amizah Wan Jusoh
Ahmad Safuan A. Rashid
Jamaloddin Jamali
机构
[1] Duy Tan University,Institute of Research and Development
[2] Ton Duc Thang University,Department for Management of Science and Technology Development
[3] Ton Duc Thang University,Faculty of Civil Engineering
[4] Universiti Teknologi Malaysia,Center of Tropical Geoengineering, School of Civil Engineering, Faculty of Engineering
[5] University of Technology Sydney,Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), Faculty of Engineering and IT
[6] Universiti Tun Hussein Onn Malaysia,Faculty of Engineering Technology (FTK)
[7] Campus (Pagoh Branch),College of Engineering and Technology
[8] Higher Education Hub Pagoh,undefined
[9] KM1,undefined
[10] Jalan Panchor,undefined
[11] American University of the Middle East,undefined
来源
Engineering with Computers | 2020年 / 36卷
关键词
ANN; Optimization; PSO-ANN; Earthquake; Short building;
D O I
暂无
中图分类号
学科分类号
摘要
The present study aimed to optimize the artificial neural network (ANN) with one of the well-established optimization algorithms called particle swarm optimization (PSO) for the problem of ground response approximation in short structures. Various studies showed that ANN-based solutions are a reliable method for complex engineering problems. Predicting the ground surface respond to seismic loading is one of the engineering problems that still has not received any ANN solution. Therefore, this paper aimed to assess the application of hybrid PSO-based ANN models to the calculation of horizontal deflection of columns in short building after being subjected to a significant seismic loading (e.g., The Chi-Chi earthquake used as one of the input databases). To prepare both of the training and testing datasets, for the ANN and PSO-ANN network models, a series of finite element (FE) modeling were performed. The used FEM simulation database consists of 8324 training datasets and 2081 testing datasets that is equal to 80% and 20% of the whole database, respectively. The input includes Chi-Chi earthquake dynamic time (s), friction angle (φ), dilation angle (ψ), unit weight (γ), soil elastic modulus (E), Poisson’s ratio (v), structure axial stiffness (EA), and bending stiffness (EI) where the output was taken horizontal deflection of the columns at their highest level (Ux). The result indicates higher reliability of the PSO-ANN model in estimating the ground response and horizontal deflection of structural columns in short structures after being subjected to earthquake loading.
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页码:823 / 837
页数:14
相关论文
共 246 条
[1]  
Moayedi H(2018)Performance analysis of piled-raft foundation system of varying pile lengths in controlling angular distortion Soil Mech Found Eng 55 265-269
[2]  
Nazir R(2018)Republished Paper. Multiple damage detection and localization in beam-like and complex structures using co-ordinate modal assurance criterion combined with firefly and genetic algorithms (Reprinted from Jounral of Vibroengineering 18:5063–5073 2016) J VibroEng 20 832-842
[3]  
Ghareh S(2018)Prediction of soil compression coefficient for urban housing project using novel integration machine learning approach of swarm intelligence and multi-layer perceptron neural network Adv Eng Inform 38 593-604
[4]  
Sobhanmanesh A(2018)Optimization of reservoir operation using new hybrid algorithm KSCE J Civil Eng 22 4668-4680
[5]  
Tan YC(2018)Model updating in complex bridge structures using kriging model ensemble with genetic algorithm KSCE J Civil Eng 22 3567-3578
[6]  
Kthatir A(2018)Predicting blast-induced air overpressure: a robust artificial intelligence system based on artificial neural networks and random forest Nat Resour Res 29 1-15
[7]  
Tehami M(2018)A comparative study of artificial neural networks in predicting blast-induced air-blast overpressure at Deo Nai open-pit coal mine Vietnam. Neural Comput Appl 31 1-17
[8]  
Khatir S(2019)Prediction of blast-induced air over-pressure in open-pit mine: assessment of different artificial intelligence techniques Nat Resour Res 29 1-21
[9]  
Wahab MA(2019)Evaluating and predicting blast-induced ground vibration in open-cast mine using ANN: a case study in Vietnam SN Appl Sci 1 125-386
[10]  
Dieu Tien B(2019)A new soft computing model for estimating and controlling blast-produced ground vibration based on hierarchical K-means clustering and cubist algorithms Appl Soft Comput 77 376-311