Shallow and Deep Artificial Neural Networks for Structural Reliability Analysis

被引:12
|
作者
de Santana Gomes, Wellison Jose [1 ]
机构
[1] Univ Fed Santa Catarina, Ctr Optimizat & Reliabil Engn CORE, Dept Civil Engn, Rua Joao Pio Duarte 205, BR-88037000 Florianopolis, SC, Brazil
来源
ASCE-ASME JOURNAL OF RISK AND UNCERTAINTY IN ENGINEERING SYSTEMS PART B-MECHANICAL ENGINEERING | 2020年 / 6卷 / 04期
关键词
structural reliability; metamodels; surrogate models; artificial neural networks; deep neural networks; RESPONSE-SURFACE; FAILURE;
D O I
10.1115/1.4047636
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Surrogate models are efficient tools which have been successfully applied in structural reliability analysis, as an attempt to keep the computational costs acceptable. Among the surrogate models available in the literature, artificial neural networks (ANNs) have been attracting research interest for many years. However, the ANNs used in structural reliability analysis are usually the shallow ones, based on an architecture consisting of neurons organized in three layers, the so-called input, hidden, and output layers. On the other hand, with the advent of deep learning, ANNs with one input, one output, and several hidden layers, known as deep neural networks, have been increasingly applied in engineering and other areas. Considering that many recent publications have shown advantages of deep over shallow ANNs, the present paper aims at comparing these types of neural networks in the context of structural reliability. By applying shallow and deep ANNs in the solution of four benchmark structural reliability problems from the literature, employing Monte Carlo simulation (MCS) and adaptive experimental designs (EDs), it is shown that, although good results are obtained for both types of ANNs, deep ANNs usually outperform the shallow ones.
引用
收藏
页数:8
相关论文
共 50 条
  • [1] Structural Reliability Analysis Using Adaptive Artificial Neural Networks
    de Santana Gomes, Wellison Jose
    ASCE-ASME JOURNAL OF RISK AND UNCERTAINTY IN ENGINEERING SYSTEMS PART B-MECHANICAL ENGINEERING, 2019, 5 (04):
  • [2] Artificial neural networks for structural analysis
    Perez, RA
    Lou, KN
    JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS, 1995, 332B (03): : 247 - 262
  • [3] RELIABILITY-ANALYSIS OF ARTIFICIAL NEURAL NETWORKS
    DUGAN, JB
    WATTERSON, JW
    PROCEEDINGS ANNUAL RELIABILITY AND MAINTAINABILITY SYMPOSIUM, 1991, (SYM): : 598 - 603
  • [4] Structural reliability analysis based on artificial neural network
    Yang, Duo-He
    An, Wei-Guang
    Li, Tie-Jun
    Binggong Xuebao/Acta Armamentarii, 2007, 28 (04): : 495 - 498
  • [5] A Review on Artificial Neural Networks for Structural Analysis
    Saini, Rahul
    JOURNAL OF VIBRATION ENGINEERING & TECHNOLOGIES, 2025, 13 (02)
  • [6] Explaining Neural Networks - Deep and Shallow
    Hammer, Barbara
    ADVANCES IN SELF-ORGANIZING MAPS, LEARNING VECTOR QUANTIZATION, INTERPRETABLE MACHINE LEARNING, AND BEYOND, WSOM PLUS 2024, 2024, 1087 : 139 - 140
  • [7] AN APPROACH TO STRUCTURAL APPROXIMATION ANALYSIS BY ARTIFICIAL NEURAL NETWORKS
    LU, JG
    ZHOU, J
    WANG, H
    CHEN, XD
    YU, J
    XIAO, SD
    SCIENCE IN CHINA SERIES A-MATHEMATICS PHYSICS ASTRONOMY, 1994, 37 (08): : 990 - 997
  • [8] An Approach to Structural Approximation Analysis by Artificial Neural Networks
    陆金桂
    周济
    王浩
    陈新度
    余俊
    肖世德
    Science China Mathematics, 1994, (08) : 990 - 997
  • [9] Artificial Neural Networks in the domain of reservoir characterization: A review from shallow to deep models
    Saikia, Pallabi
    Baruah, Rashmi Dutta
    Singh, Sanjay Kumar
    Chaudhuri, Pradip Kumar
    COMPUTERS & GEOSCIENCES, 2020, 135
  • [10] Reliability-based optimization of structural topologies using artificial neural networks
    Freitag, Steffen
    Peters, Simon
    Edler, Philipp
    Meschke, Guenther
    PROBABILISTIC ENGINEERING MECHANICS, 2022, 70