Machine learning for structural design models of continuous beam systems via influence zones

被引:0
作者
Gallet, Adrien [1 ]
Liew, Andrew [2 ]
Hajirasouliha, Iman [1 ]
Smyl, Danny [3 ]
机构
[1] Univ Sheffield, Dept Civil & Struct Engn, Sheffield, England
[2] Unipart Construct Technol, Catcliffe, England
[3] Georgia Inst Technol, Sch Civil & Environm Engn, Atlanta, GA USA
关键词
machine learning; structural design models; neural networks; influence zone; inverse problems; LAYOUT OPTIMIZATION; SUPPORT;
D O I
10.1088/1361-6420/ad3334
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
This work develops a machine learned structural design model for continuous beam systems from the inverse problem perspective. After demarcating between forward, optimisation and inverse machine learned operators, the investigation proposes a novel methodology based on the recently developed influence zone concept which represents a fundamental shift in approach compared to traditional structural design methods. The aim of this approach is to conceptualise a non-iterative structural design model that predicts cross-section requirements for continuous beam systems of arbitrary system size. After generating a dataset of known solutions, an appropriate neural network architecture is identified, trained, and tested against unseen data. The results show a mean absolute percentage testing error of 1.6% for cross-section property predictions, along with a good ability of the neural network to generalise well to structural systems of variable size. The CBeamXP dataset generated in this work and an associated python-based neural network training script are available at an open-source data repository to allow for the reproducibility of results and to encourage further investigations.
引用
收藏
页数:30
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