EI、Scopus 收录
中文核心期刊
宋明, 李旭阳, 曹宇光, 甄莹, 司伟山. 基于BP神经网络与小冲杆试验确定在役管道钢弹塑性性能方法研究[J]. 力学学报, 2020, 52(1): 82-92. DOI: 10.6052/0459-1879-19-297
引用本文: 宋明, 李旭阳, 曹宇光, 甄莹, 司伟山. 基于BP神经网络与小冲杆试验确定在役管道钢弹塑性性能方法研究[J]. 力学学报, 2020, 52(1): 82-92. DOI: 10.6052/0459-1879-19-297
Song Ming, Li Xuyang, Cao Yuguang, Zhen Ying, Si Weishan. DETERMINATION OF ELASTOPLASTIC PROPERTIES OF IN-SERVICE PIPELINE STEEL BASED ON BP NEURAL NETWORK AND SMALL PUNCH TEST[J]. Chinese Journal of Theoretical and Applied Mechanics, 2020, 52(1): 82-92. DOI: 10.6052/0459-1879-19-297
Citation: Song Ming, Li Xuyang, Cao Yuguang, Zhen Ying, Si Weishan. DETERMINATION OF ELASTOPLASTIC PROPERTIES OF IN-SERVICE PIPELINE STEEL BASED ON BP NEURAL NETWORK AND SMALL PUNCH TEST[J]. Chinese Journal of Theoretical and Applied Mechanics, 2020, 52(1): 82-92. DOI: 10.6052/0459-1879-19-297

基于BP神经网络与小冲杆试验确定在役管道钢弹塑性性能方法研究

DETERMINATION OF ELASTOPLASTIC PROPERTIES OF IN-SERVICE PIPELINE STEEL BASED ON BP NEURAL NETWORK AND SMALL PUNCH TEST

  • 摘要: 为了能够在不停输油气工况下获得在役管道材料的弹塑性力学性能, 提出了一种人工智能BP (back-propagation)神经网络、小冲杆试验与有限元模拟相结合,通过确定材料真应力-应变曲线从而获得材料弹塑性力学性能的方法. 首先,通过系统改变Hollomon公式中的参数K, n值,获得457组具有不同弹塑性力学性能的假想材料本构关系, 其次,将得到的本构关系代入经试验验证的含有Gurson-Tvergaard-Needleman(GTN)损伤参数的小冲杆试验二维轴对称有限元模型,通过有限元计算得到了与真应力-应变曲线一一对应的457条不同假想材料的载荷-位移曲线,最终将两组数据作为数据库输入BP神经网络进行训练,建立了同种材料小冲杆试验载荷-位移曲线与真应力-应变曲线之间的关联关系.通过此关联关系,可利用试验得到的小冲杆载荷-位移曲线获取在役管道钢的真应力-应变曲线,从而确定其弹塑性力学性能.通过对比BP神经网络得到的X80管道钢真应力-应变曲线与单轴拉伸试验的结果以及引用现有文献中不同材料的试验数据对此关系进行验证,证明了该方法的准确性与广泛适用性.

     

    Abstract: In order to obtain the elastoplastic mechanical properties of in-service pipeline materials without shutting down transportation, this paper presents a method of combining artificial intelligence back-propagation (BP) neural network, small punch test and finite element simulation to obtain the elastic-plastic mechanical properties of materials by determining the true stress-strain curve of materials. Elastoplastic mechanical properties of X80 pipeline steel was obtained by this novel method. First, 457 groups of hypothetical material constitutive relations with different elastoplastic mechanical properties are obtained by systematically changing the parameters K and n in the Hollomon formula. The load-displacement curves of 457 groups of different materials were obtained by using the two-dimensional axisymmetric finite element model of small punch test with Gurson-Tvergaard-Needleman (GTN) damage parameters verified by experiments. The two groups of data are substituted into BP neural network and the corresponding relationship between the load-displacement curve of small punch test and the true stress-strain curve of the conventional uniaxial tensile test is established by the method proposed. This relationship can be used to obtain the true stress-strain curve of in-service pipeline steel based on the results of small punch test, so as to determine its elastic plastic mechanical properties. The accuracy and wide applicability of the BP neural network model are verified by comparing the true stress-strain curve of X80 pipeline steel obtained by BP neural network with the results of uniaxial tensile test and the experimental data of materials in the literature.

     

/

返回文章
返回