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Tensile strength prediction of corroded steel plates by using machine learning approach

机译:采用机器学习方法腐蚀钢板的拉伸强度预测

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摘要

Safety service improvement and development of efficient maintenance strategies for corroded steel structures are undeniably essential. Therefore, understanding the influence of damage caused by corrosion on the remaining load-carrying capacities such as tensile strength is required. In this study, artificial neural network (ANN) approach is proposed in order to produce a simple, accurate, and inexpensive method developed by using tensile test results, material properties and finite element method (FEM) results to train the ANN model. Initially in reproducing corroded model process, FEM was used to obtain tensile strength of artificial corroded plates, for which surface is developed by a spatial autocorrelation model. By using the corroded surface data and material properties as input data, with tensile strength as the output data, the ANN model could be trained. The accuracy of the ANN result was then verified by using leave-one-out cross-validation (LOOCV). As a result, it was confirmed that the accuracy of the ANN approach and the final output equation was developed for predicting tensile strength without tensile test results and FEM in further work. Though previous studies have been conducted, the accuracy results are still lower than the proposed ANN approach. Hence, the proposed ANN model now enables us to have a simple, rapid, and inexpensive method to predict residual tensile strength more accurately due to corrosion in steel structures.
机译:安全服务改进和腐蚀钢结构有效维护策略的发展是无可否认的。因此,理解需要腐蚀引起的损坏对剩余的负载承载能力,例如拉伸强度。在这项研究中,提出了人工神经网络(ANN)方法,以产生通过使用拉伸试验结果,材料特性和有限元方法(FEM)产生培训ANN模型而开发的简单,准确和廉价的方法。最初在再现腐蚀模型过程中,使用有限元件来获得人造腐蚀板的拉伸强度,其表面由空间自相关模型开发。通过使用腐蚀的表面数据和材料特性作为输入数据,具有抗拉强度作为输出数据,可以培训ANN模型。然后通过使用休假交叉验证(LOOCV)来验证ANN结果的准确性。结果,证实了ANN方法的准确性和最终输出方程是开发的,用于预测拉伸强度而无需拉伸试验结果和FEM进一步的工作。虽然已经进行了以前的研究,但准确性结果仍然低于建议的ANN方法。因此,所提出的ANN模型现在使我们能够拥有简单,快速,廉价的方法来预测由于钢结构腐蚀而更准确地预测残留的拉伸强度。

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