In this paper, a robust methodology is presented to identify the notch depth value in X70 steel specimens based on the maximum resistance force using an artificial neural network (ANN). The mechanical characterizations of fracture behavior of the X70 steel specimens are simulated using XFEM. The main goal is to obtain the best identification of notch depths as a function of various maximum resistances. The collected data are used as inputs and outputs for the proposed ANN using optimal parameters to identify the notch depths in different steel specimen designs based on different maximum resistance force values. The provided results showed the effectiveness of the ANN based on the convergence study of the obtained results and the accuracy of notch depth identification.

Experimental investigation of Notched Identification based on Maximum Resistance Force in Steel Specimens using an Artificial Neural Network / Brahim, A. Oulad; Capozucca, R.; Magagnini, E.; Khatir, S.; Bouzid, Y.. - In: PROCEDIA STRUCTURAL INTEGRITY. - ISSN 2452-3216. - 68:(2025), pp. 566-572. ( 24th European Conference on Fracture, ECF 2024 hrv 2024) [10.1016/j.prostr.2025.06.098].

Experimental investigation of Notched Identification based on Maximum Resistance Force in Steel Specimens using an Artificial Neural Network

Capozucca, R.;Magagnini, E.;
2025-01-01

Abstract

In this paper, a robust methodology is presented to identify the notch depth value in X70 steel specimens based on the maximum resistance force using an artificial neural network (ANN). The mechanical characterizations of fracture behavior of the X70 steel specimens are simulated using XFEM. The main goal is to obtain the best identification of notch depths as a function of various maximum resistances. The collected data are used as inputs and outputs for the proposed ANN using optimal parameters to identify the notch depths in different steel specimen designs based on different maximum resistance force values. The provided results showed the effectiveness of the ANN based on the convergence study of the obtained results and the accuracy of notch depth identification.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/349412
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