@article{scholars16905, title = {ANN-and FEA-Based Assessment Equation for a Corroded Pipeline with a Single Corrosion Defect}, doi = {10.3390/jmse10040476}, note = {cited By 3}, volume = {10}, number = {4}, publisher = {MDPI}, journal = {Journal of Marine Science and Engineering}, year = {2022}, issn = {20771312}, author = {Lo, M. and Karuppanan, S. and Ovinis, M.}, url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-85128370526&doi=10.3390\%2fjmse10040476&partnerID=40&md5=7106bf71608adb1763e57c2968b1ca7f}, abstract = {Most of the standards available for the assessment of the failure pressure of corroded pipelines are limited in their ability to assess complex loadings, and their estimations are conservative. To overcome this research gap, this study employed an artificial neural network (ANN) model trained with data obtained using the finite element method (FEM) to develop an assessment equation to predict the failure pressure of a corroded pipeline with a single corrosion defect. A finite element analysis (FEA) of medium-toughness pipelines (API 5L X65) subjected to combined loads of internal pressure and longitudinal compressive stress was carried out. The results from the FEA with various corrosion geometric parameters and loads were used as the training dataset for the ANN. After the ANN was trained, its performance was evaluated, and its weights and biases were obtained for the development of a corrosion assessment equation. The prediction from the newly developed equation has a good correlation value, R2 of 0.9998, with percentage errors ranging from {\^a}??1.16 to 1.78, when compared with the FEA results. When compared with the failure pressure estimates based on the Det Norske Veritas (DNV-RP-F101) guidelines, the standard was more conservative in its prediction than the assessment equation developed in this study. {\^A}{\copyright} 2022 by the authors. Licensee MDPI, Basel, Switzerland.} }