Finite element and generalized regression neural network modelling of multiple cracks growth under the influence of multiple crack parameters
Mas Irfan P. Hidayat,
Azzah D. Pramata,
Prima P. Airlangga
Abstract:PurposeThis study presents finite element (FE) and generalized regression neural network (GRNN) approaches for modeling multiple crack growth problems and predicting crack-growth directions under the influence of multiple crack parameters.Design/methodology/approachTo determine the crack-growth direction in aluminum specimens, multiple crack parameters representing some degree of crack propagation complexity, including crack length, inclination angle, offset and distance, were examined. FE method models were d… Show more
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