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      Artificial neural networks in calibration of nonlinear mechanical models

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          Abstract

          Rapid development in numerical modelling of materials and the complexity of new models increases quickly together with their computational demands. Despite the growing performance of modern computers and clusters, calibration of such models from noisy experimental data remains a nontrivial and often computationally exhaustive task. The layered neural networks thus represent a robust and efficient technique to overcome the time-consuming simulations of a calibrated model. The potential of neural networks consists in simple implementation and high versatility in approximating nonlinear relationships. Therefore, there were several approaches proposed to accelerate the calibration of nonlinear models by neural networks. This contribution reviews and compares three possible strategies based on approximating (i) model response, (ii) inverse relationship between the model response and its parameters and (iii) error function quantifying how well the model fits the data. The advantages and drawbacks of particular strategies are demonstrated on the calibration of four parameters of the affinity hydration model from simulated data as well as from experimental measurements. This model is highly nonlinear, but computationally cheap thus allowing its calibration without any approximation and better quantification of results obtained by the examined calibration strategies. The paper can be thus viewed as a guide intended for the engineers to help them select an appropriate strategy in their particular calibration problems.

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          Author and article information

          Journal
          2015-02-04
          2016-01-27
          Article
          10.1016/j.advengsoft.2016.01.017
          1502.01380
          3f39528e-15e8-4a26-b9aa-082cbe38ed4d

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          Advances in Engineering Software, 95:68-81, 2016
          26 pages, 8 figures, 11 tables, accepted for publication in Advances in Engineering Software
          cs.NE cs.CE

          Applied computer science,Neural & Evolutionary computing
          Applied computer science, Neural & Evolutionary computing

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