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Journal article · Preprint article

Comparison of Neural Network Error Measures for Simulation of Slender Marine Structures

From

DNV Denmark A/S1

DNV GL Group2

Department of Applied Mathematics and Computer Science, Technical University of Denmark3

Department of Mechanical Engineering, Technical University of Denmark4

Solid Mechanics, Department of Mechanical Engineering, Technical University of Denmark5

Training of an artificial neural network (ANN) adjusts the internal weights of the network in order to minimize a predefined error measure. This error measure is given by an error function. Several different error functions are suggested in the literature. However, the far most common measure for regression is the mean square error.

This paper looks into the possibility of improving the performance of neural networks by selecting or defining error functions that are tailor-made for a specific objective. A neural network trained to simulate tension forces in an anchor chain on a floating offshore platform is designed and tested.

The purpose of setting up the network is to reduce calculation time in a fatigue life analysis. Therefore, the networks trained on different error functions are compared with respect to accuracy of rain flow counts of stress cycles over a number of time series simulations. It is shown that adjusting the error function to perform significantly better on a specific problem is possible.

On the other hand. it is also shown that weighted error functions actually can impair the performance of an ANN.

Language: English
Publisher: Journal of Applied Mathematics
Year: 2014
Pages: 1-11
ISSN: 16870042 and 1110757x
Types: Journal article and Preprint article
DOI: 10.1155/2014/759834
ORCIDs: Høgsberg, Jan Becker
Other keywords

Mathematics QA1-939

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