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						Badora M., Sepe M.♦, Bielecki M.♦, Graziano A.♦, Szolc T., Predicting length of fatigue cracks by means of machine learningalgorithms in the small-data regime,
						EKSPLOATACJA I NIEZAWODNOŚĆ - MAINTENANCE AND RELIABILITY, ISSN: 1507-2711, DOI: 10.17531/ein.2021.3.19, Vol.23, No.3, pp.575-585, 2021 Abstract: In this paper several statistical learning algorithms are used to predict the maximal length of fatigue cracks based on a sample composed of 31 observations. The small-data regime is still a problem for many professionals, especially in the areas where failures occur rarely. The analyzed object is a high-pressure Nozzle of a heavy-duty gas turbine. Operating parameters of  the  engines  are  used  for  the regression  analysis.  The  following  algorithms  are  used  in this work: multiple linear and polynomial regression, random forest, kernel-based methods, AdaBoost and extreme gradient boosting and artificial neural networks. A substantial part of the paper provides advice on the effective selection of features. The paper explains how to  process  the  dataset  in  order  to  reduce  uncertainty;  thus, simplifying  the  analysis  of  the results. The proposed loss and cost functions are custom and promote solutions accurately predicting the longest cracks. The obtained results confirm that some of the algorithms can accurately predict maximal lengths of the fatigue cracks, even if the sample is small. Keywords: empirical models, fatigue cracks, predictive maintenance, regression analysis, small data, statistical learning, turbomachinery Affiliations:
 | Badora M. |  -  | IPPT PAN |  | Sepe M. |  -  | other affiliation |  | Bielecki M. |  -  | other affiliation |  | Graziano A. |  -  | other affiliation |  | Szolc T. |  -  | IPPT PAN |  
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