Litcius/Paper detail

Prediction of the critical temperature of a superconductor by using the WOA/MARS, Ridge, Lasso and Elastic-net machine learning techniques

P.J. Garcı́a Nieto, Esperanza García–Gonzalo, José P. Paredes–Sánchez

2021Neural Computing and Applications68 citationsDOIOpen Access PDF

Abstract

Abstract This study builds a predictive model capable of estimating the critical temperature of a superconductor from experimentally determined physico-chemical properties of the material (input variables): features extracted from the thermal conductivity, atomic radius, valence, electron affinity and atomic mass. This original model is built using a novel hybrid algorithm relied on the multivariate adaptive regression splines (MARS) technique in combination with a nature-inspired meta-heuristic optimization algorithm termed the whale optimization algorithm (WOA) that mimics the social behavior of humpback whales. Additionally, the Ridge, Lasso and Elastic-net regression models were fitted to the same experimental data for comparison purposes. The results of the current investigation indicate that the critical temperature of a superconductor can be successfully predicted using this proposed hybrid WOA/MARS-based model. Furthermore, the results obtained with the Ridge, Lasso and Elastic-net regression models are clearly worse than those obtained with the WOA/MARS-based model.

Topics & Concepts

Mars Exploration ProgramElastic net regularizationMultivariate adaptive regression splinesRidgeComputer scienceArtificial intelligenceRegressionSupport vector machineAlgorithmMaterials scienceMachine learningRegression analysisBayesian multivariate linear regressionFeature selectionGeologyMathematicsPhysicsStatisticsPaleontologyAstronomyMachine Learning in Materials ScienceNon-Destructive Testing TechniquesEnergy Load and Power Forecasting