Matches in SemOpenAlex for { <https://semopenalex.org/work/W4282965082> ?p ?o ?g. }
- W4282965082 endingPage "28437" @default.
- W4282965082 startingPage "28428" @default.
- W4282965082 abstract "Carbon fiber-reinforced carbon matrix composites (C/C) will be easily oxidized in high temperatures, which will have a great negative effect on their performance. Preparing ultra-high-temperature ceramic (UHTC) coatings is a well-established method to improve the oxidation and ablation resistance of C/C. However, it is time-consuming and costly to obtain these coatings through the traditional experimental method. Motivated by the outstanding performance of machine learning (ML) algorithms in many fields, this study adopts ML algorithms based on historical experimental datasets to build a model. This model will predict the oxidation and ablation resistance, represented by mass ablation rate. For this purpose, variables that affect the mass ablation rate and are easily accessible were used as input features. That includes the chemical composition and essential physics/chemistry properties of coatings and experimental parameters. Seven different ML algorithms were used to establish the model; namely, ridge regression (Ridge), lasso regression (Lasso), kernel ridge regression (KRR), support vector regression (SVR), random forest regression (RFR), AdaBoost regression (ABR), and bagging regression (Bagging). The results show that RFR has the optimal generalization performance with a mean absolute error (MAE) of 0.55, mean-squared error (MSE) of 0.71 and coefficient of determination (R2) of 0.87 on the testing set. SHapley Additive exPlanations (SHAP) analysis of the RFR model explained how these input features affect the mass ablation rate and further provided the critical features for performance prediction. The model established in this study can predict coating performance accurately and accelerate the development of UHTC-coated C/C composites from a data-driven perspective." @default.
- W4282965082 created "2022-06-17" @default.
- W4282965082 creator A5016131030 @default.
- W4282965082 creator A5017360203 @default.
- W4282965082 creator A5023372767 @default.
- W4282965082 creator A5024018229 @default.
- W4282965082 creator A5036159936 @default.
- W4282965082 creator A5037270358 @default.
- W4282965082 creator A5043975648 @default.
- W4282965082 creator A5045611682 @default.
- W4282965082 creator A5045835703 @default.
- W4282965082 creator A5061123640 @default.
- W4282965082 creator A5086418698 @default.
- W4282965082 date "2022-10-01" @default.
- W4282965082 modified "2023-09-26" @default.
- W4282965082 title "Exploration of the oxidation and ablation resistance of ultra-high-temperature ceramic coatings using machine learning" @default.
- W4282965082 cites W1980190463 @default.
- W4282965082 cites W1995291699 @default.
- W4282965082 cites W2013640190 @default.
- W4282965082 cites W2053186076 @default.
- W4282965082 cites W2060362334 @default.
- W4282965082 cites W2069625372 @default.
- W4282965082 cites W2074616700 @default.
- W4282965082 cites W2075877419 @default.
- W4282965082 cites W2085281262 @default.
- W4282965082 cites W2104738815 @default.
- W4282965082 cites W2190408489 @default.
- W4282965082 cites W2339291635 @default.
- W4282965082 cites W2347129741 @default.
- W4282965082 cites W2464725281 @default.
- W4282965082 cites W2499778623 @default.
- W4282965082 cites W2568014457 @default.
- W4282965082 cites W2747627157 @default.
- W4282965082 cites W2801870733 @default.
- W4282965082 cites W2888395196 @default.
- W4282965082 cites W2891385203 @default.
- W4282965082 cites W2911964244 @default.
- W4282965082 cites W2921873493 @default.
- W4282965082 cites W2953336023 @default.
- W4282965082 cites W2963784900 @default.
- W4282965082 cites W2968923792 @default.
- W4282965082 cites W2969389191 @default.
- W4282965082 cites W2972418846 @default.
- W4282965082 cites W2973049920 @default.
- W4282965082 cites W2986734036 @default.
- W4282965082 cites W3023094935 @default.
- W4282965082 cites W3033214077 @default.
- W4282965082 cites W3035353528 @default.
- W4282965082 cites W3043270278 @default.
- W4282965082 cites W3045004532 @default.
- W4282965082 cites W3049077839 @default.
- W4282965082 cites W3136654777 @default.
- W4282965082 cites W3158622813 @default.
- W4282965082 cites W3160734749 @default.
- W4282965082 cites W3162025068 @default.
- W4282965082 cites W4200053447 @default.
- W4282965082 cites W4250766106 @default.
- W4282965082 doi "https://doi.org/10.1016/j.ceramint.2022.06.156" @default.
- W4282965082 hasPublicationYear "2022" @default.
- W4282965082 type Work @default.
- W4282965082 citedByCount "2" @default.
- W4282965082 countsByYear W42829650822023 @default.
- W4282965082 crossrefType "journal-article" @default.
- W4282965082 hasAuthorship W4282965082A5016131030 @default.
- W4282965082 hasAuthorship W4282965082A5017360203 @default.
- W4282965082 hasAuthorship W4282965082A5023372767 @default.
- W4282965082 hasAuthorship W4282965082A5024018229 @default.
- W4282965082 hasAuthorship W4282965082A5036159936 @default.
- W4282965082 hasAuthorship W4282965082A5037270358 @default.
- W4282965082 hasAuthorship W4282965082A5043975648 @default.
- W4282965082 hasAuthorship W4282965082A5045611682 @default.
- W4282965082 hasAuthorship W4282965082A5045835703 @default.
- W4282965082 hasAuthorship W4282965082A5061123640 @default.
- W4282965082 hasAuthorship W4282965082A5086418698 @default.
- W4282965082 hasConcept C105795698 @default.
- W4282965082 hasConcept C11413529 @default.
- W4282965082 hasConcept C119857082 @default.
- W4282965082 hasConcept C12267149 @default.
- W4282965082 hasConcept C136764020 @default.
- W4282965082 hasConcept C139945424 @default.
- W4282965082 hasConcept C151730666 @default.
- W4282965082 hasConcept C154945302 @default.
- W4282965082 hasConcept C169258074 @default.
- W4282965082 hasConcept C192562407 @default.
- W4282965082 hasConcept C32277403 @default.
- W4282965082 hasConcept C33923547 @default.
- W4282965082 hasConcept C37616216 @default.
- W4282965082 hasConcept C41008148 @default.
- W4282965082 hasConcept C83546350 @default.
- W4282965082 hasConcept C86803240 @default.
- W4282965082 hasConceptScore W4282965082C105795698 @default.
- W4282965082 hasConceptScore W4282965082C11413529 @default.
- W4282965082 hasConceptScore W4282965082C119857082 @default.
- W4282965082 hasConceptScore W4282965082C12267149 @default.
- W4282965082 hasConceptScore W4282965082C136764020 @default.
- W4282965082 hasConceptScore W4282965082C139945424 @default.
- W4282965082 hasConceptScore W4282965082C151730666 @default.
- W4282965082 hasConceptScore W4282965082C154945302 @default.