Matches in SemOpenAlex for { <https://semopenalex.org/work/W4321372970> ?p ?o ?g. }
- W4321372970 endingPage "545" @default.
- W4321372970 startingPage "545" @default.
- W4321372970 abstract "Materials have a significant role in creating structures that are durable, valuable and possess symmetry engineering properties. Premium quality materials establish an exemplary environment for every situation. Among the composite materials in constructions, carbon fiber reinforced polymer (CFRP) is one of best materials which provides symmetric superior strength and stiffness to reinforced concrete structures. For the structure to be confining, the region jeopardizes seismic loads and axial force, specifically on columns, with limited proportion of ties or stirrups implemented to loftier ductility and brittleness. The failure and buckling of columns with CFRP has been studied by many researchers and is ongoing to determine ways columns can be retrofitted. This article symmetrically integrates two disciplines, specifically materials (CFRP) and computer application (machine learning). Technically, predicting the lateral confinement coefficient (Ks) for reinforced concrete columns in designs plays a vital role. Therefore, machine learning models like genetic programming (GP), minimax probability machine regression (MPMR) and deep neural networks (DNN) were utilized to determine the Ks value of CFRP-wrapped RC columns. In order to compute Ks value, parameters such as column width, length, corner radius, thickness of CFRP, compressive strength of the unconfined concrete and elastic modulus of CFRP act as stimulants. The adopted machine learning models utilized 293 datasets of square and rectangular RC columns for the prediction of Ks. Among the developed models, GP and MPMR provide encouraging performances with higher R values of 0.943 and 0.941; however, the statistical indices proved that the GP model outperforms other models with better precision (R2 = 0.89) and less errors (RMSE = 0.056 and NMBE = 0.001). Based on the evaluation of statistical indices, rank analysis was carried out, in which GP model secured more points and ranked top." @default.
- W4321372970 created "2023-02-21" @default.
- W4321372970 creator A5004350213 @default.
- W4321372970 creator A5012007672 @default.
- W4321372970 creator A5053458745 @default.
- W4321372970 creator A5055377958 @default.
- W4321372970 creator A5059647743 @default.
- W4321372970 creator A5078433539 @default.
- W4321372970 date "2023-02-17" @default.
- W4321372970 modified "2023-09-25" @default.
- W4321372970 title "Machine Learning Approach for Prediction of Lateral Confinement Coefficient of CFRP-Wrapped RC Columns" @default.
- W4321372970 cites W1482115196 @default.
- W4321372970 cites W1553611078 @default.
- W4321372970 cites W1590459064 @default.
- W4321372970 cites W1976409897 @default.
- W4321372970 cites W1977752245 @default.
- W4321372970 cites W1983924012 @default.
- W4321372970 cites W1989904722 @default.
- W4321372970 cites W1996473710 @default.
- W4321372970 cites W2000761800 @default.
- W4321372970 cites W2018582729 @default.
- W4321372970 cites W2019149655 @default.
- W4321372970 cites W2027268992 @default.
- W4321372970 cites W2044706736 @default.
- W4321372970 cites W2054101206 @default.
- W4321372970 cites W2057494658 @default.
- W4321372970 cites W2059051712 @default.
- W4321372970 cites W2059374962 @default.
- W4321372970 cites W2061767560 @default.
- W4321372970 cites W2069717511 @default.
- W4321372970 cites W2076415425 @default.
- W4321372970 cites W2076811884 @default.
- W4321372970 cites W2077868838 @default.
- W4321372970 cites W2085994372 @default.
- W4321372970 cites W2086478102 @default.
- W4321372970 cites W2100495367 @default.
- W4321372970 cites W2103126044 @default.
- W4321372970 cites W2114284357 @default.
- W4321372970 cites W2136772022 @default.
- W4321372970 cites W2145210804 @default.
- W4321372970 cites W2162975707 @default.
- W4321372970 cites W2181618177 @default.
- W4321372970 cites W2565516711 @default.
- W4321372970 cites W2590525140 @default.
- W4321372970 cites W2732730546 @default.
- W4321372970 cites W2783657687 @default.
- W4321372970 cites W2790414981 @default.
- W4321372970 cites W2808077251 @default.
- W4321372970 cites W2889474332 @default.
- W4321372970 cites W2896143442 @default.
- W4321372970 cites W2907908391 @default.
- W4321372970 cites W2910556901 @default.
- W4321372970 cites W2969333329 @default.
- W4321372970 cites W2972066617 @default.
- W4321372970 cites W2999260134 @default.
- W4321372970 cites W3001457794 @default.
- W4321372970 cites W3011059836 @default.
- W4321372970 cites W3012372747 @default.
- W4321372970 cites W3012807134 @default.
- W4321372970 cites W3028038362 @default.
- W4321372970 cites W3033616466 @default.
- W4321372970 cites W3049061343 @default.
- W4321372970 cites W3049767776 @default.
- W4321372970 cites W3082665562 @default.
- W4321372970 cites W3083549052 @default.
- W4321372970 cites W3094503780 @default.
- W4321372970 cites W3116814496 @default.
- W4321372970 cites W3186478962 @default.
- W4321372970 cites W3198390608 @default.
- W4321372970 cites W4200624155 @default.
- W4321372970 cites W4221006191 @default.
- W4321372970 cites W4226027861 @default.
- W4321372970 cites W4280548161 @default.
- W4321372970 cites W4281738326 @default.
- W4321372970 cites W4281753763 @default.
- W4321372970 cites W4281945245 @default.
- W4321372970 cites W4283026304 @default.
- W4321372970 cites W4308118386 @default.
- W4321372970 cites W4308206659 @default.
- W4321372970 cites W4308873208 @default.
- W4321372970 cites W4310671728 @default.
- W4321372970 cites W4311387501 @default.
- W4321372970 doi "https://doi.org/10.3390/sym15020545" @default.
- W4321372970 hasPublicationYear "2023" @default.
- W4321372970 type Work @default.
- W4321372970 citedByCount "6" @default.
- W4321372970 countsByYear W43213729702023 @default.
- W4321372970 crossrefType "journal-article" @default.
- W4321372970 hasAuthorship W4321372970A5004350213 @default.
- W4321372970 hasAuthorship W4321372970A5012007672 @default.
- W4321372970 hasAuthorship W4321372970A5053458745 @default.
- W4321372970 hasAuthorship W4321372970A5055377958 @default.
- W4321372970 hasAuthorship W4321372970A5059647743 @default.
- W4321372970 hasAuthorship W4321372970A5078433539 @default.
- W4321372970 hasBestOaLocation W43213729701 @default.
- W4321372970 hasConcept C104779481 @default.
- W4321372970 hasConcept C127413603 @default.
- W4321372970 hasConcept C13355873 @default.