Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage
Lang Liu
; Energy School, Xi'an University of Science and Technology, NO. 58 Yanta Road, 740054 Xi’an, P. R. China
Xinping Lai
; Energy School, Xi'an University of Science and Technology, NO. 58 Yanta Road, 740054 Xi’an, P. R. China
Ki-Il Song
; Department of Civil Engineering, Inha University, 100 Inha-ro, 402-751 Incheon, South Korea
Dezheng Lao
; School of Civil & Resource Engineering, University of Western Australia, NO. 35 Stirling Highway, 6009 WA, Australia
APA 6th Edition Liu, L., Lai, X., Song, K. i Lao, D. (2015). Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage. Tehnički vjesnik, 22 (3), 743-753. https://doi.org/10.17559/TV-20150213085300
MLA 8th Edition Liu, Lang, et al. "Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage." Tehnički vjesnik, vol. 22, br. 3, 2015, str. 743-753. https://doi.org/10.17559/TV-20150213085300. Citirano 03.03.2021.
Chicago 17th Edition Liu, Lang, Xinping Lai, Ki-Il Song i Dezheng Lao. "Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage." Tehnički vjesnik 22, br. 3 (2015): 743-753. https://doi.org/10.17559/TV-20150213085300
Harvard Liu, L., et al. (2015). 'Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage', Tehnički vjesnik, 22(3), str. 743-753. https://doi.org/10.17559/TV-20150213085300
Vancouver Liu L, Lai X, Song K, Lao D. Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage. Tehnički vjesnik [Internet]. 2015 [pristupljeno 03.03.2021.];22(3):743-753. https://doi.org/10.17559/TV-20150213085300
IEEE L. Liu, X. Lai, K. Song i D. Lao, "Intelligent prediction model based on genetic algorithm and support vector machine for evaluation of mining-induced building damage", Tehnički vjesnik, vol.22, br. 3, str. 743-753, 2015. [Online]. https://doi.org/10.17559/TV-20150213085300
APA 6th Edition Liu, L., Lai, X., Song, K. i Lao, D. (2015). Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem. Tehnički vjesnik, 22 (3), 743-753. https://doi.org/10.17559/TV-20150213085300
MLA 8th Edition Liu, Lang, et al. "Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem." Tehnički vjesnik, vol. 22, br. 3, 2015, str. 743-753. https://doi.org/10.17559/TV-20150213085300. Citirano 03.03.2021.
Chicago 17th Edition Liu, Lang, Xinping Lai, Ki-Il Song i Dezheng Lao. "Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem." Tehnički vjesnik 22, br. 3 (2015): 743-753. https://doi.org/10.17559/TV-20150213085300
Harvard Liu, L., et al. (2015). 'Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem', Tehnički vjesnik, 22(3), str. 743-753. https://doi.org/10.17559/TV-20150213085300
Vancouver Liu L, Lai X, Song K, Lao D. Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem. Tehnički vjesnik [Internet]. 2015 [pristupljeno 03.03.2021.];22(3):743-753. https://doi.org/10.17559/TV-20150213085300
IEEE L. Liu, X. Lai, K. Song i D. Lao, "Inteligentni model temeljen na genetskom algoritmu i potpornom vectorskom stroju za predviđanje i procjenu štete na zgradama nastale podzemnim iskpanjem", Tehnički vjesnik, vol.22, br. 3, str. 743-753, 2015. [Online]. https://doi.org/10.17559/TV-20150213085300
Sažetak Characteristics of factors influencing mining-induced building damage are diverse, nonlinear, and multi-linear. For a better description of these factors, an intelligent prediction model for building damage induced by underground mining is developed based on the support vector machine (SVM). Based on a comprehensive consideration of geological, mining, and building factors, 10 factors are carefully selected. In particular, the mining-induced damage grade of the brick-concrete building structure is used as the main input variable in the proposed model. The damage grade and largest crack width of the brick-concrete building structure are selected as output variables in the proposed model. A total of 32 typical cases of mining-induced building damage in China are collected and used as training data. The radial basis function (RBF) is used for SVM classification and the application of the largest-crack-width regression model. To improve the model’s generalizability and predictive capacity, the genetic algorithm (GA) is adopted to select effective parameters for the SVM model, and then the corresponding identification of six group samples is performed. The classification and regression results show that the proposed prediction model using GA-SVM can predict the mining-induced damage of a brick-concrete building structure, and the evaluation results show good agreement with monitored data. This suggests the practicality of the proposed model in a wide range of engineering problems.