A Self-adaptive differential evolutionary extreme learning machine (SaDE-ELM): a novel approach to blast-induced ground vibration prediction

被引:0
作者
Clement Kweku Arthur
Victor Amoako Temeng
Yao Yevenyo Ziggah
机构
[1] University of Mines and Technology,Department of Mining Engineering, Faculty of Mineral Resources Technology
[2] University of Mines and Technology,Department of Geomatic Engineering, Faculty of Mineral Resources Technology
来源
SN Applied Sciences | 2020年 / 2卷
关键词
Extreme learning machine; Ground vibration; Self-adaptive differential evolution; Blasting;
D O I
暂无
中图分类号
学科分类号
摘要
Blast-induced ground vibration is still an adverse impact of blasting in civil and mining engineering projects that need much consideration and attention. This study proposes the use of Self-Adaptive Differential Evolutionary Extreme Learning Machine (SaDE-ELM) for the prediction of ground vibration due to blasting using 210 blasting data points from an open pit mine in Ghana. To ascertain the predictive performance of the proposed SaDE-ELM approach, several artificial intelligence and empirical approaches were developed for comparative purposes. The performances of various developed models were assessed using model performance indicators of mean squared error (MSE), Nash–Sutcliffe Efficiency Index (NSEI) and correlation coefficient (R). Furthermore, the Bayesian Information Criterion (BIC) was applied to select the best performing approach. The obtained prediction results based on the performance indicators showed that the SaDE-ELM outperformed all the competing models as it had the lowest MSE value of 0.01942, respectively. The SaDE-ELM also achieved the highest R and NSEI values of 0.8711 and 0.7537, respectively. The other artificial intelligent approaches had MSE, R and NSEI in the ranges of (0.02166–0.03006), (0.8012–0.8537) and (0.6188–0.7254), respectively. The empirical approaches performed poorly relative to the artificial intelligence approaches by having had MSE, R and NSEI in the ranges of (0.03419–0.06587), (0.7466–0.7833) and (0.1649–0.5665), respectively. The prediction superiority of SaDE-ELM was confirmed when it is achieved the lowest BIC value of − 293.40. Therefore, the proposed SaDE-ELM has demonstrated great potential to be used for on-site prediction, control and management of blast-induced ground vibration to prevent unwanted effects on the environment.
引用
收藏
相关论文
共 159 条
  • [1] Roy PP(1991)vibration control in an opencast mine based on improved blast vibration predictors Min Sci Technol 12 157-165
  • [2] Monjezi M(2016)Modification and prediction of blast-induced ground vibrations based on both empirical and computational techniques Eng Comput 32 717-728
  • [3] Baghestani M(2017)A hybrid artificial bee colony algorithm-artificial neural network for forecasting the blast-produced ground vibration Eng Comput 33 689-700
  • [4] Faradonbeh RS(2020)Multivariate adaptive regression splines (MARS) approach to blast-induced ground vibration prediction Int J Min Reclam Env 34 198-222
  • [5] Saghand MP(2013)Development of a fuzzy model for predicting ground vibration caused by rock blasting in surface mining J Vib Control 19 755-770
  • [6] Armaghani DJ(2011)Development of a model to predict peak particle velocity in a blasting operation Int J Rock Mech Min 48 51-58
  • [7] Taheri K(2016)Prediction of ground vibration due to quarry blasting based on gene expression programming: a new model for peak particle velocity prediction Int J Environ Sci Technol 13 1453-1464
  • [8] Hasanipanah M(2017)Forecasting blast-induced ground vibration developing a CART model Eng Comput 33 307-316
  • [9] Golzar SB(2017)A new developed approach for the prediction of ground vibration using a hybrid PSO-optimized ANFIS-based Model Environ Earth Sci 76 527-189
  • [10] Majid MZA(2017)Application of cuckoo search algorithm to estimate peak particle velocity in mine blasting Eng Comput 33 181-851