Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine

Blasting is currently the most important method for rock fragmentation in metal mines. However, blast-induced ground vibration causes many negative effects, including great damage to surrounding rock masses and projects and even casualties in severe cases. Therefore, prediction of the peak particle...

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Main Authors: Shida Xu, Tianxiao Chen, Jiaqi Liu, Chenrui Zhang, Zhiyang Chen
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Shock and Vibration
Online Access:http://dx.doi.org/10.1155/2021/9949858
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spelling doaj-c58538418df241d396a285d9abfbcbdf2021-06-21T02:25:22ZengHindawi LimitedShock and Vibration1875-92032021-01-01202110.1155/2021/9949858Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper MineShida Xu0Tianxiao Chen1Jiaqi Liu2Chenrui Zhang3Zhiyang Chen4Key Laboratory of Ministry of Education on Safe Mining of Deep Metal MinesKey Laboratory of Ministry of Education on Safe Mining of Deep Metal MinesKey Laboratory of Ministry of Education on Safe Mining of Deep Metal MinesKey Laboratory of Ministry of Education on Safe Mining of Deep Metal MinesKey Laboratory of Ministry of Education on Safe Mining of Deep Metal MinesBlasting is currently the most important method for rock fragmentation in metal mines. However, blast-induced ground vibration causes many negative effects, including great damage to surrounding rock masses and projects and even casualties in severe cases. Therefore, prediction of the peak particle velocity (PPV) caused by blasting plays an important role in reducing safety threats. In this paper, a genetic algorithm (GA) and an artificial neural network (ANN) algorithm were jointly used to construct a neural network model with a 4-5-1 topology to predict the PPV. For this model, the ANN parameters were optimized using the GA, and the deviating direction, horizontal distance, vertical distance, Euclidean distance, explosive type, burden, hole spacing, and maximum charge per delay were used as input information. Moreover, principal component analysis (PCA) was used to extract the first four principal components from the eight input factors as the four inputs of the ANN model. The model was successfully applied to protect an underground crushing cave from blasting vibration damage by adjusting the blasting parameters. Compared with several widely used empirical equations, the GA-ANN PPV prediction model produced significantly better results, while the Ambraseys–Hedron method was the best of the empirical methods. Therefore, the improved GA-ANN model can be used to predict the PPV on site and provide a reference for the control of blasting vibration in field production.http://dx.doi.org/10.1155/2021/9949858
collection DOAJ
language English
format Article
sources DOAJ
author Shida Xu
Tianxiao Chen
Jiaqi Liu
Chenrui Zhang
Zhiyang Chen
spellingShingle Shida Xu
Tianxiao Chen
Jiaqi Liu
Chenrui Zhang
Zhiyang Chen
Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
Shock and Vibration
author_facet Shida Xu
Tianxiao Chen
Jiaqi Liu
Chenrui Zhang
Zhiyang Chen
author_sort Shida Xu
title Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
title_short Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
title_full Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
title_fullStr Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
title_full_unstemmed Blasting Vibration Control Using an Improved Artificial Neural Network in the Ashele Copper Mine
title_sort blasting vibration control using an improved artificial neural network in the ashele copper mine
publisher Hindawi Limited
series Shock and Vibration
issn 1875-9203
publishDate 2021-01-01
description Blasting is currently the most important method for rock fragmentation in metal mines. However, blast-induced ground vibration causes many negative effects, including great damage to surrounding rock masses and projects and even casualties in severe cases. Therefore, prediction of the peak particle velocity (PPV) caused by blasting plays an important role in reducing safety threats. In this paper, a genetic algorithm (GA) and an artificial neural network (ANN) algorithm were jointly used to construct a neural network model with a 4-5-1 topology to predict the PPV. For this model, the ANN parameters were optimized using the GA, and the deviating direction, horizontal distance, vertical distance, Euclidean distance, explosive type, burden, hole spacing, and maximum charge per delay were used as input information. Moreover, principal component analysis (PCA) was used to extract the first four principal components from the eight input factors as the four inputs of the ANN model. The model was successfully applied to protect an underground crushing cave from blasting vibration damage by adjusting the blasting parameters. Compared with several widely used empirical equations, the GA-ANN PPV prediction model produced significantly better results, while the Ambraseys–Hedron method was the best of the empirical methods. Therefore, the improved GA-ANN model can be used to predict the PPV on site and provide a reference for the control of blasting vibration in field production.
url http://dx.doi.org/10.1155/2021/9949858
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