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149280

ARTIFICIAL NEURAL NETWORK FOR PREDICTION AND CONTROL OF BLASTING VIBRATIONS IN ASSIUT LIMESTONE QUARRY-EGYPT

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Last updated: 26 Dec 2024

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Abstract

ABSTRACT:
The prediction of ground vibration remains a challenging problem for mines, quarries and
construction sites. Many numbers of predictor equations have been proposed by various researchers all
over the world to predict ground vibration prior to blasting. Till now, it is difficult to recommend any one
general predictor for all blasting conditions because ground vibration is influenced by a number of
parameters. These parameters are either controllable or non-controllable like blast geometry, explosive
types, rock strength properties, geological conditions, and etc. In the this paper, an attempt has been
made to predict the ground vibration using an Artificial Neural Network models (ANN) by single, two,
and large number inputs of blasting parameters, which have an effect on the ground vibration.
Comparison between neural net work models to each other and also to conventional statistical
regression models has been done. It has been found that, the prediction is better by increasing the
variable inputs of neural network and it is much more accurate than empirical statistical regression
model.  

DOI

10.21608/auber.2010.149280

Volume

13.2

Article Issue

13.2

Related Issue

21953

Issue Date

2010-10-01

Receive Date

2010-10-01

Publish Date

2010-10-01

Page Start

13

Page End

25

Print ISSN

1110-6107

Online ISSN

2735-3559

Link

https://auber.journals.ekb.eg/article_149280.html

Detail API

https://auber.journals.ekb.eg/service?article_code=149280

Order

2

Type

Original Article

Type Code

1,354

Publication Type

Journal

Publication Title

Assiut University Bulletin for Environmental Researches

Publication Link

https://auber.journals.ekb.eg/

MainTitle

ARTIFICIAL NEURAL NETWORK FOR PREDICTION AND CONTROL OF BLASTING VIBRATIONS IN ASSIUT LIMESTONE QUARRY-EGYPT

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Type

Article

Created At

23 Jan 2023