Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms

The majority of natural ground vibrations are caused by the release of strain energy accumulated in the rock strata. The strain reacts to the formation of crack patterns and rock stratum failure. Rock strain prediction is one of the significant works for the assessment of the failure of rock materia...

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Published in:Infrastructures
Main Authors: T. Pradeep, Abidhan Bardhan, Avijit Burman, Pijush Samui
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Subjects:
Online Access:https://www.mdpi.com/2412-3811/6/9/129
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author T. Pradeep
Abidhan Bardhan
Avijit Burman
Pijush Samui
author_facet T. Pradeep
Abidhan Bardhan
Avijit Burman
Pijush Samui
author_sort T. Pradeep
collection DOAJ
container_title Infrastructures
description The majority of natural ground vibrations are caused by the release of strain energy accumulated in the rock strata. The strain reacts to the formation of crack patterns and rock stratum failure. Rock strain prediction is one of the significant works for the assessment of the failure of rock material. The purpose of this paper is to investigate the development of a new strain prediction approach in rock samples utilizing deep neural network (DNN) and hybrid ANFIS (adaptive neuro-fuzzy inference system) models. Four optimization algorithms, namely particle swarm optimization (PSO), Fireflies algorithm (FF), genetic algorithm (GA), and grey wolf optimizer (GWO), were used to optimize the learning parameters of ANFIS and ANFIS-PSO, ANFIS-FF, ANFIS-GA, and ANFIS-GWO were constructed. For this purpose, the necessary datasets were obtained from an experimental setup of an unconfined compression test of rocks in lateral and longitudinal directions. Various statistical parameters were used to investigate the accuracy of the proposed prediction models. In addition, rank analysis was performed to select the most robust model for accurate rock sample prediction. Based on the experimental results, the constructed DNN is very potential to be a new alternative to assist engineers to estimate the rock strain in the design phase of many engineering projects.
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spelling doaj-art-e7c5096f650244d09f6e43a2df50cbb22025-08-20T00:17:21ZengMDPI AGInfrastructures2412-38112021-09-016912910.3390/infrastructures6090129Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization AlgorithmsT. Pradeep0Abidhan Bardhan1Avijit Burman2Pijush Samui3Civil Engineering Department, National Institute of Technology (NIT) Patna, Patna 800 005, IndiaCivil Engineering Department, National Institute of Technology (NIT) Patna, Patna 800 005, IndiaCivil Engineering Department, National Institute of Technology (NIT) Patna, Patna 800 005, IndiaCivil Engineering Department, National Institute of Technology (NIT) Patna, Patna 800 005, IndiaThe majority of natural ground vibrations are caused by the release of strain energy accumulated in the rock strata. The strain reacts to the formation of crack patterns and rock stratum failure. Rock strain prediction is one of the significant works for the assessment of the failure of rock material. The purpose of this paper is to investigate the development of a new strain prediction approach in rock samples utilizing deep neural network (DNN) and hybrid ANFIS (adaptive neuro-fuzzy inference system) models. Four optimization algorithms, namely particle swarm optimization (PSO), Fireflies algorithm (FF), genetic algorithm (GA), and grey wolf optimizer (GWO), were used to optimize the learning parameters of ANFIS and ANFIS-PSO, ANFIS-FF, ANFIS-GA, and ANFIS-GWO were constructed. For this purpose, the necessary datasets were obtained from an experimental setup of an unconfined compression test of rocks in lateral and longitudinal directions. Various statistical parameters were used to investigate the accuracy of the proposed prediction models. In addition, rank analysis was performed to select the most robust model for accurate rock sample prediction. Based on the experimental results, the constructed DNN is very potential to be a new alternative to assist engineers to estimate the rock strain in the design phase of many engineering projects.https://www.mdpi.com/2412-3811/6/9/129rock straindeep neural networkparticle swarm optimizationANFISrank analysis
spellingShingle T. Pradeep
Abidhan Bardhan
Avijit Burman
Pijush Samui
Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
rock strain
deep neural network
particle swarm optimization
ANFIS
rank analysis
title Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
title_full Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
title_fullStr Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
title_full_unstemmed Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
title_short Rock Strain Prediction Using Deep Neural Network and Hybrid Models of ANFIS and Meta-Heuristic Optimization Algorithms
title_sort rock strain prediction using deep neural network and hybrid models of anfis and meta heuristic optimization algorithms
topic rock strain
deep neural network
particle swarm optimization
ANFIS
rank analysis
url https://www.mdpi.com/2412-3811/6/9/129
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AT avijitburman rockstrainpredictionusingdeepneuralnetworkandhybridmodelsofanfisandmetaheuristicoptimizationalgorithms
AT pijushsamui rockstrainpredictionusingdeepneuralnetworkandhybridmodelsofanfisandmetaheuristicoptimizationalgorithms