A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining

The height of the water-flow fracture zone (WFZ) is an important reference for designing the size of a waterproof crown pillar. Once the WFZ is connected with the sea, there will be catastrophic consequences, especially for undersea mining. This study suggests using a rotating forest (RoF) model to...

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Main Authors: Bing Dai, Ying Chen
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/3/358
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spelling doaj-3e0a98a238324a5bbe0d125d698f989b2020-11-25T01:42:27ZengMDPI AGRemote Sensing2072-42922020-01-0112335810.3390/rs12030358rs12030358A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety MiningBing Dai0Ying Chen1School of resources environment and safety engineering, University of South China, Hengyang 421000, ChinaSchool of resources environment and safety engineering, University of South China, Hengyang 421000, ChinaThe height of the water-flow fracture zone (WFZ) is an important reference for designing the size of a waterproof crown pillar. Once the WFZ is connected with the sea, there will be catastrophic consequences, especially for undersea mining. This study suggests using a rotating forest (RoF) model to predict the height of the WFZ for the evaluation of the size of a waterproof crown pillar. To train and test the RoF model, five indicators with major influencing factors on undersea safety mining were determined, 107 field-measured mining datasets were collected, 75 (70%) datasets were used for training, and 32 (30%) datasets were used for model testing. At the same time, the random forest ensemble algorithm (RFR) and support vector machine (SVM) models were introduced for comparison and verification; in the end, the tested results were evaluated by RMSE (root-mean-square error) and R<sup>2</sup>. The comparison shows that the predicted results from the RoF model are significantly better than those from the RFR and SVM models. An importance analysis of the impact indicators shows that the mining height and depth have significant impacts on the prediction results. The development height of the WFZ in undersea safety mining was predicted via the RoF model. The predicted results via the RoF model were verified by field observations using panoramic borehole televiewers. The RoF prediction results are consistent with the observation results at all depths. Compared with the other two models, the RoF model has the smallest average absolute error at 2.87%. The results show that the RoF model can be applied to predict the height of the WFZ in undersea mining, which could be an effective way of minimizing the mineral resource waste in the study area and in other similar areas in the world under the premise of mine safety.https://www.mdpi.com/2072-4292/12/3/358machine learningthe water-flow fracture zoneundersea miningthe rotation forest ensemble algorithmthe random forest ensemble algorithmthe svm
collection DOAJ
language English
format Article
sources DOAJ
author Bing Dai
Ying Chen
spellingShingle Bing Dai
Ying Chen
A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
Remote Sensing
machine learning
the water-flow fracture zone
undersea mining
the rotation forest ensemble algorithm
the random forest ensemble algorithm
the svm
author_facet Bing Dai
Ying Chen
author_sort Bing Dai
title A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
title_short A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
title_full A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
title_fullStr A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
title_full_unstemmed A Novel Approach for Predicting the Height of the Water-Flow Fracture Zone in Undersea Safety Mining
title_sort novel approach for predicting the height of the water-flow fracture zone in undersea safety mining
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-01-01
description The height of the water-flow fracture zone (WFZ) is an important reference for designing the size of a waterproof crown pillar. Once the WFZ is connected with the sea, there will be catastrophic consequences, especially for undersea mining. This study suggests using a rotating forest (RoF) model to predict the height of the WFZ for the evaluation of the size of a waterproof crown pillar. To train and test the RoF model, five indicators with major influencing factors on undersea safety mining were determined, 107 field-measured mining datasets were collected, 75 (70%) datasets were used for training, and 32 (30%) datasets were used for model testing. At the same time, the random forest ensemble algorithm (RFR) and support vector machine (SVM) models were introduced for comparison and verification; in the end, the tested results were evaluated by RMSE (root-mean-square error) and R<sup>2</sup>. The comparison shows that the predicted results from the RoF model are significantly better than those from the RFR and SVM models. An importance analysis of the impact indicators shows that the mining height and depth have significant impacts on the prediction results. The development height of the WFZ in undersea safety mining was predicted via the RoF model. The predicted results via the RoF model were verified by field observations using panoramic borehole televiewers. The RoF prediction results are consistent with the observation results at all depths. Compared with the other two models, the RoF model has the smallest average absolute error at 2.87%. The results show that the RoF model can be applied to predict the height of the WFZ in undersea mining, which could be an effective way of minimizing the mineral resource waste in the study area and in other similar areas in the world under the premise of mine safety.
topic machine learning
the water-flow fracture zone
undersea mining
the rotation forest ensemble algorithm
the random forest ensemble algorithm
the svm
url https://www.mdpi.com/2072-4292/12/3/358
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