A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM

Deformation is a comprehensive reflection of the structural state of a concrete dam, and research on prediction models for concrete dam deformation provides the basis for safety monitoring and early warning strategies. This paper focuses on practical problems such as multicollinearity among factors;...

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Main Authors: Xudong Qu, Jie Yang, Meng Chang
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:Journal of Sensors
Online Access:http://dx.doi.org/10.1155/2019/4581672
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spelling doaj-b4f5fe0e272a429fa54af72ff66d6f012020-11-25T01:34:37ZengHindawi LimitedJournal of Sensors1687-725X1687-72682019-01-01201910.1155/2019/45816724581672A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTMXudong Qu0Jie Yang1Meng Chang2Institute of Water Resources and Hydro-Electric Engineering, Xi’an University of Technology, Xi’an 710048, ChinaInstitute of Water Resources and Hydro-Electric Engineering, Xi’an University of Technology, Xi’an 710048, ChinaDepartment of Development, Sino Hydro Engineering Bureau 15 Co., Ltd, Xi’an 710016, ChinaDeformation is a comprehensive reflection of the structural state of a concrete dam, and research on prediction models for concrete dam deformation provides the basis for safety monitoring and early warning strategies. This paper focuses on practical problems such as multicollinearity among factors; the subjectivity of factor selection; robustness, externality, generalization, and integrity deficiencies; and the unsoundness of evaluation systems for prediction models. Based on rough set (RS) theory and a long short-term memory (LSTM) network, single-point and multipoint concrete dam deformation prediction models for health monitoring based on RS-LSTM are studied. Moreover, a new prediction model evaluation system is proposed, and the model accuracy, robustness, externality, and generalization are defined as quantitative evaluation indexes. An engineering project shows that the concrete dam deformation prediction models based on RS-LSTM can quantitatively obtain the representative factors that affect dam deformation and the importance of each factor relative to the effect. The accuracy evaluation index (AVI), robustness evaluation index (RVI), externality evaluation index (EVI), and generalization evaluation index (GVI) of the model are superior to the evaluation indexes of existing shallow neural network models and statistical models according to the new evaluation system, which can estimate the comprehensive performance of prediction models. The prediction model for concrete dam deformation based on RS-LSTM optimizes the factors that influence the model, quantitatively determines the importance of each factor, and provides high-performance, synchronous, and dynamic predictions for concrete dam behaviours; therefore, the model has strong engineering practicality.http://dx.doi.org/10.1155/2019/4581672
collection DOAJ
language English
format Article
sources DOAJ
author Xudong Qu
Jie Yang
Meng Chang
spellingShingle Xudong Qu
Jie Yang
Meng Chang
A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
Journal of Sensors
author_facet Xudong Qu
Jie Yang
Meng Chang
author_sort Xudong Qu
title A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
title_short A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
title_full A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
title_fullStr A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
title_full_unstemmed A Deep Learning Model for Concrete Dam Deformation Prediction Based on RS-LSTM
title_sort deep learning model for concrete dam deformation prediction based on rs-lstm
publisher Hindawi Limited
series Journal of Sensors
issn 1687-725X
1687-7268
publishDate 2019-01-01
description Deformation is a comprehensive reflection of the structural state of a concrete dam, and research on prediction models for concrete dam deformation provides the basis for safety monitoring and early warning strategies. This paper focuses on practical problems such as multicollinearity among factors; the subjectivity of factor selection; robustness, externality, generalization, and integrity deficiencies; and the unsoundness of evaluation systems for prediction models. Based on rough set (RS) theory and a long short-term memory (LSTM) network, single-point and multipoint concrete dam deformation prediction models for health monitoring based on RS-LSTM are studied. Moreover, a new prediction model evaluation system is proposed, and the model accuracy, robustness, externality, and generalization are defined as quantitative evaluation indexes. An engineering project shows that the concrete dam deformation prediction models based on RS-LSTM can quantitatively obtain the representative factors that affect dam deformation and the importance of each factor relative to the effect. The accuracy evaluation index (AVI), robustness evaluation index (RVI), externality evaluation index (EVI), and generalization evaluation index (GVI) of the model are superior to the evaluation indexes of existing shallow neural network models and statistical models according to the new evaluation system, which can estimate the comprehensive performance of prediction models. The prediction model for concrete dam deformation based on RS-LSTM optimizes the factors that influence the model, quantitatively determines the importance of each factor, and provides high-performance, synchronous, and dynamic predictions for concrete dam behaviours; therefore, the model has strong engineering practicality.
url http://dx.doi.org/10.1155/2019/4581672
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