Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine

Dynamic building foundation settlement subsidence threatens urban businesses and residential communities. In the temporal domain, building foundation settlement is often dynamic and requires real-time monitoring. Accurate quantification of the uncertainty of foundation settlement in the near future...

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Main Authors: Jiahao Deng, Ting Zeng, Shuang Yuan, Honghui Fan, Wei Xiang
Format: Article
Language:English
Published: Frontiers Media S.A. 2022-07-01
Series:Frontiers in Earth Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/feart.2022.939772/full
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author Jiahao Deng
Ting Zeng
Shuang Yuan
Honghui Fan
Wei Xiang
author_facet Jiahao Deng
Ting Zeng
Shuang Yuan
Honghui Fan
Wei Xiang
author_sort Jiahao Deng
collection DOAJ
description Dynamic building foundation settlement subsidence threatens urban businesses and residential communities. In the temporal domain, building foundation settlement is often dynamic and requires real-time monitoring. Accurate quantification of the uncertainty of foundation settlement in the near future is essential to advanced risk management for buildings. Traditional models for predicting foundation settlement mostly utilize the point estimates approach, which provides a single value that can be close or distant from the actual one. However, such an estimation fails to quantify estimation uncertainties. The interval prediction, as an alternative, can provide a prediction interval for the ground settlement with high confidence bands. This study, proposes a lower upper bound estimation approach integrated with a kernel extreme learning machine to predict ground settlement levels with prediction intervals in the temporal domain. A revised objective function is proposed to further improve the interval prediction performance. In this study, the proposed method is compared to the artificial neural network and classical extreme learning machine. Building settlement data collected from Fuxing City, Liaoning Province in China was used to validate the proposed approach. The comparative results show that the proposed approach can construct superior prediction intervals for foundation settlement.
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spelling doaj.art-eb467212bdb4495d9710a86bc65bea3d2022-12-22T03:37:57ZengFrontiers Media S.A.Frontiers in Earth Science2296-64632022-07-011010.3389/feart.2022.939772939772Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning MachineJiahao Deng0Ting Zeng1Shuang Yuan2Honghui Fan3Wei Xiang4College of Computing and Digital Media, DePaul University, Chicago, IL, United StatesScience and Technology for Development Research Center of Sichuan Province, Chengdu, ChinaState Key Laboratory of Geo-Hazard Prevention and Geo-Environment Protection, Chengdu University of Technology, Chengdu, ChinaDepartment of Plant Engineering, Sichuan College of Architectural Technology, Deyang, ChinaDepartment of Plant Engineering, Sichuan College of Architectural Technology, Deyang, ChinaDynamic building foundation settlement subsidence threatens urban businesses and residential communities. In the temporal domain, building foundation settlement is often dynamic and requires real-time monitoring. Accurate quantification of the uncertainty of foundation settlement in the near future is essential to advanced risk management for buildings. Traditional models for predicting foundation settlement mostly utilize the point estimates approach, which provides a single value that can be close or distant from the actual one. However, such an estimation fails to quantify estimation uncertainties. The interval prediction, as an alternative, can provide a prediction interval for the ground settlement with high confidence bands. This study, proposes a lower upper bound estimation approach integrated with a kernel extreme learning machine to predict ground settlement levels with prediction intervals in the temporal domain. A revised objective function is proposed to further improve the interval prediction performance. In this study, the proposed method is compared to the artificial neural network and classical extreme learning machine. Building settlement data collected from Fuxing City, Liaoning Province in China was used to validate the proposed approach. The comparative results show that the proposed approach can construct superior prediction intervals for foundation settlement.https://www.frontiersin.org/articles/10.3389/feart.2022.939772/fullfoundation settlementtime-series analysisprediction intervalkernel based extreme learning machinelube
spellingShingle Jiahao Deng
Ting Zeng
Shuang Yuan
Honghui Fan
Wei Xiang
Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
Frontiers in Earth Science
foundation settlement
time-series analysis
prediction interval
kernel based extreme learning machine
lube
title Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
title_full Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
title_fullStr Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
title_full_unstemmed Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
title_short Interval Prediction of Building Foundation Settlement Using Kernel Extreme Learning Machine
title_sort interval prediction of building foundation settlement using kernel extreme learning machine
topic foundation settlement
time-series analysis
prediction interval
kernel based extreme learning machine
lube
url https://www.frontiersin.org/articles/10.3389/feart.2022.939772/full
work_keys_str_mv AT jiahaodeng intervalpredictionofbuildingfoundationsettlementusingkernelextremelearningmachine
AT tingzeng intervalpredictionofbuildingfoundationsettlementusingkernelextremelearningmachine
AT shuangyuan intervalpredictionofbuildingfoundationsettlementusingkernelextremelearningmachine
AT honghuifan intervalpredictionofbuildingfoundationsettlementusingkernelextremelearningmachine
AT weixiang intervalpredictionofbuildingfoundationsettlementusingkernelextremelearningmachine