Tunnel condition assessment via cloud model‐based random forests and self‐training approach

Volume: 36, Issue: 2, Pages: 164 - 179
Published: Aug 11, 2020
Abstract
To proactively assess the losses caused by the deterioration of metro tunnels during the operational period, a new method, the cloud model‐based random forests (CRFs), is proposed to discuss the inconsistencies induced by mapping the monitoring data into the health rate of the metro tunnels. On top of the CRF, a self‐training framework is introduced to improve the predictive accuracy and the stability of the CRF by adding more unlabeled data....
Paper Details
Title
Tunnel condition assessment via cloud model‐based random forests and self‐training approach
Published Date
Aug 11, 2020
Volume
36
Issue
2
Pages
164 - 179
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