Analysis for full face mechanical behaviors through spatial deduction
model with real-time monitoring data
- URL: http://arxiv.org/abs/2109.13167v1
- Date: Mon, 27 Sep 2021 16:28:21 GMT
- Title: Analysis for full face mechanical behaviors through spatial deduction
model with real-time monitoring data
- Authors: Xuyan Tan, Yuhang Wang, Bowen Du, Junchen Ye, Weizhong Chen, Leilei
Sun and Liping Li
- Abstract summary: The spatial tunnel structure is divided into many parts and reconstructed in a form of matrix.
The external load applied on structure in the field was considered to study the mechanical behaviors of tunnel.
A double-driven model was developed to obtain the full-faced information.
- Score: 21.131001656350712
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Mechanical analysis for the full face of tunnel structure is crucial to
maintain stability, which is a challenge in classical analytical solutions and
data analysis. Along this line, this study aims to develop a spatial deduction
model to obtain the full-faced mechanical behaviors through integrating
mechanical properties into pure data-driven model. The spatial tunnel structure
is divided into many parts and reconstructed in a form of matrix. Then, the
external load applied on structure in the field was considered to study the
mechanical behaviors of tunnel. Based on the limited observed monitoring data
in matrix and mechanical analysis results, a double-driven model was developed
to obtain the full-faced information, in which the data-driven model was the
dominant one and the mechanical constraint was the secondary one. To verify the
presented spatial deduction model, cross-test was conducted through assuming
partial monitoring data are unknown and regarding them as testing points. The
well agreement between deduction results with actual monitoring results means
the proposed model is reasonable. Therefore, it was employed to deduct both the
current and historical performance of tunnel full face, which is crucial to
prevent structural disasters.
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