Journal of Hydroelectric Engineering ›› 2021, Vol. 40 ›› Issue (10): 160-172.doi: 10.11660/slfdxb.20211015
Previous Articles
Online:
Published:
Abstract: Dam deformation behavior is a consequence of long-term interaction of many factors, and its evolution pattern usually involves two dimensions: time and space. However, previous intelligent modeling of dam deformation lacks a comprehensive consideration of time and space variations, and a large amount of spatiotemporal information needs to be further excavated from the prototype observation data. This paper develops a dynamic monitoring model for dam deformation with spatiotemporal coupling correlation characteristics from two view angles: time-series correlation for a single measurement point, and spatial correlation of multiple measurement points. This model takes the gated recurrent unit (GRU) neural networks as core layers to model and learn the inherent time-varying patterns in a historical deformation data series, and constructs the features of spatial variations through iterative extraction of effective deformation factors. It uses a soft attention mechanism to improve the probability weight allocation rule of the GRU hidden states, thus achieving adaptive learning of key information. Its effectiveness is verified in a case study of the Fengman concrete gravity dam. The results show that this monitoring model can accurately simulate the dynamic deformation evolution of a dam, and are more accurate in extrapolation prediction than conventional monitoring models.
Key words: dam deformation monitoring, spatiotemporal correlation characteristics, dynamic modeling and learning, gated recurrent unit neural networks, attention mechanism
REN Qiubing, LI Mingchao, SHEN Yang, LI Minghao. Dynamic monitoring model for dam deformation with spatiotemporal coupling correlation characteristics[J].Journal of Hydroelectric Engineering, 2021, 40(10): 160-172.
0 / / Recommend
Add to citation manager EndNote|Reference Manager|ProCite|BibTeX|RefWorks
URL: http://www.slfdxb.cn/EN/10.11660/slfdxb.20211015
http://www.slfdxb.cn/EN/Y2021/V40/I10/160
Cited