A novel combined intelligent algorithm prediction model for the tunnel surface settlement

Author:

Wang You,Dai Fang,Jia Ruxue,Wang Rui,Sharifi Habibullah,Wang Zhenyu

Abstract

AbstractTo ensure the safety and stability of the shield tunnel construction process, the ground settlement induced by the shield construction needs to be effectively predicted. In this paper, a prediction method combining empirical mode decomposition (EMD), chaotic adaptive sparrow search algorithm (CASSA), and extreme learning machine (ELM) is proposed. First, the EMD is used to decompose the settlement sequence into trend vectors and fluctuation vectors to fully extract the effective information of the sequence; Second, the sparrow search algorithm is improved by introducing Cubic chaotic mapping to initialize the population and adaptive factor to optimize the searcher’s position formula, and the chaotic adaptive sparrow search algorithm is proposed; Finally, the CASSA-ELM prediction model is constructed by using CASSA to find the optimal values of weights and thresholds in the extreme learning machine. The fluctuation components and trend components decomposed by EMD are predicted one by one, and the prediction results are superimposed and reconstructed to obtain the predicted final settlement. Taking a shield interval in Jiangsu, China as an example, the meta-heuristic algorithm-optimized ELM model improves the prediction accuracy by 10.70% compared with the traditional ELM model. The combined EMD-CASSA-ELM prediction model can greatly improve the accuracy and speed of surface settlement prediction, and provide a new means for safety monitoring in shield tunnel construction. Intelligent prediction methods can predict surface subsidence more automatically and quickly, becoming a new development trend.

Funder

National Natural Science Foundation of China

China Railway Construction Corporation 2022 Annual Scientific and Technological Research and Development Plan and Funding Subjects

Science and Technology Research and Development Plan of China Railway Corporation in 2020

2022 degrees Guangzhou Metro Design and Research Institute Co.

Science and technology research and development plan topics of China Railway Second Bureau Group Co.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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