Research on intelligent semi-active control algorithms and seismic reliability based on machine learning

Author:

Xiao Zhongyuan1,Xu Jianguo1,Wang Li1,Huang Liang1

Affiliation:

1. Zhengzhou University

Abstract

Abstract

Aiming to address the shortcomings of existing semi-active control algorithms with poor robustness and the limited generalization ability of current evaluation methods based on deterministic analysis, a novel approach based on probability density evolution is proposed. This method is designed to assess the seismic reliability, enabling a more comprehensive evaluation of the control effectiveness of aqueduct structures. Building upon this, an intelligent semi-active control algorithm leveraging machine learning is introduced. The algorithm is further validated through engineering case studies to investigate semi-active control strategies in response to random seismic events. The results show that the seismic reliability of the machine learning-based semi-active control algorithm is significantly higher than that of the uncontrolled state for the same failure threshold under random seismic effects.

Publisher

Research Square Platform LLC

Reference28 articles.

1. Physical synthesis method for global reliability analysis of engineering structures;Zhou H;Mechanical Systems and Signal Processing,2020

2. Wang, Q., Wang, J., Huang, X., & Zhang, L. (2017). Semiactive nonsmooth control for building structure with deep learning. Complexity, 2017.

3. Application of automotive semi-active air suspension in machine learning under soft and hard road surfaces[J];Xu S;Journal of Southeast University(English Edition),2022

4. Stochastic seismic lateral deformation of a multi-story subway station structure based on the probability density evolution method;Chen ZY;Tunnelling and Underground Space Technology,2019

5. Seismic reliability analysis of random parameter aqueduct structure under random earthquake;Zhang C;Soil Dynamics and Earthquake Engineering,2022

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