
Mingming Song
助理教授(长聘体系)
Supervisor of Master's Candidates
E-Mail:
Administrative Position: Assistant Professor
Education Level: Doctor′s Degree graduated
Degree: Doctor of Philosophy
Professional Title: 助理教授(长聘体系)
Academic Titles: 特聘研究员、助理教授、硕导
Alma Mater: Tufts University
Discipline:
Civil and Hydraulic Engineering
Bridge and Tunnel Engineering
Scientific Research
Research Field
My research interests include structural health monitoring, digital twin, Bayesian inference, deep learning, and hybrid modeling.
1. Digital twin
Building digital twins for large-span bridges and wind turbines based on Bayesian model updating, Bayesian filtering, and hybrid modeling, for damage identification, input load (wind loads, traffic loads, etc.) estimation, and structural response prediction.
2. Physics and Data-driven hybrid modeling
Integrating physics-based modeling techniques (finite element models, ordinary/partial differential equations, state-space models, etc.) and data-driven modeling methods (supervised learning, unsupervised learning, reinforcement learning, and adversarial learning, etc.) to build hybrid models and improve prediction accuracy, generalizability and interpretability.
3. Bayesian system identification
Applying Bayesian inference and Hierarchical Bayesian method for modal identification, model updating, data fusion, and uncertainty quantification; Developing Bayesian filtering and smoothing methods, including Kalman filter, nonlinear Bayesian filter, general Gaussian filter, partial filter, and RTS smoother, to accurately identify structural parameters, input loads and system states.