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International Modal Analysis Conference (2021))

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  • Data science in engineering. = proceedings of the 39th IMAC, a conference and exposition on structural dynamics 2021 /. Volume 9
  • 紀錄類型: 書目-電子資源 : Monograph/item
    正題名/作者: Data science in engineering./ edited by Ramin Madarshahian, Francois Hemez.
    其他題名: proceedings of the 39th IMAC, a conference and exposition on structural dynamics 2021 /
    其他作者: Madarshahian, Ramin.
    團體作者: International Modal Analysis Conference
    出版者: Cham :Springer International Publishing : : 2022.,
    面頁冊數: viii, 291 p. :ill., digital ;24 cm.
    內容註: Chapter 1. Towards a Population-based Structural Health Monitoring, Part V: Networks and Databases -- Chapter 2. Active Learning of Post-Earthquake Structural Damage with Co-Optimal Information Gain and Reconnaissance Cost -- Chapter 3. Uncertainty-Quantified Damage Identification for High-Rate Dynamic Systems -- Chapter 4. Real-time Machine Learning of Vibration Signals -- Chapter 5. Data-Driven Identification of Mistuning in Blisks -- Chapter 6. On Generating Parametrised Structural Data Using Conditional Generative Adversarial Networks -- Chapter 7. Best Paper: On an Application of Graph Neural Networks in Population Based SHM -- Chapter 8. Estimation of Elastic Band Gaps Using Data-Driven Model -- Chapter 9. Damage Localization on Lightweight Structures with Non-Destructive Testing and Machine Learning Techniques -- Chapter 10. Challenges for SHM from Structural Repairs: An Outlier-informed Domain Adaptation Approach -- Chapter 11. On the Application of Heterogeneous Transfer Learning to Population-based Structural Health Monitoring -- Chapter 12. An Unsupervised Deep Auto-Encoder with One-Class Support Vector Machine for Damage Detection -- Chapter 13. Identifying Operations- and Environmental-Insensitive Damage Features -- Chapter 14. Hybrid Concrete Crack Segmentation and Quantification Across Complex Backgrounds without Big Training Dataset -- Chapter 15. Digital Stroboscopy using Event-Driven Imagery -- Chapter 16. Managing System Inspections for Health Monitoring: A Probability of Query Approach -- Chapter 17. Parameter Estimation for Dynamical Systems Under Continuous and Discontinuous Gaussian Noise Using Data Assimilation Techniques -- Chapter 18. Model Reduction of Geometrically Nonlinear Structures via Physics-Informed Autoencoders -- Chapter 19. Techniques to Improve Robustness of Video-Based Sensor Networks -- Chapter 20. Grey-Box Modelling via Gaussian Process Mean Functions for Mechanical Systems -- Chapter 21. On Topological Data Analysis for SHM; An Introduction to Persistent Homology -- Chapter 22. Heteroscedastic Gaussian Processes for Localising Acoustic Emission -- Chapter 23. Transferring Damage Detectors Between Tailplane Experiments -- Chapter 24. High-Rate Structural Health Monitoring and Prognostics: An Overview -- Chapter 25. One Versus All: Best Practices in Combining Multi-Hazard Damage Imagery Training Datasets for Damage Detection for a Deep Learning Neural Network -- Chapter 26. High-Rate Damage Classification and Lifecycle Prediction via Deep Learning -- Chapter 27. A Generalized Technique for Full-field Blind Identification of Travelling Waves and Complex Modes from Video Measurements with Hilbert Transform -- Chapter 28. Privacy-Preserving Structural Dynamics -- Chapter 29. Abnormal Behavior Detection of the Indian River Inlet Bridge through Cross Correlation Analysis of Truck Induced Strains -- Chapter 30. A Video-Based Crack Detection in Concrete Surfaces -- Chapter 31. Bayesian Graph Neural Networks for Strain-Based Crack Localization -- Chapter 32. Routing of Public and Electric Transportation Systems Using Reinforcement Learning -- Chapter 33. Vibration based Damage Detection and Identification in a CFRP Truss with Deep Learning and Finite Element Generated Data -- Chapter 34. Parametric Amplification in a Stochastic Nonlinear Piezoelectric Energy Harvester via Machine Learning.
    Contained By: Springer Nature eBook
    標題: Engineering - Data processing -
    電子資源: https://doi.org/10.1007/978-3-030-76004-5
    ISBN: 9783030760045
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