| 紀錄類型: |
書目-電子資源
: Monograph/item
|
| 正題名/作者: |
Multimodal and tensor data analytics for industrial systems improvement/ edited by Nathan Gaw, Panos M. Pardalos, Mostafa Reisi Gahrooei. |
| 其他作者: |
Gaw, Nathan. |
| 出版者: |
Cham :Springer International Publishing : : 2024., |
| 面頁冊數: |
x, 394 p. :ill., digital ;24 cm. |
| 內容註: |
Chapter 1: Introduction to multimodal and tensor data analytics -- Chapter 2: Functional Methods for Multimodal Data Analysis -- Chapter 3: Advanced Data Analytical Techniques for Profile Monitoring -- Chapter 4: Statistical process monitoring methods based on functional data analysis -- Chapter 5: Tensor and multimodal data analysis -- Chapter 6: Tensor Data Analytics in Advanced Manufacturing Processes -- Chapter 7: Spatiotemporal Data Analysis - A Review of Techniques, Applications, and Emerging Challenges -- Chapter 8: Offshore Wind Energy Prediction Using Machine Learning with Multi-Resolution Inputs -- Chapter 9: Sparse Decomposition Methods for Spatio-temporal Anomaly Detection -- Chapter 10: Multimodal Deep Learning -- Chapter 11: Multimodal Deep Learning for Manufacturing Systems: Recent Progress and Future Trends -- Chapter 12: Synergy of Engineering and Statistics: Multimodal data Fusion for Quality Improvement -- Chapter 13: Manufacturing data fusion: a case study with steel rollingprocesses -- Chapter 14: AI-enhanced Fault Detection using Multi-structured Data in Semiconductor Manufacturing -- Chapter 15: A Survey of Advances in Multimodal Federated Learning with Applications -- Chapter 16: Bayesian Multimodal Data Analytics: An introduction -- Chapter 17: Bayesian approach to multimodal data in human factors engineering -- Chapter 18: Bayesian Multimodal Models for Risk Analyses of Low-Probability High-Consequence Events. |
| Contained By: |
Springer Nature eBook |
| 標題: |
Mathematical optimization. - |
| 電子資源: |
https://doi.org/10.1007/978-3-031-53092-0 |
| ISBN: |
9783031530920 |