1 to 10 of 32 Results
Nov 14, 2024
Chen, Lyu, 2024, "Smart Mechatronic Lab for Industrial Collaborative Robotics in Manufacturing", https://doi.org/10.21979/N9/Y7QM2O, DR-NTU (Data), V1
Dataset for Smart Mechatronic Lab for Industrial Collaborative Robotics in Manufacturing |
MATLAB Data - 21.8 MB -
MD5: b9c54c3cc69a9fd288ea887c15fe32cd
|
Nov 5, 2024
Lyu, Chen, 2024, "Game Theoretic Approach for Cooperative Control of Connected and Automated Vehicles", https://doi.org/10.21979/N9/DPWQ55, DR-NTU (Data), V1
Data for Game Theoretic Approach for Cooperative Control of Connected and Automated Vehicles |
MS Excel Spreadsheet - 4.4 MB -
MD5: da055f5a6d6e6339d4c709c93caf4a94
|
Aug 21, 2024
Lyu, Chen, 2024, "Dataset for: Deep-Learning-Based Digital Twin Method for Personalized Optimization and Health Monitoring of Electric Vehicles", https://doi.org/10.21979/N9/1GX2YP, DR-NTU (Data), V1
Dataset for Project "Deep-Learning-Based Digital Twin Method for Personalized Optimization and Health Monitoring of Electric Vehicles" |
Aug 21, 2024 -
Dataset for: Deep-Learning-Based Digital Twin Method for Personalized Optimization and Health Monitoring of Electric Vehicles
MATLAB Data - 1.2 KB -
MD5: bbb0eaab7cab04c77e757876924aeb93
|
Aug 21, 2024 -
Dataset for: Deep-Learning-Based Digital Twin Method for Personalized Optimization and Health Monitoring of Electric Vehicles
MATLAB Data - 1.2 KB -
MD5: 13f11ee466b61d0322fb98620576e56a
|
Aug 21, 2024 -
Dataset for: Deep-Learning-Based Digital Twin Method for Personalized Optimization and Health Monitoring of Electric Vehicles
MATLAB Data - 1.2 KB -
MD5: f23ce02ac384fd56c2a3e5e79c692e24
|
Jun 14, 2022
Lyu, Chen; Xing, Yang, 2022, "Related Data for: Improving Environmental Sustainability through Energy Efficient Driving: Eco-driving of Autonomous Electric Vehicle Platoons", https://doi.org/10.21979/N9/RL5UEH, DR-NTU (Data), V1
Related Data for our project: Improving Environmental Sustainability through Energy Efficient Driving: Eco-driving of Autonomous Electric Vehicle Platoons |
MATLAB Data - 96.0 MB -
MD5: f04afc0970b916c91ffc789c0f5a84cd
|
