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Learning Dissipative Dynamics : A Neural Network Approach Integrated with Lagrangian Mechanics
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- Title
- Learning Dissipative Dynamics : A Neural Network Approach Integrated with Lagrangian Mechanics
- Alternative Title
- 소산 동역학 학습: 라그랑주 역학과 통합된 신경망 접근법
- DGIST Authors
- Hoyeong Yeo ; Sehoon Oh ; Sukho Park
- Advisor
- 오세훈
- Co-Advisor(s)
- Sukho Park
- Issued Date
- 2025
- Awarded Date
- 2025-08-01
- Type
- Thesis
- Description
- Legged Robot, Lagrangian Mechanics, Dynamic Friction, Neural Network, Force Observer
- Table Of Contents
-
Ⅰ. INTRODUCTION 1
ⅠI. MIMO HYSTERETIC FRICTION-AWARE LAGRANGIAN-BASED NETWORK 5
2.1 Lagrangian-based Neural Networks 8
2.2 Dissipative Energy of Non-conservative System 12
2.3 Proposed Method : Mysteric Net (M-Net) 18
ⅠII. EXPERIMENTAL VALIDATION OF SYSTEM MODELING 20
3.1 System Information : Legged Robot 20
3.2 Experiment Design and Data Acquisition 22
3.3 Results 25
ⅠV. MYSTERIC NET-BASED FORCE OBSERVER 30
4.1 Experiment Design and Data Acquisition 31
4.2 Results 32
V. CONCLUSION 37
REFERENCE 38
SUMMARY (in Korean) 40
- URI
-
https://scholar.dgist.ac.kr/handle/20.500.11750/59823
http://dgist.dcollection.net/common/orgView/200000889953
- Degree
- Master
- Publisher
- DGIST
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