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Integration of Physics-Informed Neural Networks in MPC for Optimal Control of Mobile Robot: A Comparative Performance Analysis
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Title
Integration of Physics-Informed Neural Networks in MPC for Optimal Control of Mobile Robot: A Comparative Performance Analysis
Alternative Title
이동 로봇의 최적 제어를 위한 물리 정보를 포함한 신경망의 모델 예측 제어 통합: 비교 성능 분석
DGIST Authors
Doyoung KimYongseob LimSoon Kwon
Advisor
임용섭
Co-Advisor(s)
Soon Kwon
Issued Date
2024
Awarded Date
2024-08-01
Citation
Doyoung Kim. (2024). Integration of Physics-Informed Neural Networks in MPC for Optimal Control of Mobile Robot: A Comparative Performance Analysis. doi: 10.22677/THESIS.200000798163
Type
Thesis
Description
Physical Information Neural Networks, Model Predictive Control, Mobile Robots, Optimal Control, Self-Driving Mobile Robots
Table Of Contents
Ⅰ. Introduction 1
Ⅱ. Related Works 3
Ⅲ. Mobile Robot Kinematics and State-space Model 4
3.1 Mobile Robot Kinematics 4
3.2 State-space Model for MPC and PINN 6
Ⅳ. Problem Statement
4.1 Model Predictive Control 8
4.2 Physics-Informed Neural Network 10
4.3 PINN Training 12
4.4 Integration of PINN into the MPC Framework 14
Ⅴ. Experiment Result
5.1 PINN model Accuracy 15
Ⅵ. Conclusions, Limitations and Future Works 16

References 17
국문 초록 19
URI
http://hdl.handle.net/20.500.11750/57614
http://dgist.dcollection.net/common/orgView/200000798163
DOI
10.22677/THESIS.200000798163
Degree
Master
Department
Department of Robotics and Mechatronics Engineering
Publisher
DGIST
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