TY - JOUR
T1 - A hybrid controller method with genetic algorithm optimization to measure position and angular for mobile robot motion control
AU - Razali, Muhammad Razmi
AU - Mohd Faudzi, Ahmad Athif
AU - Shamsudin, Abu Ubaidah
AU - Mohamaddan, Shahrol
N1 - Funding Information:
The research has been carried out under the program Research Excellence Consortium (JPT (BPKI) 1000/016/018/25 (57)) with the title Consortium of Robotics Technology for Search and Rescue Operations (CORTESRO) provided by the Ministry of Higher Education Malaysia (MOHE).
Publisher Copyright:
Copyright © 2023 Razali, Mohd Faudzi, Shamsudin and Mohamaddan.
PY - 2023/1/12
Y1 - 2023/1/12
N2 - Due to the complexity of autonomous mobile robot’s requirement and drastic technological changes, the safe and efficient path tracking development is becoming complex and requires intensive knowledge and information, thus the demand for advanced algorithm has rapidly increased. Analyzing unstructured gain data has been a growing interest among researchers, resulting in valuable information in many fields such as path planning and motion control. Among those, motion control is a vital part of a fast, secure operation. Yet, current approaches face problems in managing unstructured gain data and producing accurate local planning due to the lack of formulation in the knowledge on the gain optimization. Therefore, this research aims to design a new gain optimization approach to assist researcher in identifying the value of the gain’s product with a qualitative comparative study of the up-to-date controllers. Gains optimization in this context is to classify the near perfect value of the gain’s product and processes. For this, a domain controller will be developed based on the attributes of the Fuzzy-PID parameters. The development of the Fuzzy Logic Controller requires information on the PID controller parameters that will be fuzzified and defuzzied based on the resulting 49 fuzzy rules. Furthermore, this fuzzy inference will be optimized for its usability by a genetic algorithm (GA). It is expected that the domain controller will give a positive impact to the path planning position and angular PID controller algorithm that meet the autonomous demand.
AB - Due to the complexity of autonomous mobile robot’s requirement and drastic technological changes, the safe and efficient path tracking development is becoming complex and requires intensive knowledge and information, thus the demand for advanced algorithm has rapidly increased. Analyzing unstructured gain data has been a growing interest among researchers, resulting in valuable information in many fields such as path planning and motion control. Among those, motion control is a vital part of a fast, secure operation. Yet, current approaches face problems in managing unstructured gain data and producing accurate local planning due to the lack of formulation in the knowledge on the gain optimization. Therefore, this research aims to design a new gain optimization approach to assist researcher in identifying the value of the gain’s product with a qualitative comparative study of the up-to-date controllers. Gains optimization in this context is to classify the near perfect value of the gain’s product and processes. For this, a domain controller will be developed based on the attributes of the Fuzzy-PID parameters. The development of the Fuzzy Logic Controller requires information on the PID controller parameters that will be fuzzified and defuzzied based on the resulting 49 fuzzy rules. Furthermore, this fuzzy inference will be optimized for its usability by a genetic algorithm (GA). It is expected that the domain controller will give a positive impact to the path planning position and angular PID controller algorithm that meet the autonomous demand.
KW - Angular
KW - Fuzzy-PID
KW - GA
KW - Pid
KW - Position
UR - http://www.scopus.com/inward/record.url?scp=85146976738&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85146976738&partnerID=8YFLogxK
U2 - 10.3389/frobt.2022.1087371
DO - 10.3389/frobt.2022.1087371
M3 - Article
AN - SCOPUS:85146976738
SN - 2296-9144
VL - 9
JO - Frontiers Robotics AI
JF - Frontiers Robotics AI
M1 - 1087371
ER -