Development of a Fuzzy-based Patrol Robot Using in Building Automation
System
- URL: http://arxiv.org/abs/2006.02216v1
- Date: Wed, 13 May 2020 07:05:02 GMT
- Title: Development of a Fuzzy-based Patrol Robot Using in Building Automation
System
- Authors: Thi Thanh Van Nguyen, Manh Duong Phung, Dinh Tuan Pham, Quang Vinh
Tran
- Abstract summary: The paper presents a novel security system in which a mobile robot is used as a patrol.
The robot is equipped with fuzzy-based algorithms to allow it to avoid the obstacles in an unknown environment.
The experiment results show that the system satisfies the requirements for the objective of monitoring and securing the building.
- Score: 1.5293427903448025
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A Building Automation System (BAS) has functions of monitoring and
controlling the operation of all building sub-systems such as HVAC
(Heating-Ventilation, Air-conditioning Control), electric consumption
management, fire alarm control, security and access control, and appliance
switching control. In the BAS, almost operations are automatically performed at
the control centre, the building security therefore must be strictly protected.
In the traditional system, the security is usually ensured by a number of
cameras installed at fixed positions and it may results in a limited vision. To
overcome this disadvantage, our paper presents a novel security system in which
a mobile robot is used as a patrol. The robot is equipped with fuzzy-based
algorithms to allow it to avoid the obstacles in an unknown environment as well
as other necessary mechanisms demanded for its patrol mission. The experiment
results show that the system satisfies the requirements for the objective of
monitoring and securing the building.
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