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Improvement of Bipolar Magnetic Guidance Sensor Performance using Fuzzy Inference System

양극성 자기유도센서의 성능 향상을 위한 퍼지 추론 시스템

  • 박문호 (부산대학교 전자전기컴퓨터공학과) ;
  • 조현학 (부산대학교 로봇관련 협동과정) ;
  • 김광백 (신라대학교 컴퓨터공학과) ;
  • 김성신 (부산대학교 전기공학과)
  • Received : 2013.09.01
  • Accepted : 2013.11.21
  • Published : 2014.02.25

Abstract

Most of light duty AGVs(AGCs) using tape of magnetic for the guide path have digital guidance magnetic sensor. Digital guidance magnetic sensor using magnet-tape is on/off type and has positioning error of magnet-tape as 10~50 mm. AGC using this sensor doesn't induce accurate position of magnet-line which is magnet-tape because of magnetic field which motor in AGC creates, outer magnetic field, earth's magnetic field, etc. AGC when driving wobbles due to this error and this error can cause path deviation. In this paper, we propose fuzzy inference system for improvement of bipolar analog magnetic guidance sensor performance. Fuzzy is suitable in term of fault tolerance, uncertainty tolerance, real-time operation, and Nonlinearity as compared with other algorithms. In previous research, we produced bipolar magnetic guidance sensor and we set the threshold in order to calculate digital values of magnet position. Fuzzy inference system is designed using outputs of Analog hall sensors. Magnet position calculated by digital method is improved by outputs of this system. In result, proposed method was verified by improving performance of magnetic guidance sensor.

자기테이프를 사용하는 대부분의 경량무인운반차들(AGCs)은 디지털 자기유도센서를 사용한다. 디지털 자기유도센서는 On/Off 타입으로 자기테이프의 위치측정 정밀도가 10~50 mm의 오차를 가진다. 또한 경량무인운반차에 설치된 모터의 자기장이나 주변 환경의 외부 자기장, 지자기 등으로 인하여 정확한 위치를 추정하기 힘들다. 이러한 오차로 인하여 경량무인운반차의 주행 시에 잦은 흔들림이 발생하게 되고, 정도가 심할 경우 이탈현상이 발생하게 된다. 따라서 본 논문은 양극성 아날로그 자기유도센서에 퍼지 추론 시스템의 적용을 제안한다. 퍼지는 다른 알고리즘에 비하여 내고장성과 불확실성에 강인하고, 실시간 작동에 유리하며, 비선형시스템에 사용하기 적합하다. 선행과제에서 제작한 양극성 아날로그 자기유도센서로 threshold를 두어 디지털 자기유도센서를 형성하고, 이를 이용하여 자석위치 값을 계산한다. On으로 인식된 아날로그 Hall sensor의 출력을 이용하여 퍼지 추론 시스템을 설계하고, 그 출력으로 디지털출력 값을 개선한다. 실험 결과, 제안된 방법이 기존의 자기유도센서보다 성능이 향상된 것을 확인하였다.

Keywords

References

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