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Prediction of Assistance Force for Opening/Closing of Automobile Door Using Support Vector Machine

서포트 벡터 머신을 이용한 차량도어의 개폐 보조력 예측

  • Yang, Hac-Jin (School of Robot & Automation Engineering, Dongyang Mirae Univ.) ;
  • Shin, Hyun-Chan (Department of Mechanical Engineering, Graduate School, Hoseo Univ.) ;
  • Kim, Seong-Kun (School of Mechanical Engineering, Hoseo Univ.)
  • 양학진 (동양미래대학교 로봇자동화공학부) ;
  • 신현찬 (호서대학교 대학원 기계공학과) ;
  • 김성근 (호서대학교 기계공학부)
  • Received : 2016.01.18
  • Accepted : 2016.05.12
  • Published : 2016.05.31

Abstract

We developed a prediction model of assistance force for the opening/closing of an automobile door depending on the condition of the parking ground. The candidates of the learning models for the operating assistance force were compared to determine the proper force according to the slope and user's force, etc. The reduced experimental model was developed to obtain learning data for the estimation model. The learning algorithm was composed to predict the assistance force to incorporate real assistance force data. Among these algorithms, an Artificial Neural Network (ANN) and Support Vector Machine(SVM) were applied and the adaptability was compared between these models. The SVM provided more adaptability for the learning process of the door assistance force prediction. This paper proposes a system for determining the assistance force to control a door motor to compensate for the deviation of required door force in the slope condition, as needed in the plane condition.

본 논문에서는 차량이 주차된 지형의 조건에 따라 적용되는 도어 개폐 보조력 예측 모델을 제시하였다. 경사도, 사용자의 힘 등의 조건에 따른 개폐력 설정을 위하여 작동 보조력에 대한 학습 모델을 구현하여 비교하였고, 예측 모델의 학습을 위하여 축소모형을 제작하여 실험을 통해 학습데이터를 얻을 수 있는 실험 모델을 구성하였다. 실제 보상력 데이터를 학습, 반영하여 적정 값을 도출할 수 있는 학습 알고리즘을 개발하고, 이를 적용할 수 있는 시스템을 개발하였다. 학습 방법 중에서 인공신경망(Artificial Neural Network, ANN)과 서포트 벡터 머신(Support Vector Machine, SVM) 알고리즘을 적용하여 비교 검증하였다. 실제 측정값과 비교 검증한 결과, 차량의 도어 개폐 보조력 예측을 위해서 서포트 벡터 머신의 상대적으로 높은 적용성을 확인할 수 있었으며, 이 예측 모델을 활용하여 경사, 사용자의 힘에 따라 도어 개폐 구동 모터가 보상해야 할 적정한 힘을 예측하여 시간에 따라 구동함으로써 사용자가 평지와 같은 힘으로 문을 제어할 수 있는 시스템 구성을 제시하였다.

Keywords

References

  1. S. H. Yoon, S. W. Moon, K. I. Seo and J. H. Hwang, "Development of Smart Cruise Control System with the Consideration of Driver's Tendency", KSME IT, Spring Conference, pp.89-90, 2014.
  2. Y. W. Yun, G. J. Park and T. K. Kim, "Effectiveness of Active Hood and Pedestrian Airbag Based on Real Behicle Impact Test", Transactions of KSAE, Vol.22, No.1, pp.36-45, 2014.
  3. J. K. Lee, "Development Trends of Smart Safety Vehicle", Auto Journal, Vol.33, No.5, pp.38-44, 2011.
  4. C. G. Oh, J. H. Choi and B. H. Jung, "Mechanism Study for the Invisible Rail Sliding Door using 6-Bar Linkage", KSAE, Fall Conference, pp. 1722-1727, 2012.
  5. S. J. Chai, I. D. Hwang, S. H. Heo and S. C. Choi, "A Development of the Body with B Pillarless Sliding Door Type", KSAE, Fall Conference, pp. 1874-1882, 2011.
  6. K. G. Sung, M. K. Park and B. S. Lee, "Design of Power-Assist Smart Door System for Passenger Vehicle", Journal of institute of control, robotics and systems, Vol.16, No.6, pp.532-538, 2010. https://doi.org/10.5302/J.ICROS.2010.16.6.532
  7. B. S. Lee, M. K. Park and K. G. Sung, "Velocity Control and Collision Detection by Feedback Linearization for an Power-assisted Automotive Swing Door", Transaction of KSAE, Vol.21, No.5, pp.40-46, 2013. DOI: http://dx.doi.org/10.7467/ksae.2013.21.5.040
  8. H. J. Yang, S. K. Kim, "Design of Wafer Handling Robot Using Kernel Regression and Neural Network", Proceeding of KSME Spring Conference, pp.67-68, 2010.
  9. K. H. Jang, T. K. Yoo, J. Y. Choi, K. C. Nam, J. L. Choi, M. K. Kwon, and D. W. Kim, "Comparison of survival predictions for rats with hemorrhagic shocks using an artificial neural network and support vector machine," Journal of the institute of electronics and information engineers, Vol.34, No.1, pp.1148-1151, 2011. DOI: http://dx.doi.org/10.1109/iembs.2011.6089904
  10. W. K Youn and J. Kim, "Mechanomyo- graphy(MMG) based Elbow Flexion Force Prediction for Human-Machine Interaction", Journal of Mechanical Science and Technology, Vol.9, pp.2752-2756, 2009.
  11. K. K. Seo, "A Comparison Study on Back-Propagation Neural Network and Support Vector Machines for thr Image Classification Problems", Journal of the KAIS, Vol. 9, No.6, pp.1889-1893, 2008.
  12. H. J. Yang, S. K. Kim and J. K. Cho, "Design and Performance Test of Large-Area Susceptor for the Improvement of Temperature Uniformity", Journal of the KAIS, Vol. 16, No. 6 pp.3714-3721, 2015. DOI: http://dx.doi.org/10.5762/kais.2015.16.6.3714
  13. Alex J. Smola and Bernhard Scholkopf, "A tutorial on support vector regression", Statistics and Computing, Vol.14, No.3, pp.199-222, 2004. DOI: http://dx.doi.org/10.1023/B:STCO.0000035301.49549.88
  14. H. J Yang, S. K. Kim and K. H Choi, "A Study of the Feature Classification and the Predictive Model of Main Feed-Water Flow for Turbine Cycle", Journal of Energy Engineering, Vol.23, No.4, pp.263-271, 2014. DOI: http://dx.doi.org/10.5855/ENERGY.2014.23.4.263
  15. C. J. C. Burges, "A Tutorial on Support Vector Machines for Pattern Recognition", Data Mining and Knowledge Discovery, Vol.2, pp.121-167, 1998. DOI: http://dx.doi.org/10.1023/A:1009715923555
  16. B. Scholkopf, K. Sung, C. Burges, F. Girosi, P. Niyogi, T. Poggio, and V. Vapnik, "Comparing support vector machines with Gaussian kernels to radial basis function classifiers", IEEE Transactions on Signal Processing, Vol.45, No.11, pp.2758-2765, 1997. DOI: http://dx.doi.org/10.1109/78.650102