Intelligent Control Algorithm for the Adjustment Process During Electronics Production

전자제품생산의 조정고정을 위한 지능형 제어알고리즘

  • 장석호 (연세대학교 기계전자공학부 전기공학전공) ;
  • 구영모 (삼성전자㈜ 생산기술센터 자동화연구소) ;
  • 고택범 (LG 하니웰㈜ 연구소) ;
  • 우광방 (연세대학교 기계전자공학부 전기공학전공)
  • Published : 1998.08.01

Abstract

A neural network based control algorithm with fuzzy compensation is proposed for the automated adjustment in the production of electronic end-products. The process of adjustment is to tune the variable devices in order to examine the specified performances of the products ready prior to packing. Camcorder is considered as a target product. The required test and adjustment system is developed. The adjustment system consists of a NNC(neural network controller), a sub-NNC, and an auxiliary algorithm utilizing the fuzzy logic. The neural network is trained by means of errors between the outputs of the real system and the network, as well as on the errors between the changing rate of the outputs. Control algorithm is derived to speed up the learning dynamics and to avoid the local minima at higher energy level, and is able to converge to the global minimum at lower energy level. Many unexpected problems in the application of the real system are resolved by the auxiliary algorithms. As the adjustments of multiple items are related to each other, but the significant effect of performance by any specific item is not observed. The experimental result shows that the proposed method performs very effectively and are advantageous in simple architecture, extracting easily the training data without expertise, adapting to the unstable system that the input-output properties of each products are slightly different, with a wide application to other similar adjustment processes.

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