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KCI 등재
대규모 가스 센서 어레이에서 중복도의 제거와 확률신경회로망을 이용한 분류
The Classification Using Probabilistic Neural Network and Redundancy Reduction on Very Large Scaled Chemical Gas Sensor Array
김정도 ( Jeong Do Kim ) , 임승주 ( Seung Ju Lim ) , 박성대 ( Sung Dae Park ) , 변형기 ( Hyung Gi Byun ) , ( K. C. Persaud ) , 김정주 ( Jung Ju Kim )
센서학회지 22권 2호 162-173(12pages)
UCI I410-ECN-0102-2013-530-002318578
* 발행 기관의 요청으로 이용이 불가한 자료입니다.

The purpose of this paper is to classify VOC gases by emulating the characteristics found in biological olfaction. For this purpose, we propose new signal processing method based a polymeric chemical sensor array consisting of 4096 sensors which is created by NEUROCHEM project. To remove unstable sensors generated in the manufacturing process of very large scaled chemical sensor array, we used discrete wavelet transformation and cosine similarity. And, to remove the supernumerary redundancy, we proposed the method of selecting candidates of representative sensor representing sensors with similar features by Fuzzy c-means algorithm. In addition, we proposed an improved algorithm for selecting representative sensors among candidates of representative sensors to better enhance classification ability. However, Classification for very large scaled sensor array has a great deal of time in process of learning because many sensors are used for learning though a redundancy is removed. Throughout experimental trials for classification, we confirmed the proposed method have an outstanding classification ability, at transient state as well as steady state.

[자료제공 : 네이버학술정보]
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