[의류제품] Predicting Clothing Sensory Comfort with Artificial Intelligence Hybrid Models 출판일 : 2004.01.01 저자 : A.S.W. Wong, Y. Li, P.K.W. Yeung 서지사항 : Textile Research Journal, Volume 74, No 1(2004), 13-19페이지 등록일 : 2012.04.27 I 조회수 : 229 작성자 : admin |
This paper investigates the process of human psychological perceptions of clothing-
related sensations and comfort to develop an intellectual understanding of and method ology
for predicting clothing comfort performance from fabric physical properties. Var ious hybrid
models are developed using different modeling techniques by studying human sensory
perception and judgement processes. By combining the strengths of statistics (data
reduction and information summation), a neural network (self-learning ability), and fuzzy
logic (fuzzy reasoning ability), hybrid models are developed to simulate different stages of
the perception process. Results show that the TS-TS-NN-FL model has the highest ability
to predict overall comfort performance from fabric physical properties. To summarize, the
three key elements in predicting psychological perceptions of clothing comfort from fabric
physical properties are data reduction and summation, self-learning, and fuzzy reasoning.
This paper shows that the model that integrates these three elements can generate the best
predictions compared with other hybrid models.
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