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    Please use this identifier to cite or link to this item: http://asiair.asia.edu.tw/ir/handle/310904400/19006


    Title: Using mega-fuzzification and data trend estimation in small data set learning for early FMS scheduling knowledge
    Authors: 張峰銘;Fengming, M.Chang
    Contributors: 資訊多媒體應用學系
    Keywords: Small data set;Scheduling;Flexible manufacturing system;ANFIS;Data trend;Mega-fuzzification
    Date: 2006
    Issue Date: 2012-11-26 07:12:01 (UTC+0)
    Abstract: Provided with plenty of data (experience), data mining techniques are widely used to extract suitable management skills from the data. Nevertheless, in the early stages of a manufacturing system, only rare data can be obtained, and built scheduling knowledge is usually fragile. Using small data sets, this research's purpose is improving the accuracy of machine learning for flexible manufacturing system (FMS) scheduling. The study develops a data trend estimation technique and combines it with mega-fuzzification and adaptive-network-based fuzzy inference systems (ANFIS). The results of the simulated FMS scheduling problem indicate that learning accuracy can be significantly improved using the proposed method involving a very small data set.
    Relation: COMPUTERS & OPERATIONS RESEARCH;33(6):1857–1869
    Appears in Collections:[行動商務與多媒體應用學系] 期刊論文

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