Using Mega-fuzzification Method to Improve Small Data Set Learning Accuracy for Early Flexible Manufacturing System Scheduling

博士 === 國立成功大學 === 工業與資訊管理學系碩博士班 === 93 ===  Many machine learning methods to improve system scheduling have been proposed in the field of artificial intelligence (AI). Most of them rely on a large amount of data having been gathered, and knowledge derived from the limited data available in the earl...

Full description

Bibliographic Details
Main Authors: Fengming Chang, 張峯銘
Other Authors: Chihsen Wu
Format: Others
Language:en_US
Online Access:http://ndltd.ncl.edu.tw/handle/36428529281971379846
Description
Summary:博士 === 國立成功大學 === 工業與資訊管理學系碩博士班 === 93 ===  Many machine learning methods to improve system scheduling have been proposed in the field of artificial intelligence (AI). Most of them rely on a large amount of data having been gathered, and knowledge derived from the limited data available in the early manufacturing stages is usually too fragile for a flexible manufacturing system (FMS). This causes the accuracy of prediction with regard to the production strategy to be very low. It is therefore a challenging problem to increase the accuracy of predictions derived from early knowledge acquisition. This thesis is aimed at increasing the accuracy of machine learning for FMS scheduling using small data sets. Methodologies proposed include data continualized concept, mega-fuzzification, application of fuzzy theory, and data domain external expansion approach. Also, this thesis considers the data bias phenomenon that often occurs in small data sets and provides a method for its adjustment. Furthermore, a method is proposed to determine the domain external expansion magnitude when data range is unknown. Briefly, the results of this thesis show that the proposed approaches can increase the learning accuracy in a broad range of applications.