最適化シンポジウム:OPTIS
Online ISSN : 2433-1295
セッションID: 1102
会議情報
1102 自己組織化マップを用いた飲料用缶内圧の推定(近似最適化・同定)
小松崎 俊彦大杉 駿韓 晶打田 浩明
著者情報
会議録・要旨集 フリー

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抄録
The self-organizing map (SOM) is a kind of artificial neural networks that forms a topological map to cluster data as well as to reduce dimensionality of the data based on unsupervised learning. In this study, the SOM is introduced to the quality inspection process of beverage cans where the input vector with large dimension is composed of a series of frequency response data that is obtained by the magnetic hammering test. In response to the input vectors, the system predicts the internal pressure of cans in a way that a certain unit comprising the learned network responds to an input vector having minimum distance with the weight vector of the selected unit. Test results have shown that the SOM can roughly identify the difference of the internal pressure of cans, however, the estimate accuracy is not satisfactory in comparison to the prediction results obtained by the system which is based on the k-nearest neighbor algorithm. Toward the further improvement of the suggested classification system based on SOM, the investigation into the well-suited choice of input vectors, proper arrangement of the network parameters are necessary.
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© 2014 一般社団法人日本機械学会
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