Affiliation:
1. Hangzhou Dianzi University
Abstract
In this article, the LS-SVM model was established against the working stability control for the vacuum feeding device. Based on the experimental sample data, the learning and training was performed. The actual operating results of the control system proved its efficiency and reliance.
Publisher
Trans Tech Publications, Ltd.
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