Researches of the Measurement Instrument in the Plastic Injection Machine Bore and Data Processing

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Abstract:

The wear of the plastic injection molding machine bore has an effect on the quality of the machine to some extent. In order to pursuit the maximum of comprehensive benefits in plastic molding factory. Its necessary to design economic, efficient, dedicated instrument which measure inner diameter in the machine bore. In this paper, the measurement instrument in the plastic injection molding machine bore uses eddy current sensors non-contact measurement theory and virtual instrument technology, it can measure the degree of wear in the plastic injection molding machine bore easily. The results are processed by Radial Basis Function neural network (RBF) technology and then get the curve by using curve fitting to reduce measurement error. It can show the degree of abrasion in the plastic injection machine bore.

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1180-1184

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January 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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