Study on Key Technique for Mechanical Engineering Based on Machine Translation

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Abstract:

In this paper,machine translation and computer-aided translation are researched, in conjunction with the problems that the author encountered with the existing translation tools when translating mechanical engineering files, the necessity and idea of the mechanical engineering translation computer-aided tool brought forward. This tool aims at mechanical engineering translation features, improves speed and quality of mechanical engineering translation, ignores the language complexity and ambiguity, and introduces a mechanism of symbols for words and expressions. According to this paper, the PTCAT is designed and implemented.

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1700-1703

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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