Based on the Automatic Control System of Industrial Robots

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Abstract:

The successful application of robotics is an important way to enhance the engineering machinery and equipment, scientific and technological content. The definition of industrial robots and Research, and simple control of industrial robots and the final flow chart is proposed to adapt to the development of machinery industry, according to the agile manufacturing strategy, and looking forward to its logical design of the development trend.

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27-30

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October 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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