Research and Application of Self-Tuning Control System Platform

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Abstract:

Studying the network communication between virtual instrument and MATLAB software, the multi-step lag self-tuning control system platform is established in LabVIEW compiler environment. The man-machine interface of self-tuning control system platform is built in LabVIEW, and the control strategy and algorithm is compiled in MATLAB software. Using the MATLAB-SCRIPT, the communication is established between LabVIEW software and MATLAB to data exchange. The experiment result of self-tuning control system platform show that the system has advantages of flexibility and reliability, which enhance the awareness of science and engineering design system for students, technicians and researcher.

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Advanced Materials Research (Volumes 774-776)

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1473-1476

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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