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Design of Power Intelligent Control DCS Module Based on Improved PID

  • Chao SongEmail author
Conference paper
Part of the Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering book series (LNICST, volume 301)

Abstract

Distributed control system (DCS) is the core of power system control. A power intelligent control DCS module based on improved PID is studied to realize the output gain control of power electrical system and improve the control efficiency of power electrical system. Combined with integrated DSP information processing chip, a design of power intelligent control DCS module based on output power amplification and regulation is proposed. The overall model of DCS power control system is designed, and the DCS power control frequency doubling gain amplifier is constructed. The signal anti-interference design adopts cascade filter and output power amplification adjustment method to obtain the reset circuit of DCS controller. The output power amplification and adjustment algorithm are designed to equalize the gain distribution to improve the power control performance of DCS. The test results show that the output gain of intelligent power control is large, the adaptive performance is good, and the output stability is strong.

Keywords

Improved PID Power intelligent control DCS module Amplification and regulation 

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Copyright information

© ICST Institute for Computer Sciences, Social Informatics and Telecommunications Engineering 2019

Authors and Affiliations

  1. 1.Dalian University of Science and TechnologyDalianChina

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