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Shanxi Investment Group Xinjiang Beisan Power Plant 2×660MW Units Intelligent Power Plant Integration Project

Project Information

  • End User
    Shanxi Investment Group
  • Location
    Xinjiang, China
  • Scope of Supply
    DCS

Overview

The Phase I capacity of the Beisan Power Plant comprises 2×660MW highly efficient ultra-supercritical coal-fired indirect air-cooled generating units, capable of delivering a maximum annual power output of 5.953 billion kWh to the East China region. The project embraced the "Full-process Smart Collaboration Center" solution to establish a "DCS+ICS+ISS" integrated intelligent power plant platform project. The construction scope encompasses an intelligent power generation control platform, a smart management service platform, intelligent control, operation, monitoring, alarm, inspection, fault diagnosis, decision-making, information security, SIS, MIS, etc.

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Solutions

Our intelligent power generation control systems and smart management public service systems are tailored for large-scale thermal power units, seamlessly connecting the control layer, intelligent control layer, and smart management layer, eliminating information silos, achieving comprehensive data governance, and constructing and applying first-class smart power plant architecture in China. We established an intelligent power generation operation control management mode equipped with self-learning, self-adaptation, self-optimization, self-recovery, and self-organization capabilities.

Results

Remarkable energy savings were realized through combustion optimization, intelligent soot blowing, and cold-end optimization of the units. The units' peak regulation capability saw significant enhancement, swiftly adapting to grid dispatch requirements. DCS and the platforms further ensured information and network security. The intelligent collaborative capability of production and operation management was vastly improved, facilitating intelligent decision-making based on full-process data analysis.

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