Multi objective load frequency control using hybrid bacterial foraging and particle swarm optimized PI controller

نویسندگان

  • Sukhwinder Singh Dhillon
  • S. Marwaha
چکیده

Excessive load demand with reliability in power availability, demands for interconnection of large number of generating units over existing tie lines. Due to sudden change in demand, the power transfer over existing tie lines working close to their thermal limits results in low frequency power oscillations. Thus, in modern power systems the study of mitigation of these frequency oscillations is more involved and formulates the area of Load Frequency Control (LFC). Many conventional and heuristic control techniques have been recently applied to address the issue of LFC. This paper investigates load frequency control of large interconnected power system consisting of conventional and renewable energy sources, using hybrid heuristic approach. The proposed strategy is shown to result in improved system damping resulting in faster mitigation of low frequency oscillations. 2016 Elsevier Ltd. All rights reserved.

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تاریخ انتشار 2016