Ain Shams Engineering Journal (Mar 2022)

Explicit adaptive power system stabilizer design based an on-line identifier for single-machine infinite bus

  • Asmaa Fawzy Rashwan,
  • Mahrous Ahmed,
  • Mohamed R. Mossa,
  • Ayman M. Baha-El-Din,
  • Salem Alkhalaf,
  • Tomonobu Senjyu,
  • Ashraf M. Hemeida

Journal volume & issue
Vol. 13, no. 2
p. 101544

Abstract

Read online

This paper proposes an explicit adaptive controller to damp oscillations and to enhance the single machine infinite bus SMIB stability. Owing to the increasing requests for renewable energy and operating conditions, the identification for power systems has been increased recently. Changes in the power system parameters cause to use an explicit self-tuning control. The controller structure consists of combined on-line identifier and a feedback controller as PID and a radial basis function neural network (RBFNN) which acts as an adaptive power system stabilizer for SMIB. An adaptive linear neural network (ADALINE) depending on the input and output of open loop system is employed as on-line model identification to mimic on-line the SMIB output. The difference between SMIB and the identified model responses is used to adjust the ADALANN model weights on-line depending on a recursive least squares principle RLS and a recursive least square with adaptive directional forgetting RLSMadf. The particles swarm optimization (PSO) beside RLS and RLSMadf assess the weights of (RBFNN) and coefficients of PID controllers depending on the on-line ADALINE model weights. The proposed controller is validated with several operating conditions under various disturbances. The simulation results show the proposed controller whose parameters depend on on-line tuning techniques provides better performance than a conventional PID controller.

Keywords