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Economic Environmental Dispatch for Combined Heat and Power using CPSO


  • AIET, Faridkot – 151203, Punjab, India
  • EIED, Thapar University, Patiala – 147004, Punjab, India
  • EED, MEFGI, MEFGI, Rajkot – 360003, Gujarat, India


Objectives: In this paper a comparative analysis is presented for Economic Environmental Dispatch. Methods/Statistical Analysis: An optimization problem Combined Heat and Power Economic Emission Dispatch (CHPEED) is the answer of minimizing the cost and emission while keeping the heat and power demand. Between Construction Particle Swarm Optimization (CPSO) with (RCGA), (NSGAII), (SPEA2), a comparative analysis is presented. Findings: CPSO algorithm provides a competitive effectiveness in terms of solution quality and as far as CPU time is concerned, it leads to top notch performance.


Combined Heat and Power, CHPEED, CPSO.

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