Abstract

Economic dispatch problem lies at the kernel among different issues in GTCC units’ operation, which is about minimizing the fuel consumption for a period of operation so as to accomplish optimal load dispatch among units. This paper has analyzed the load dispatch model of gas turbine combined-cycle (GTCC) units and utilizes a quantum genetic algorithm to optimize the solution of the model. The performance of gas turbine combined-cycle units varies with many factors and this directly leads to variation of model parameters. To solve the dispatch problem, variable constraints are adopted to correct the parameters influenced by ambient conditions. In the simulation, comparison of dispatch models for GTCC units considering and not considering the influence of ambient conditions indicates that it is necessary to adopt variable constraints for the dispatch model of GTCC units. To optimize the solution of the model, a Quantum Genetic Algorithm is used considering its advantages in searching performance. QGA combines the quantum theory with evolutionary theory of genetic algorithm. It is a new kind of intelligence algorithm which has been successfully employed in optimization problems. Utilizing quantum code, quantum gate and so on, QGA shows flexibility, high convergent rate, and global optimal capacity and so on. Simulations were performed by building up models and optimizing the solutions of the models by QGA. QGA shows better effect than equal micro incremental method used in the previous literature. The operational economy is proved by the results obtained by QGA. It can be concluded that QGA is quite effective in optimizing economic dispatch problem of GTCC units.

Highlights

  • Due to the availability of natural gas and the advantages [1,2] of gas turbine combined-cycle (GTCC) units, GTCC plants continue to gain strength in power industry

  • Economic dispatch problem lies at the kernel among different issues in GTCC units’ operation, which is about minimizing the fuel consumption for a period of operation so as to accomplish optimal load dispatch among units

  • This paper has analyzed the load dispatch model of gas turbine combined-cycle (GTCC) units and utilizes a quantum genetic algorithm to optimize the solution of the model

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Summary

Introduction

Due to the availability of natural gas and the advantages [1,2] of GTCC units, GTCC plants continue to gain strength in power industry. Performance of a GTCC unit varies with many factors [5,6,7] This will lead to variation of load dispatch model. Many efforts [8,9,10] have been made to solve the problem, through various mathematical programming and optimization techniques. These methods all have certain limitations such as requiring the formulation in continuous differentiable form, high computation time, failing to provide global optimal solution and so on. QGA is adopted to solve the economic dispatch problem for GTCC units. The results show that QGA is quite effective in solving the optimization of economic dispatch problem of GTCC units

Basic Model of Economic Dispatch Problem
Economic Dispatch Model of GTCC Units Adopting Variable Constraints
Quantum Genetic Algorithm
Quantum Code
Quantum Gate
The Procedure of the Optimization by QGA
Simulation
Results and Discussions
Conclusions
Full Text
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