Model turbine heat rate by fast learning network with tuning based on ameliorated krill herd algorithm

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摘要

The krill herd (KH) is an innovative biologically-inspired algorithm. To improve the solution quality and to quicken the global convergence speed of KH, an ameliorated krill herd algorithm (A-KH) is proposed to solve the aforementioned problems and test it by classical benchmark functions, which is one of the major contributions of this paper. Compared with other several state-of-art optimization algorithms (biogeography-based optimization, particle swarm optimization, artificial bee colony and krill herd algorithm), A-KH shows better search performance. There is, furthermore, another contribution that the A-KH is adopted to adjust the parameters of the fast learning network (FLN) so as to build the turbine heat rate model of a 600MW supercritical steam and obtain a high-precision prediction model. Experimental results show that, compared with other several turbine heat rate models, the tuned FLN model by A-KH has better regression precision and generalization capability.

论文关键词:Krill herd algorithm,Fast learning network,Heat rate,Steam turbine

论文评审过程:Received 5 April 2016, Revised 10 November 2016, Accepted 13 November 2016, Available online 15 November 2016, Version of Record 12 January 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2016.11.011