Optimal selection of marine generator based on improved particle swarm algorithm

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机构
[1] [1,2,Wang, Kai
[2] 1,2,Yan, Xinping
[3] 1,2,Yuan, Yupeng
来源
| 1600年 / Editorial office of Ship Building of China, China卷 / 57期
关键词
Energy saving and emission reductions - Higher efficiency - Marine Diesel Engines - Marine generators - Optimal selection - Overall energy efficiency - Particle swarm algorithm - Particle swarm optimization algorithm;
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摘要
With respect to the excess horsepower and low efficiency of marine diesel generators under low power load, optimal selection of marine diesel engine generator was studied, in which the improved particle swarm algorithm was applied. The results show that this method can meet the requirement in safety of ship power supply, and reduce the weight and volume of the ship generator. In addition, the generator can operate at higher efficiency so as to improve overall energy efficiency of the ship. © 2016, Editorial Office of Ship Building of China. All right reserved.
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