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Multi-objective Optimization for Thermal Power Plant Operation Based on Improved Working Condition

机译:基于改进工况的火电厂运行多目标优化

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A multi-objective optimization based on improved K-means algorithm for thermal power plant operation is proposed in this paper. First, an improved K-means algorithm that aims at updating the method of selecting the clustering number and initial clustering center is applied to divide unit load and coal quality condition. Furthermore, a multi-objective optimization method is developed to realize the balance between the economic indicator and the environmental indicator, thus the corresponding optimal operation parameters of the two performance indicators for each condition can be obtained, which can effectively guide the power station operation. Lastly, taking the historical operation data of a 300MW unit as the experimental object, the simulation results show that the proposed multi-objective optimization based on improved K-means algorithm in this paper is effective and reasonable for the power station operation.
机译:提出了一种基于改进的K均值算法的火电厂运行多目标优化方法。首先,将一种改进的K-means算法用于更新选择聚类数和初始聚类中心的方法,以划分单位负荷和煤质条件。进而,提出了一种多目标优化方法,以实现经济指标与环境指标之间的平衡,从而获得两种性能指标在每种情况下的对应最优运行参数,可以有效地指导电站的运行。最后,以300MW机组的历史运行数据为实验对象,仿真结果表明,本文提出的基于改进的K-means算法的多目标优化方法对于电站运行是有效且合理的。

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