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Optimized scheme in coal-fired boiler combustion based on information entropy and modified K-prototypes algorithm

机译:基于信息熵和改进的K原型算法的燃煤锅炉燃烧优化方案

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An integrated combustion optimization scheme is proposed for the combined considering the restriction in coal-fired boiler combustion efficiency and outlet NOx emissions. Continuous attribute discretization and reduction techniques are handled as optimization preparation by E-Cluster and C_RED methods, in which the segmentation numbers don't need to be provided in advance and can be continuously adapted with data characters. In order to obtain results of multi-objections with clustering method for mixed data, a modified K-prototypes algorithm is then proposed. This algorithm can be divided into two stages as K-prototypes algorithm for clustering number self-adaptation and clustering for multi-objective optimization, respectively. Field tests were carried out at a 660?MW coal-fired boiler to provide real data as a case study for controllable attribute discretization and reduction in boiler system and obtaining optimization parameters considering[maxηb,minyNOx]multi-objective rule.
机译:考虑到燃煤锅炉燃烧效率和出口NOx排放的限制,提出了一种集成的燃烧优化方案。连续属性离散化和减少技术被E-Cluster和C_RED方法处理了优化准备,其中不需要提前提供分段号,并且可以连续地使用数据字符进行调整。为了获得具有混合数据的聚类方法的多反对的结果,然后提出了一种修改的k原型算法。该算法分别可以分为两个阶段作为k原型算法,分别用于聚类数字自适应和聚类以进行多目标优化。现场测试是在660?MW燃煤锅炉上进行的,以提供真实数据,以便在考虑[MAXH,Minynox]多目标规则中获得可控属性离散化和减少的案例研究。

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