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Soft-sensing model for flue gas oxygen content based on kernel fuzzy C-means clustering and local modeling method

机译:基于核模糊C-均值聚类和局部建模的烟气含氧量软测量模型

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Based on the fact that the flue gas oxygen content in power plant is hard to detect effectively, a soft-sensing model based on kernel fuzzy C-means clustering and local modeling method is proposed from improving the online self-adaptive ability of the soft-sensing model. Firstly, several sub-sample sets are formed by using kernel fuzzy C-means clustering algorithm to cluster analysis of the history database. Secondly, the modeling neighborhood dataset is obtained through traversal search in the sub-sample set, whose clustering center has the highest similarity with the current input data. Thirdly, the least square support vector machine based on multi-population hybrid optimization algorithm is used to build the local model for flue gas oxygen content. Finally, the simulation experiments are carried out based on the actual operation data. Simulation results show that compared with the standard LSSVM soft-sensing model, although the computing cost is increased, the proposed soft-sensing model has better prediction performance and can satisfy the real-time requirements for flue gas oxygen content in boiler combustion process.
机译:针对电厂烟气含氧量难以有效检测的事实,通过提高软烟机的在线自适应能力,提出了一种基于核模糊C均值聚类和局部建模方法的软烟感测模型。感应模型。首先,利用核模糊C-均值聚类算法对历史数据库进行聚类分析,形成若干子样本集。其次,在子样本集中通过遍历搜索获得建模邻域数据集,该子样本集的聚类中心与当前输入数据的相似性最高。第三,采用基于最小二乘支持向量机的最小二乘支持向量机建立烟气含氧量的局部模型。最后,根据实际运行数据进行了仿真实验。仿真结果表明,与标准的LSSVM软测量模型相比,尽管增加了计算量,但该软测量模型具有较好的预测性能,能够满足锅炉燃烧过程中烟气含氧量的实时性要求。

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