Data mining-based modeling and application in the energy-saving analysis of large coal-fired power units

Yongping Yang, Ning-Ling Wang, Zhi-Wei Zhang, De-gang Chen
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引用次数: 4

Abstract

The large-sized coal-fired power units characterizes as wide thermodynamic scale, huge equipment, large flow and mass, which results in distinct nonlinear feature in energy transmission, conversion and dissipation for specific equipment, system and process. There's highly coupling and nonlinear correlation between the energy consumption in power generation and the external environment, resources and load demand. A data mining-based modeling methodology for complex system was proposed in this paper, reflecting the influences of boundary constraints and implementing the reconstruction of operation states. Based on this, a Spatial-temporal Distribution Model of Energy Consumption at Overall Conditions (SDMEC) for large coal-fired power units was built based on ε-SVR data mining and verified by the practical operation data of thermal power units. The result shows that the ε-SVR-based model is easy to implement and explicit to interpret with high accuracy.
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基于数据挖掘的大型燃煤机组节能分析建模及应用
大型燃煤发电机组具有热力规模大、设备庞大、流量大、质量大的特点,这就导致具体设备、系统和过程的能量传递、转换和耗散具有明显的非线性特征。发电能耗与外部环境、资源和负荷需求之间存在高度耦合和非线性相关关系。提出了一种基于数据挖掘的复杂系统建模方法,该方法反映了边界约束的影响,实现了系统运行状态的重构。在此基础上,基于ε-SVR数据挖掘,建立了大型燃煤机组整机能耗时空分布模型,并通过火电机组实际运行数据进行了验证。结果表明,基于ε- svr的模型实现简单,解释清晰,精度高。
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