摘要
针对状态参数随时间流逝变化的复杂系统,提出一种基于大数据、异步信息融合的多尺度状态监测方法,构建对象状态参数反映设备运行状态。通过对某机组锅炉辐射受热面灰污程度检测的实例分析,利用所提出的多尺度状态监测方法,构建了污染度指数,消除了煤破碎变化等噪声对状态监测结果的干扰,有效反映了受热面积灰程度,取得了良好的效果。
In the light of complex systems of which the state parameters was changing with time,put forward was a multi-dimensional state monitoring method based on the big data and asynchronous information fusion with the state parameters of the object being established to reflect the operating state of the equipment items. Through a case analysis of the ash deposition and fouling degree of the heating surfaces of a utility boiler,by employing the algorithm in question,a dual model and data fusion were used to enhance the modeling precision and multi-dimensionally analyze the noise caused by a change in the quality of coal when it is filtered. On this basis,the pollution degree index was established to effectively reflect the extent of the ash deposition on the heating surfaces.
出处
《热能动力工程》
CAS
CSCD
北大核心
2013年第6期590-595,658-659,共6页
Journal of Engineering for Thermal Energy and Power
基金
国家自然科学基金重点项目(51036002)
国家科技支撑计划(2011BAA04B03)
关键词
大数据
状态监测
灰污检测
辐射受热面
big data,state monitoring,ash and foul inspection and measurement,radiant heating surface