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Optimizing combustion efficiency of a circulating fluidized boiler: A data mining approach

机译:优化循环流化床锅炉的燃烧效率:一种数据挖掘方法

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A data mining approach was applied to analyze relationships among 54 parameters of a circulating fluidized-bed boiler. Knowledge was extracted from the data by machine learning algorithms. The extracted knowledge was used to determine ranges of process parameters (control signatures) that led to the increased efficiency of the combustion process. The research has shown that the efficiency can be predicted to the same degree of accuracy with and without the data describing the fuel composition or boiler demand levels. This discovery might have profound impact on the research directions in optimization of the energy production. Adjusting parameters of the control system has led to improved efficiency of the combustion process. The proposed data mining approach is applicable to different types of burners and fuel types. It is well suited to perform tradeoff analysis between various performable measures, e.g., efficiency and emissions.
机译:应用数据挖掘方法分析了循环流化床锅炉54个参数之间的关系。知识是通过机器学习算法从数据中提取的。所提取的知识用于确定导致燃烧过程效率提高的过程参数(控制特征)的范围。研究表明,使用和不使用描述燃料成分或锅炉需求水平的数据,都可以以相同的精确度预测效率。这一发现可能对优化能源生产的研究方向产生深远影响。调节控制系统的参数可以提高燃烧过程的效率。提出的数据挖掘方法适用于不同类型的燃烧器和燃料类型。它非常适合在各种可执行的度量(例如效率和排放)之间进行折衷分析。

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