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Combustion Optimization for Coal Fired Power Plant Boilers Based on Improved Distributed ELM and Distributed PSO

机译:基于改进分布式ELM和分布式PSO的燃煤发电厂锅炉燃烧优化

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摘要

Increasing the combustion efficiency of power plant boilers and reducing pollutant emissions are important for energy conservation and environmental protection. The power plant boiler combustion process is a complex multi-input/multi-output system, with a high degree of nonlinearity and strong coupling characteristics. It is necessary to optimize the boiler combustion model by means of artificial intelligence methods. However, the traditional intelligent algorithms cannot deal effectively with the massive and high dimensional power station data. In this paper, a distributed combustion optimization method for boilers is proposed. The MapReduce programming framework is used to parallelize the proposed algorithm model and improve its ability to deal with big data. An improved distributed extreme learning machine is used to establish the combustion system model aiming at boiler combustion efficiency and NOx emission. The distributed particle swarm optimization algorithm based on MapReduce is used to optimize the input parameters of boiler combustion model, and weighted coefficient method is used to solve the multi-objective optimization problem (boiler combustion efficiency and NOx emissions). According to the experimental analysis, the results show that the method can optimize the boiler combustion efficiency and NOx emissions by combining different weight coefficients as needed.
机译:增加电厂锅炉的燃烧效率,减少污染物排放对节能和环境保护是重要的。电厂锅炉燃烧过程是复杂的多输入/多输出系统,具有高度的非线性和强耦合特性。有必要通过人工智能方法优化锅炉燃烧模型。然而,传统的智能算法无法有效处理大量和高维的电站数据。本文提出了一种用于锅炉的分布式燃烧优化方法。 MapReduce编程框架用于并行化所提出的算法模型,并提高其处理大数据的能力。一种改进的分布式极端学习机用于建立旨在锅炉燃烧效率和NOx排放的燃烧系统模型。基于MAPREDUCE的分布式粒子群优化算法用于优化锅炉燃烧模型的输入参数,加权系数法用于解决多目标优化问题(锅炉燃烧效率和NOx排放)。根据实验分析,结果表明,该方法可以通过根据需要组合不同的重量系数来优化锅炉燃烧效率和NOx排放。

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