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Modified Non-dominated Sorting Genetic Algorithm (MNSGA-II) Applied in Multi-objective Optimization of a Coal-fired Boiler Combustion

机译:用于燃煤锅炉燃烧的多目标优化的改进的非主导分选遗传算法(MNSGA-II)

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This paper discussed application of modified non-dominated sorting genetic algorithm-II (MNSGA-H) to multi-objective optimization of a coal-fired boiler combustion, the two objectives considered are minimization of overall heat loss and NOx emissions from coal-fired boiler. In the first step, BP neural network was proposed to establish a mathematical model predicting the NOx emissions & overall heat loss from the boiler. Then, BP model and the non-dominated sorting genetic algorithm II (NSGA-II) were combined to gain the optimal operating parameters. According to the problems such as premature convergence and uneven distribution of Pareto solutions exist in the application of NSGA-II, corresponding improvements in the crowded-comparison operator and crossover operator were performed. The optimal results show that MNSGA-II can be a good tool to solve the problem of multi-objective optimization of a coal-fired combustion, which can reduce NOx emissions and overall heat loss effectively for the coal-fired boiler. Compared with NSGA-II, the Pareto set obtained by the MNSGA-II shows a better distribution and better quality.
机译:从燃煤锅炉的总热损失和NOx排放的修饰的非支配遗传算法-II(MNSGA-H)排序,以燃煤锅炉燃烧的多目标优化,所考虑的两个目标是最小化的本文所讨论的应用。在第一步骤中,神经网络被提出建立数学模型预测来自锅炉的NOx排放物&整体热损失。然后,BP模型和非支配排序遗传算法II(NSGA-II)合并,以获得最优操作参数。根据问题,如过早收敛和Pareto解的不均匀分布在NSGA-II的应用程序存在,对应于拥挤-比较运算符和交叉算子的改进进行。最佳的结果表明,MNSGA-II可以解决燃煤燃烧,可有效减少NOx排放和整体热损失的燃煤锅炉的多目标优化问题的好工具。与NSGA-II相比,帕累托集科MNSGA-II节目更好地分配和更好的质量获得。

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