基于RBF神经网络和多目标遗传算法的燃烧优化

Dongfeng Wang, Q. Li, Li Meng, P. Han
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引用次数: 3

摘要

燃煤锅炉运行面临着降低运行成本和降低排放的双重要求。本文利用RBF神经网络分别建立了锅炉效率模型和NOx排放模型。为了在不重复尝试的情况下获得更精确的模型,引入遗传算法对RBF网络的参数进行优化。然后在得到锅炉燃烧模型后,采用非支配排序遗传算法- ii进行搜索,确定锅炉运行的最优解。实验结果表明,该方法能明显提高锅炉效率,降低NOx排放。通过分析可以看出,该方法优于传统的利用权重将锅炉效率和NOx排放结合在一个目标函数中的方法。
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Combustion Optimization Based on RBF Neural Network and Multi-objective Genetic Algorithms
Coal-fired boiler operation is confronted with two requirements to reduce its operation cost and to lower its emission. In this paper, a model for boiler efficiency and a model for NOx emission are set up respectively by RBF neural network. In order to obtain more accurate models without trying repeatedly, GA is introduced to optimize the parameter of RBF network. Then Non-Dominated Sorting Genetic Algoritthm-II is employed to perform a search to determine the optimum solution of boiler operation after we obtain boiler combustion model. Experimental results prove that the method proposed in this paper can improve boiler efficiency and reduce NOx emission obviously. Through analysis, we can see this method is better than the traditional method which uses weights to combine boiler efficiency and NOx emission in one objective function.
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