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A model to predict ammonia emission using a modified genetic artificial neural network: Analyzing cement mixed with fly ash from a coal-fired power plant

机译:使用改进的遗传人工神经网络预测氨气排放的模型:分析燃煤电厂掺有粉煤灰的水泥

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摘要

Selective catalytic reduction (SCR) and selected non-catalytic reduction (SNCR) use ammonia as a catalyst for removing nitrogen oxides in power plants. However, unreacted ammonia in the flue gas denitrification system reacts chemically with SO 3 and is adsorbed on the coal fly ash. Unfortunately, fly ash is commonly mixed with concrete because of its technological and economic benefits, without consideration of secondary environmental contamination. We measured the ammonia emissions from different types of fly ash mortar and found they have a strong correlation with the mixing ratio of fly ash, the mortar age, and the size. In order to find out this correlation and thus predict the ammonia concentration under different conditions, we constructed artificial neural network (ANN) models. The comparison results show that the ANN model initialized with the genetic ANN (GANN) algorithm has the smallest rootmean-square error (RMSE) between given and predicted outputs. (C) 2019 Elsevier Ltd. All rights reserved.
机译:选择性催化还原(SCR)和选择性非催化还原(SNCR)使用氨作为催化剂来去除发电厂中的氮氧化物。但是,烟气脱硝系统中未反应的氨与SO 3发生化学反应,并被吸附在粉煤灰上。不幸的是,由于飞灰的技术和经济效益,它通常与混凝土混合,而没有考虑二次环境污染。我们测量了不同类型的粉煤灰砂浆中的氨气排放量,发现它们与粉煤灰的混合比,砂浆使用年限和尺寸密切相关。为了找出这种相关性,从而预测不同条件下的氨浓度,我们构建了人工神经网络(ANN)模型。比较结果表明,用遗传ANN(GANN)算法初始化的ANN模型在给定输出和预测输出之间具有最小的均方根误差(RMSE)。 (C)2019 Elsevier Ltd.保留所有权利。

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