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A multi-layer feed forward neural network model for accurate prediction of flue gas sulfuric acid dew points in process industries

机译:多层前馈神经网络模型,用于准确预测过程工业中的烟道气硫酸露点

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摘要

Acidic combustion gases can cause rapid corrosion when they condense on pollution control or energy recovery equipments. Since the potential of sulfuric acid condensation from flue gases is of considerable economic significance, a multi-layer feed forward artificial neural network has been presented for accurate prediction of the flue gas sulfuric acid dew points to mitigate the corrosion problems in process and power plants. According to the network's training, validation and testing results, a three layer neural network with four neurons in the hidden layer is selected as the best architecture for accurate prediction of sulfuric acid dew points. The presented model is very accurate and reliable for predicting the acid dew points over wide ranges of sulfur trioxide and water vapor concentrations. Comparison of the suggested neural network model with the most important existing correlations shows that the proposed neuromorphic model outperforms the other alternatives both in accuracy and generality. The predicted flue gas sulfuric acid dew points are in excellent agreement with experimental data suggesting the accuracy of the proposed neural network model for predicting the sulfuric acid condensation in stacks, pollution control devices, economizers and flue gas recovery systems in process industries.
机译:酸性燃烧气体凝结在污染控制或能量回收设备上时,会引起快速腐蚀。由于烟道气中硫酸冷凝的潜力具有重要的经济意义,因此提出了一种多层前馈人工神经网络,用于准确预测烟道气的硫酸露点,以减轻过程和发电厂中的腐蚀问题。根据网络的训练,验证和测试结果,在隐层中具有四个神经元的三层神经网络被选择为准确预测硫酸露点的最佳架构。所提出的模型对于预测三氧化硫和水蒸气浓度的广泛范围内的酸露点是非常准确和可靠的。所建议的神经网络模型与现有最重要的相关性的比较表明,所提出的神经形态模型在准确性和通用性上均优于其他方法。预测的烟道气硫酸露点与实验数据非常吻合,表明所提出的神经网络模型可用于预测过程工业烟囱,污染控制装置,节能器和烟道气回收系统中的硫酸冷凝。

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