Samosir Bernike Febriana, Quach Nhu Y, Chul Oh Kwang, Lim Ocktaeck
Graduate School of Mechanical Engineering, University of Ulsan, 93 Daehak-Ro, Nam-Gu, Ulsan, 44610, South Korea.
Korea Automotive Technology Institute, 303 Chungcheongnam-Do, Dongnam-Gu, Pungse-Myeon, Pungse-Ro, Cheonan, South Korea.
Environ Sci Pollut Res Int. 2024 Jan;31(1):713-722. doi: 10.1007/s11356-023-30937-3. Epub 2023 Nov 29.
The reduction of various nitrogen oxide (NOx) emissions from diesel engines is an important environmental issue due to their negative impact on air quality and public health. Selective catalytic reduction (SCR) has emerged as an effective technology to mitigate NOx emissions, but predicting the performance of SCR systems remains a challenge due to the complex chemistry involved. In this study, we propose using DNN models to predict NOx emission reductions in SCR systems. Four types of datasets were created; each consisted of five variables as inputs. We evaluated the models using experimental data collected from a diesel engine equipped with an SCR system. Our results indicated that the deep neural network (DNN) model produces precise estimates for exhaust gas temperature, NOx concentration, and De-NOx efficiency. Moreover, inclusion of additional input features, such as engine speed and temperature, improved the prediction accuracy of the DNN model. The mean absolute error (MAE) values for these parameters were 3.1 °C, 3.04 ppm, and 3.65%, respectively. Furthermore, the R-squared coefficient of determination values for the estimates were 0.912, 0.983, and 0.905, respectively. Overall, this study demonstrates the potential of using DNNs to accurately predict NOx emissions from diesel engines and provides insights into the impact of input features on the performance of the model.
由于各种氮氧化物(NOx)排放对空气质量和公众健康有负面影响,减少柴油发动机的此类排放是一个重要的环境问题。选择性催化还原(SCR)已成为一种减少NOx排放的有效技术,但由于涉及复杂的化学过程,预测SCR系统的性能仍然是一项挑战。在本研究中,我们建议使用深度神经网络(DNN)模型来预测SCR系统中的NOx减排情况。创建了四种类型的数据集;每个数据集都包含五个变量作为输入。我们使用从配备SCR系统的柴油发动机收集的实验数据对模型进行了评估。我们的结果表明,深度神经网络(DNN)模型能够精确估计废气温度、NOx浓度和脱硝效率。此外,纳入发动机转速和温度等额外输入特征提高了DNN模型的预测准确性。这些参数的平均绝对误差(MAE)值分别为3.1°C、3.04 ppm和3.65%。此外,估计值的决定系数R平方值分别为0.912、0.983和0.905。总体而言,本研究证明了使用DNN准确预测柴油发动机NOx排放的潜力,并深入了解了输入特征对模型性能的影响。