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Improvement on the linear and nonlinear auto-regressive model for predicting the NOx emission of diesel engine

机译:线性和非线性自回归模型预测柴油机NOx排放的改进

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Given the increasingly stringent emission regulations, an accurate model of emission prediction is required for the aftertreatment systems of diesel engines. For example, the selective catalytic reduction system can realize higher accuracy emission control if the mass of nitrogen oxides (NOx) is known. Given its simplicity, convenience, and effectiveness, the method of data-driven modeling has been widely researched and considered a primary method to estimate the NOx mass before it reaches the after treatment device of a diesel engine. To fully use the known engine operating data and therefore improve the prediction accuracy; this study proposes and develops a general linear and nonlinear auto-regressive model with exogenous inputs (GNARX) for NOx prediction. A recursive least square algorithm with forgetting factor is given to estimate the model parameters, and a new simulated annealing based pruning algorithm is developed to identify the model structure. The proposed methods are first used to model the simulation and engineering data to validate their effectiveness and superiority in comparison to the conventional methods. Based on gray relational analysis, the main factors that influence NOx formation, such as the net engine torque, turbo speed, and accelerator pedal position, are then determined as the inputs for modeling the NOx emission of the diesel engine. The results show that the modeling and prediction accuracy of the GNARX model are higher than those of other models, which indicates that the GNARX model is feasible to predict NOx emission. (C) 2016 Elsevier B.V. All rights reserved.
机译:鉴于日益严格的排放法规,柴油发动机的后处理系统需要精确的排放预测模型。例如,如果已知氮氧化物(NOx)的质量,则选择性催化还原系统可以实现更高精度的排放控制。鉴于其简单,方便和有效,数据驱动建模方法已得到广泛研究,并被认为是估算NOx到达柴油机后处理设备之前的主要方法。充分利用已知的发动机运行数据,从而提高预测精度;这项研究提出并开发了一个带有线性输入的通用线性和非线性自回归模型(GNARX),用于NOx预测。给出了具有遗忘因子的递推最小二乘算法来估计模型参数,并开发了一种新的基于模拟退火的修剪算法来识别模型结构。所提出的方法首先用于对仿真和工程数据进行建模,以验证其有效性和优越性。然后,基于灰色关联分析,确定影响NOx形成的主要因素,例如净发动机扭矩,涡轮速度和油门踏板位置,作为建模柴油机NOx排放的输入。结果表明,GNARX模型的建模和预测精度均高于其他模型,表明GNARX模型可用于预测NOx排放。 (C)2016 Elsevier B.V.保留所有权利。

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