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Data-driven Model Predictive Control for Lean NO x Trap Regeneration

机译:精益NO的数据驱动模型预测控制 x 陷阱再生

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摘要

Lean NO x Trap (LNT) is one of the most effective after-treatment technologies used to reduce NO x emissions of diesel engines. One relevant problem in this context is LNT regeneration timing control. This problem is indeed difficult due to the fact that LNTs are highly nonlinear systems, involving complex physical/chemical processes that are hard to model. In this paper, a novel data-driven model predictive control (D 2 -MPC) approach for regeneration timing of LNTs is proposed, allowing us to overcome these issues. This approach does not require a physical model of the engine/trap system but is based on low-complexity polynomial prediction model, directly identified from data. The regeneration timing is computed through an optimization algorithm, which uses the identified model to predict the LNT behavior. The proposed D 2 -MPC approach is tested in a co-simulation study, where the plant is represented by a detailed LNT model, developed using the well-known commercial tool AMEsim, and the controller is implemented in Matlab/Simulink.
机译:稀薄的NOx捕集阱(LNT)是用于减少柴油机NOx排放的最有效的后处理技术之一。在这种情况下,一个相关的问题是LNT再生定时控制。由于LNT是高度非线性的系统,涉及难以建模的复杂物理/化学过程,因此,这个问题确实很困难。本文提出了一种新颖的数据驱动模型预测控制(D 2 -MPC)方法,用于LNTs的再生定时,使我们能够克服这些问题。该方法不需要引擎/陷阱系统的物理模型,而是基于直接从数据中识别的低复杂度多项式预测模型。再生时间是通过优化算法计算的,该算法使用已识别的模型来预测LNT行为。在共同仿真研究中对提出的D 2 -MPC方法进行了测试,该工厂以详细的LNT模型为代表,该模型使用著名的商用工具AMEsim开发,控制器在Matlab / Simulink中实现。

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