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Online linearization-based neural predictive control of air–fuel ratio in SI engines with PID feedback correction scheme

机译:基于在线线性化的SI发动机空燃比神经预测控制及PID反馈修正方案

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摘要

Model predictive control (MPC) frequently uses online identification to overcome model mismatch. However, repeated online identification does not suit the real-time controller, due to its heavy computational burden. This work presents a computationally efficient constrained MPC scheme using nonlinear prediction and online linearization based on neural models for controlling air–fuel ratio of spark ignition engine to its stoichiometric value. The neural model for AFR identification has been trained offline. The model mismatch is taken care of by incorporating a PID feedback correction scheme. Quadratic programming using active set method has been applied for nonlinear optimization. The control scheme has been tested on mean value engine model simulations. It has been shown that neural predictive control with online linearization using PID feedback correction gives satisfactory performance and also adapts to the change in engine systems very quickly.
机译:模型预测控制(MPC)经常使用在线识别来克服模型不匹配的问题。然而,由于其繁重的计算负担,重复的在线识别不适合实时控制器。这项工作提出了一种计算有效的受约束的MPC方案,该方案使用基于神经模型的非线性预测和在线线性化来控制火花点火发动机的空燃比至其化学计量值。用于AFR识别的神经模型已离线训练。通过合并PID反馈校正方案,可以解决模型不匹配的问题。使用主动集方法的二次规划已应用于非线性优化。该控制方案已在平均值引擎模型仿真中进行了测试。结果表明,采用PID反馈校正的在线线性化神经预测控制具有令人满意的性能,并且可以非常迅速地适应发动机系统的变化。

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