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Robust neural predictive control of normalized air-to-fuel ratio in internal combustion engines

机译:内燃机中归一化空气 - 燃料比的强大神经预测控制

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In this paper, a neural predictive controller (NPC) is designed to control emission pollutants of ground vehicles. The proposed controller is designed based on robust structure of model predictive control (MPC) system in order to control normalized air-to-fuel ratio (lambda) within ±1% of the stoichiometric value. As an accurate and control oriented model of engine, a mean value engine model (MVEM) of a spark ignition engine is developed to generate simulation data. Engine model identification is preformed through an off-line multi-layer Perceptron neural network (MLPN) which is trained by gradient descent back propagation algorithm. In the controller, an on-line MLPN is designed to generate optimum control action signals of the closed loop system. The performance of the new controller is compared with the performance of a standard MPC system which is using constrained minimization of an introduced cost function through Gradient Descent (GD) algorithm. According to the simulation results, the calculation time cost of the NPC is significantly smaller than the standard model predictive systems. Moreover, the proposed controller is satisfactorily robust to engine time varying dynamics and unstructured uncertainties.
机译:在本文中,设计了一种神经预测控制器(NPC),用于控制地面车辆的排放污染物。所提出的控制器基于模型预测控制(MPC)系统的鲁棒结构设计,以便在化学计量值的±1%内控制归一化的空气 - 燃料比(Lambda)。作为发动机的准确和控制导向模型,开发了一种火花点火引擎的平均值发动机模型(MVEM)以产生模拟数据。通过梯度下降反向传播算法训练,通过离线多层Perceptron神经网络(MLPN)预先形成发动机模型识别。在控制器中,设计在线MLPN以产生闭环系统的最佳控制动作信号。将新控制器的性能与标准MPC系统的性能进行比较,该标准MPC系统通过梯度下降(GD)算法使用引入的成本函数的约束最小化。根据仿真结果,NPC的计算时间成本明显小于标准模型预测系统。此外,所提出的控制器对发动机时间变化动态和非结构化的不确定性令人满意地稳健。

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