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Iterative Learning on Dual-fuel Control of Homogeneous Charge Compression Ignition * * Financial support for this research provided by Biofuelnet Canada.

机译:均质充气压缩点火双燃料控制的迭代学习 * < ce:footnote id =“ fn1”> * 加拿大生物燃料网为这项研究提供了资金支持。

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An Iterative Learning Controller (ILC) is used to control a dual-fuel Homogeneous Charge Compression (HCCI) engine. The engine is a CFR engine with in-cylinder pressure measurement ports and is operated at 100°C intake heating, 800 RPM and a compression ratio of 11:1. To control combustion timing and load, the amount of iso-octane and n-heptane injected into the manifold are used as inputs. The metrics used for combustion timing and load are CA50, crank angle when 50% of the fuel is burned, and gross IMEP, respectively. Using these inputs and outputs a system identification is performed and an ARMAX model is obtained. This model is then used to generate a norm optimal control. The norm optimal control is compared to a model-less control strategy that involves populating the off-diagonal of the learning matrix using a Jacobian estimate inverse. Both systems are used to follow a reference trajectory involving a step input in IMEP then CA50. The model-less control outperforms the norm optimal in both convergence speed and final iteration error. Application of non-causal filters within the iteration is also tested using a zero-phase filter and a Gaussian filter. The zero-phase has faster convergence than either the Gaussian or filter-less and has better final iteration error. This gives the best ILC control as model-less with zero-phase filter. This control is then compared with two PI controllers. It is found that the ILC outperforms the PI controllers after 3 iterations.
机译:迭代学习控制器(ILC)用于控制双燃料均质充气压缩(HCCI)引擎。该发动机是具有缸内压力测量端口的CFR发动机,在100°C进气加热,800 RPM和11:1的压缩比下运行。为了控制燃烧正时和负荷,注入歧管的异辛烷和正庚烷的量用作输入。用于燃烧正时和负载的度量分别是CA50,燃烧50%的燃料时的曲柄角和总IMEP。使用这些输入和输出,可以执行系统识别并获得ARMAX模型。然后,该模型用于生成规范最佳控制。将范数最优控制与无模型控制策略进行比较,该模型涉及使用Jacobian估计逆矩阵填充学习矩阵的非对角线。这两个系统都用于遵循参考轨迹,该参考轨迹涉及IMEP中的步输入,然后输入CA50。在收敛速度和最终迭代误差方面,无模型控制均优于最优准则。还使用零相位滤波器和高斯滤波器测试了迭代中非因果滤波器的应用。零相位比高斯或无滤波器的收敛更快,并且最终迭代误差更好。零相位滤波器可实现无模型的最佳ILC控制。然后将该控件与两个PI控制器进行比较。发现经过3次迭代后,ILC的性能优于PI控制器。

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