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Using high-fidelity simulations and artificial neural networks in calibration and control of high-degree-of-freedom internal combustion engines.

机译:在高自由度内燃机的校准和控制中使用高保真模拟和人工神经网络。

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摘要

Internal combustion engines experience a wide range of operating conditions, thus requiring design compromises to achieve satisfactory overall performance. However, there is strong motivation to make fixed parameters variable, permitting design constraints to be relaxed. This increases the system complexity due to increased degrees of freedom and complicated interactions among these independent control variables. Developing controllers and calibration maps becomes increasingly challenging, as the total number of experiments required for calibration increases exponentially with the number of independent control variables. Hence, the traditional calibration methodology, which generates look-up tables through systematic sweep tests, becomes prohibitively expensive. This study answers the challenge imposed by high degrees of freedom through development of a simulation-based algorithm.; A high-fidelity engine simulation tool is developed to predict engine performance corresponding to different control variable combinations. Pre-optimality studies are conducted to generate high-fidelity simulation benchmarks. Since optimization is very computation-intensive, it is not feasible to use the high-fidelity tool for solving optimization problems directly. Instead, Artificial Neural Networks (ANN) trained with high-fidelity simulation results are used as surrogate models. The ANNs are shown to be capable of representing complex relationships between multiple independent variables and selected engine performance indicators, such as brake torque, fuel consumption, NOx emissions, etc. Finally, the ANN surrogate models are employed in the optimization framework that searches the optimal combination of setpoints for any given driving condition.; The proposed algorithm is demonstrated on a conventional port-injected Spark-Ignition (SI) engine with two additional degrees of freedom introduced by the dual independent Variable Valve Timing (VVT) mechanism. The intake and exhaust camshaft positions are optimized for both wide open throttle and part load, using the appropriate combinations of optimization objectives and constraints. In addition, the capability of generating fast ANN models is utilized for developing a real-time air mass flow rate estimator for a VVT engine. With proper adaptation, the algorithm can be extended for complex engine and powertrain systems with even more degrees of freedom.
机译:内燃发动机要经历各种各样的工况,因此需要进行设计折衷才能获得令人满意的总体性能。但是,强烈希望使固定参数可变,从而可以放宽设计约束。由于增加的自由度和这些独立控制变量之间的复杂交互作用,这增加了系统的复杂性。开发控制器和校准图变得越来越具有挑战性,因为校准所需的实验总数随独立控制变量的数量呈指数增长。因此,通过系统扫描测试生成查找表的传统校准方法变得非常昂贵。这项研究通过开发基于仿真的算法来应对高自由度带来的挑战。开发了一种高保真发动机仿真工具,以预测与不同控制变量组合相对应的发动机性能。进行预优化研究以生成高保真模拟基准。由于优化非常耗费计算资源,因此无法使用高保真工具直接解决优化问题。取而代之的是,将经过高保真模拟结果训练的人工神经网络(ANN)用作替代模型。所示的ANN能够表示多个独立变量与选定的发动机性能指标之间的复杂关系,例如制动扭矩,燃油消耗,NOx排放等。最后,在优化框架中采用ANN替代模型来搜索最优值任何给定驾驶条件下设定点的组合;该算法在具有两个额外自由度的传统端口注入式火花点火(SI)发动机上得到了证明,该发动机由双独立可变气门正时(VVT)机制引入。使用优化目标和约束的适当组合,可针对节气门全开和部分负载对进气和排气凸轮轴位置进行优化。此外,生成快速ANN模型的功能可用于开发VVT发动机的实时空气质量流量估算器。通过适当的调整,该算法可以扩展到具有更大自由度的复杂发动机和动力总成系统。

著录项

  • 作者

    Wu, Bin.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Mechanical.; Engineering Automotive.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 177 p.
  • 总页数 177
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;自动化技术及设备;
  • 关键词

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