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Model-free reinforcement learning approach to optimal speed control of combustion engines in start-up mode

机译:自由模型加固学习方法启动模式中燃烧发动机的最佳速度控制

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This paper presents a model-free reinforcement learning approach for optimal speed control of gasoline engines. First, the physics of the controlled internal combustion engines are discussed to show the uncertainty and the complexity in the model of the dynamics during start-up operation mode, which is the main motivation for challenging learning-based design. Then, a learning algorithm, particularly focused on the continuous time nonlinear dynamics, is constructed to avoid the use of the probing noise usually required in the existing learning algorithms. With the constructed learning algorithm, a learning-based control scheme is designed to solve the optimal speed control problem of a production gasoline engine. Finally, experiments are conducted on a full-scale test bench with a 4-cylinder gasoline engine used for the production of hybrid electric vehicles, and simulation and experimental validation are demonstrated.
机译:本文提出了一种可用于汽油发动机最佳速度控制的无式增强学习方法。 首先,讨论了受控内燃机的物理学来展示在启动操作模式期间动态模型中的不确定性和复杂性,这是基于学习的学习设计的主要动力。 然后,构建了一种学习算法,特别是在连续时间非线性动力学上的学习算法,以避免通常在现有的学习算法中使用探测噪声。 利用构造的学习算法,设计了一种基于学习的控制方案来解决生产汽油发动机的最佳速度控制问题。 最后,在具有用于制造混合动力电动车辆的4缸汽油发动机上进行实验,并证明了模拟和实验验证。

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