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Characterization of Model Uncertainty Features Relevant to Model Predictive Control of Lateral Vehicle Dynamics

机译:与横向车辆动力学模型预测控制有关的模型不确定性特征的表征

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The information about a system’s dynamics represented by measurement data sets are often confined to regions of restricted operations where the system is not sufficiently excited for model identification purposes. Experiments performed in closed-loop with safety constraints allow only for reduced order modeling. In the paper, a set of low order models are identified from real experimental data of the lateral dynamics of an electric passenger car. Low order models are advantageous for on-line computation in model-based control, though uncertainty due to neglected dynamics may deteriorate control performance and constraint satisfaction. The effect of uncertainty is analyzed by controller cross-validation where a controller designed based on one model is evaluated on other models playing the role of the true system. This method allows us to qualify not only model-controller pairs, but to determine the properties of input data and model uncertainty, which lead to more useful data sets, more robust and better performing controllers than the others.
机译:由测量数据集表示的有关系统动力学的信息通常仅限于受限运行的区域,在该区域中,系统没有为模型识别目的而充分激发。在具有安全约束的闭环中进行的实验仅允许进行降阶建模。在本文中,从电动乘用车横向动力学的真实实验数据中识别出一组低阶模型。低阶模型对于基于模型的控制中的在线计算是有利的,尽管由于忽略动力学而导致的不确定性可能会使控制性能和约束满足性恶化。不确定性的影响通过控制器交叉验证进行分析,其中基于一个模型设计的控制器将在扮演真实系统角色的其他模型上进行评估。这种方法不仅使我们能够对模型控制器对进行限定,而且还能确定输入数据的属性和模型不确定性,与其他模型相比,这将导致更有用的数据集,更健壮和性能更好的控制器。

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