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Robust Tolerance Optimization for Internal Combustion Engines Under Parameter and Model Uncertainties Considering Metamodeling Uncertainty From Gaussian Processes

机译:考虑高斯过程元模型不确定性的参数和模型不确定性下的内燃机鲁棒公差优化

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摘要

As the core component of an automobile, the internal combustion engine (ICE) nowadays is still a typical complex engineering system. Tolerance design for ICEs is of great importance since small changes in the dimensions and clearances of ICE components may result in large variations on the performance and cost of manufactured products. In addition, uncertainty in tolerance design has great impact on the engine performance. Although tolerance optimization for the key components of ICEs has been discussed, few of them take uncertainty into consideration. In this regard, robust optimization (RO) for the tolerances of ICEs remains a critical issue. In this work, a novel RO approach is proposed to deal with the tolerance optimization problem for ICEs under parameter and model uncertainties, even considering metamodeling uncertainty from Gaussian processes (GP). A typical parameter uncertainty in ICEs exists in the rotation speed which can vary randomly due to the inherent randomness. AVL EXCITE software is used to build the simulation models of ICE components, which brings in model uncertainty. GP models are used as the analysis model in order to combine the corresponding simulation and experimental data together, which introduces metamodeling uncertainty. The proposed RO approach provides a general and systematic procedure for determining robust optimal tolerances and has competitive advantages over traditional experience-based tolerance design. In addition to the ICE example, a numerical example is utilized to demonstrate the applicability and effectiveness of the proposed approach.
机译:作为汽车的核心组件,如今的内燃机(ICE)仍然是典型的复杂工程系统。 ICE的公差设计非常重要,因为ICE组件的尺寸和间隙的微小变化可能会导致制成品的性能和成本发生较大变化。另外,公差设计的不确定性对发动机性能有很大影响。尽管已经讨论了ICE关键部件的公差优化,但很少考虑不确定性。在这方面,ICE公差的鲁棒优化(RO)仍然是一个关键问题。在这项工作中,提出了一种新颖的反渗透方法,即使在考虑了来自高斯过程(GP)的元模型不确定性的情况下,也能在参数和模型不确定性下处理ICE的公差优化问题。 ICE中的典型参数不确定性存在于转速中,由于固有的随机性,转速可能会随机变化。 AVL EXCITE软件用于构建ICE组件的仿真模型,从而带来模型不确定性。 GP模型用作分析模型,以将相应的仿真数据和实验数据结合在一起,从而引入元模型不确定性。所提出的反渗透方法为确定鲁棒的最佳公差提供了通用和系统的程序,与传统的基于经验的公差设计相比具有竞争优势。除ICE示例外,还使用一个数字示例来演示所提出方法的适用性和有效性。

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