Cam-Phasing Optimization Using Artificial Neural Networks as Surrogate Models-Maximizing Torque Output

Bin Wu, R. Prucka, Z. Filipi, D. Kramer, G. Ohl
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引用次数: 40

Abstract

Variable Valve Actuation (WA) technology provides high potential in achieving high performance, low fuel consumption and pollutant reduction. However, more degrees of freedom impose a big challenge for engine characterization and calibration. In this study, a simulation based approach and optimization framework is proposed to optimize the setpoints of multiple independent control variables. Since solving an optimization problem typically requires hundreds of function evaluations, a direct use of the high-fidelity simulation tool leads to the unbearably long computational time. Hence, the Artificial Neural Networks (ANN) are trained with high-fidelity simulation results and used as surrogate models, representing engine's response to different control variable combinations with greatly reduced computational time. To demonstrate the proposed methodology, the cam-phasing strategy at Wide Open Throttle (WOT) is optimized for a dual-independent Variable Valve Timing (WT) engine. The optimality of the cam-phasing strategy is validated with engine dynamometer tests.
利用人工神经网络作为替代模型的凸轮相位优化-最大扭矩输出
可变阀致动(WA)技术在实现高性能、低油耗和减少污染方面提供了巨大的潜力。然而,更多的自由度给发动机的特性和校准带来了巨大的挑战。在本研究中,提出了一种基于仿真的方法和优化框架来优化多个独立控制变量的设定点。由于解决优化问题通常需要数百个函数评估,直接使用高保真仿真工具会导致难以忍受的长计算时间。因此,人工神经网络(Artificial Neural Networks, ANN)采用高保真仿真结果进行训练,并作为替代模型,代表发动机对不同控制变量组合的响应,大大减少了计算时间。为了证明所提出的方法,对双独立可变气门正时(WT)发动机在大开节流阀(WOT)下的凸轮相位策略进行了优化。通过发动机测功机试验验证了凸轮相位策略的最优性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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