高压燃油供应系统的安全主动学习

Mark Schillinger, Benedikt Ortelt, Benjamin Hartmann, J. Schreiter, Mona Meister, D. Nguyen-Tuong, O. Nelles
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引用次数: 6

摘要

当将技术系统建模为黑盒模型时,在采用安全约束的情况下,在最短的时间内获得尽可能多的信息测量数据是至关重要的。在主动学习领域讨论了测量数据在线生成的优化方法。安全主动学习将模型质量查询策略的优化与探索方案相结合,以维护用户定义的安全约束。本文将一种基于高斯过程模型(GP模型)的安全主动学习方法应用于汽油机高压供油系统。为此,需要对算法进行若干改进。实现了GP模型超参数的在线优化,其中采取了特殊措施以避免与安全相关的高估。选择合适的风险函数,并考虑到样本点的轨迹来估计样本的可行性。在仿真和试验车上对该算法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Safe Active Learning of a High Pressure Fuel Supply System
When modeling technical systems as black-box models, it is crucial to obtain as much and as informative measurement data as possible in the shortest time while employing safety constraints. Methods for an optimized online generation of measurement data are discussed in the field of Active Learning. Safe Active Learning combines the optimization of the query strategy regarding model quality with an exploration scheme in order to maintain userdefined safety constraints. In this paper, the authors apply an approach for Safe Active Learning based on Gaussian process models (GP models) to the high pressure fuel supply system of a gasoline engine. For this purpose, several enhancements of the algorithm are necessary. An online optimization of the GP models’ hyperparameters is implemented, where special measures are taken to avoid a safety-relevant overestimation. A proper risk function is chosen and the trajectory to the sample points is taken into account regarding the estimation of the samples feasibility. The algorithm is evaluated in simulation and at a test vehicle.
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