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Process for the Validation of Using Synthetic Driving Cycles Based on Naturalistic Driving Data Sets

机译:基于自然驾驶数据集使用合成驾驶循环的验证过程

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Synthetic Driving Cycles have been used in numerous studies to describe a certain driving profile of relevance. An important purpose of synthetic cycles is to limit the necessary time on a test-rig or to reduce the computational effort within simulations, which is achieved by compressing a larger amount of gathered operating data from a certain vehicle or a vehicle fleet to a necessary minimum. Interestingly, despite the intensive use of the synthetic driving cycles, there is only limited literature on the validation of using synthetic driving cycles. Therefore, the scope of this work is to further investigate under which conditions synthetic driving cycles can be used to replace the entirety of the relevant operating data in the evaluation of a vehicle’s consumption. We apply a longitudinal vehicle simulation model to calculate the fuel and electric consumption of vehicles with different powertrain concepts on many generated synthetic driving cycles for different compression rates. We then compare that to the consumption if considering the original driving data. A legislative driving cycle (WLTC) as well as naturalistic driving data sets are used for the evaluation. The results show, that synthetic driving cycles allow for a compact representation of the original data sets but possible compression rates depend on the specific driving data. The presented two-step process can be extended to a generalized validation process for the use of synthetic driving cycles.
机译:许多研究中使用了合成驾驶循环来描述相关性的某种驾驶轮廓。合成周期的重要目的是限制测试钻机上的必要时间,或者降低模拟内的计算工作,这是通过压缩来自某个车辆或车队的更多收集的操作数据来实现必要的最低限度。有趣的是,尽管采用了合成驾驶循环的密集使用,但在使用合成驾驶循环的验证时只有有限的文献。因此,本作作品的范围是进一步研究,在该条件下可以使用合成驾驶循环来替换车辆消耗评估中的相关操作数据。我们应用纵向车辆仿真模型,以计算不同动力总成概念的车辆的燃料和电力消耗,以实现不同的压缩速率的许多产生的合成驾驶循环。然后,如果考虑原始驾驶数据,我们将其与消耗进行比较。立法驾驶循环(WLTC)以及自然驾驶数据集用于评估。结果表明,该合成驾驶循环允许原始数据集的紧凑表示,但是可能的压缩率取决于特定的驾驶数据。所提出的两步过程可以扩展到用于使用合成驾驶循环的广义验证过程。

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