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Evaluation of Three Different Approaches for Automated Time Delay Estimation for Distributed Sensor Systems of Electric Vehicles

机译:电动汽车分布式传感器系统自动时延估计的三种不同方法的评估

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摘要

Deviations between High Voltage (HV) current measurements and the corresponding real values provoke serious problems in the power trains of Electric Vehicle (EVs). Examples for these problems have inaccurate performance coordinations and unnecessary power limitations during driving or charging. The main reason for the deviations are time delays. By correcting these delays with accurate Time Delay Estimation (TDE), our data shows that we can reduce the measurement deviations from 25% of the maximum current to below 5%. In this paper, we present three different approaches for TDE. We evaluate all approaches with real data from power trains of EVs. To enable an execution on automotive Electronic Control Unit (ECUs), the focus of our evaluation lies not only on the accuracy of the TDE, but also on the computational efficiency. The proposed Linear Regression (LR) approach suffers even from small noise and offsets in the measurement data and is unsuited for our purpose. A better alternative is the Variance Minimization (VM) approach. It is not only more noise-resistant but also very efficient after the first execution. Another interesting approach are Adaptive Filter (AFs), introduced by Emadzadeh et al. Unfortunately, AFs do not reach the accuracy and efficiency of VM in our experiments. Thus, we recommend VM for TDE of HV current signals in the power train of EVs and present an additional optimization to enable its execution on ECUs.
机译:高压(HV)电流测量值和相应的实际值之间的偏差在电动汽车(EV)的动力总成中引起了严重的问题。这些问题的示例在驱动或充电期间具有不正确的性能协调和不必要的功率限制。偏差的主要原因是时间延迟。通过使用精确的时间延迟估计(TDE)校正这些延迟,我们的数据表明,我们可以将测量偏差从最大电流的25%减小到5%以下。在本文中,我们提出了三种不同的TDE方法。我们使用来自电动汽车动力总成的真实数据评估所有方法。为了能够在汽车电子控制单元(ECU)上执行,我们评估的重点不仅在于TDE的准确性,还在于计算效率。所提出的线性回归(LR)方法甚至遭受很小的噪声和测量数据偏移,因此不适合我们的目的。更好的替代方法是方差最小化(VM)方法。首次执行后,它不仅具有更高的抗噪性,而且效率很高。另一种有趣的方法是Emadzadeh等人介绍的自适应滤波器(AF)。不幸的是,在我们的实验中,自动对焦无法达到VM的准确性和效率。因此,我们建议在EV的动力总成中将VM用于HV电流信号的TDE,并提出其他优化措施以使其能够在ECU上执行。

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