Battery- and Aging-Aware Embedded Control Systems for Electric Vehicles

Wanli Chang, Alma Pröbstl, Dip Goswami, Majid Zamani, S. Chakraborty
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引用次数: 25

Abstract

In this paper, for the first time, we propose a battery- and aging-aware optimization framework for embedded control systems design in electric vehicles (EVs). Performance and reliability of an EV are influenced by feedback control loops implemented into in-vehicle electrical/electronic (E/E) architecture. In this context, we consider the following design aspects of an EV: (i) battery usage, (ii) processor aging of the in-vehicle embedded platform. In this work, we propose a design optimization framework for embedded controllers with gradient-based and stochastic methods taking into account quality of control (QoC), battery usage and processor aging. First, we obtain a Pareto front between QoC and battery usage utilizing the optimization framework. Well-distributed non-dominated solutions are achieved by solving a constrained bi-objective optimization problem. In general, QoC of a control loop highly depends on the sampling period. When the processor ages, on-chip monitors could be used to measure the delay of the critical path, based on which, the processor operating frequency is reduced to ensure correct functioning. As a result, the sampling period gets longer opening up the possibility of QoC deterioration, which is highly undesirable for safety-critical applications in EVs. Utilizing the proposed framework, we take into account the effect of processor aging by re-optimizing the controller design with the prolonged sampling period resulting from processor aging. We illustrate the approach considering electric motor control in EVs. Our experimental results show that the effect of processor aging on QoC deterioration can be mitigated by controller re-optimization with a slight compromise on battery usage.
电动汽车电池和老化感知嵌入式控制系统
在本文中,我们首次提出了一种用于电动汽车嵌入式控制系统设计的电池和老化感知优化框架。电动汽车的性能和可靠性受到车载电气/电子(E/E)架构中反馈控制回路的影响。在这种情况下,我们考虑EV的以下设计方面:(i)电池使用,(ii)车载嵌入式平台的处理器老化。在这项工作中,我们提出了一个基于梯度和随机方法的嵌入式控制器设计优化框架,同时考虑了控制质量(QoC),电池使用和处理器老化。首先,我们利用优化框架获得了QoC和电池使用量之间的Pareto前沿。通过求解约束双目标优化问题,得到分布良好的非支配解。一般来说,控制回路的QoC高度依赖于采样周期。当处理器老化时,可以使用片上监视器来测量关键路径的延迟,以此来降低处理器的工作频率以确保正常工作。因此,采样周期变得更长,从而增加了QoC恶化的可能性,这对于电动汽车的安全关键应用来说是非常不可取的。利用所提出的框架,我们考虑了处理器老化的影响,通过重新优化控制器设计,延长采样周期导致处理器老化。我们举例说明该方法考虑电动汽车的电动机控制。我们的实验结果表明,处理器老化对QoC劣化的影响可以通过控制器重新优化来缓解,同时稍微牺牲电池使用。
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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