可预测的数据驱动资源管理:在自治平台上使用Autoware的实现

Soroush Bateni, Cong Liu
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引用次数: 8

摘要

自主嵌入式系统(AES)在自动驾驶汽车等许多应用领域正变得越来越突出。然而,这种系统中相当有限的内存空间与工作负载的数据密集型之间的冲突给数据和内存管理带来了严峻的挑战,这很容易导致输出自治控制决策的不可预测性。在本文中,我们以数据驱动的AES为目标,通过建立一个以数据为中心的系统模型,该模型以集成架构为特征,灵感来自于丰田公司开发的成熟的生产均衡方法Heijunka。基于这个新模型,我们开发了ResCue,它包含一个动态数据调度程序和一个灵活的内存保留方案,以确保时间和空间数据的可用性,这将保证在会议截止日期和最小化抖动方面产生输出的可预测性。我们使用流行的端到端自动驾驶软件Autoware,在aes专用的NVIDIA AGX Xavier SoC之上,在各种设置下实施并广泛评估ResCue。结果表明,ResCue从不错过最后期限,产生的最大抖动仅为834微秒,同时产生相当小的开销。此外,与普通Autoware相比,ResCue能够显著减少内存消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictable Data-Driven Resource Management: an Implementation using Autoware on Autonomous Platforms
Autonomous embedded systems (AES) are becoming prominent in many application domains such as self-driving cars. However, the conflict between the rather limited memory space in such systems and the data intensive nature of the workloads creates hard challenges on data and memory management, which may easily cause unpredictability in outputting autonomous control decisions. In this paper, we target data-driven AES featuring the integrated architecture by establishing a data-centric system model inspired by Heijunka, a mature production leveling methodology developed by Toyota. Based on this new model, we develop ResCue which contains a dynamic data scheduler and a flexible memory reservation scheme to ensure both temporal and spatial data availability, which shall guarantee predictability in generating outputs in terms of both meeting deadlines and minimizing jitters. We implement and extensively evaluate ResCue under various settings using a popular end-to-end self-driving software Autoware on top of the AES-specific NVIDIA AGX Xavier SoC. Results show that ResCue never misses a deadline and yields a maximum jitter of merely 834 microseconds, while incurring rather small overhead. Moreover, ResCue is able to noticeably reduce memory consumption compared to vanilla Autoware.
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