A Hierarchical Assessment Strategy on Soft Error Propagation in Deep Learning Controller

Ting Liu, Yuzhuo Fu, Yan Zhang, Bin Shi
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引用次数: 1

Abstract

Deep learning techniques have been introduced into the field of intelligent controller design in recent years and become an effective alternative in complex control scenarios. In addition to improve control robustness, deep learning controllers (DLCs) also provide a potential fault tolerance to internal disturbances (such as soft errors) due to the inherent redundant structure of deep neural networks (DNNs). In this paper, we propose a hierarchical assessment to characterize the impact of soft errors on the dependability of a PID controller and its DLC alternative. Single-bit-flip injections in underlying hardware and time series data collection from multiple abstraction layers (ALs) are performed on a virtual prototype system based on an ARM Cortex-A9 CPU, with a PID controller and corresponding recurrent neural network (RNN) implemented DLC deployed on it. We employ generative adversarial networks and Bayesian networks to characterize the local and global dependencies caused by soft errors across the system. By analyzing cross-AL fault propagation paths and component sensitivities, we discover that the parallel data processing pipelines and regular feature size scaling mechanism in DLC can effectively prevent critical failure causing faults from propagating to the control output.
深度学习控制器软误差传播的分层评估策略
近年来,深度学习技术被引入智能控制器设计领域,成为复杂控制场景的有效替代方案。除了提高控制鲁棒性外,深度学习控制器(dlc)还提供了对内部干扰(如软错误)的潜在容错能力,这是由于深度神经网络(dnn)固有的冗余结构。在本文中,我们提出了一种分层评估来表征软误差对PID控制器及其DLC替代品的可靠性的影响。在基于ARM Cortex-A9 CPU的虚拟样机系统上进行底层硬件的单比特翻转注入和来自多个抽象层(al)的时间序列数据收集,并在其上部署了PID控制器和相应的递归神经网络(RNN)。我们使用生成对抗网络和贝叶斯网络来表征由整个系统的软错误引起的局部和全局依赖关系。通过分析跨al故障传播路径和组件灵敏度,我们发现DLC中并行的数据处理管道和规则的特征尺寸缩放机制可以有效地防止关键故障导致的故障传播到控制输出。
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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