Enhancing Performance in Mixed-Criticality Real-Time Systems Through Learner-Based Resource Management

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Mohammadreza Saberikia, Hakem Beitollahi, Rasool Jader, Hamed Farbeh
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Abstract

In mixed-criticality (MC) systems, tasks with varying criticality levels share resources, leading to challenges in resource management during mode transitions. Existing approaches often result in suboptimal performance due to resource contention and criticality level inheritance. This paper introduces a novel learner-based resource management strategy that predicts optimal mode switching times and prevents low-criticality tasks from acquiring resources during critical periods. By combining vector autoregressive (VAR) and feed-forward neural network (FNN) techniques, our approach effectively anticipates system state changes and optimises resource allocation. Specifically, the method extracts key system features, including processor temperature, soft error rate, cache miss rate, and task slack time. A hybrid forecasting model then predicts the probability of a mode transition within a specified time horizon. Based on these predictions, the system proactively denies resource requests from low-criticality tasks during periods of high probability of mode transition, ensuring the availability of resources for high-criticality tasks. Comprehensive simulations demonstrate significant reductions in blocking time (up to 75%), miss rate (up to 9.35%), and energy consumption (up to 12.15%) compared to state-of-the-art methods. These improvements enhance system reliability and efficiency, making it suitable for safety-critical applications.

Abstract Image

通过基于学习者的资源管理提高混合临界实时系统的性能
在混合临界系统中,不同临界级别的任务共享资源,这给模式转换期间的资源管理带来了挑战。由于资源争用和临界级别的继承,现有的方法常常导致性能次优。本文介绍了一种新的基于学习者的资源管理策略,该策略可以预测最优模式切换时间,并防止低关键任务在关键时期获取资源。该方法结合向量自回归(VAR)和前馈神经网络(FNN)技术,有效预测系统状态变化并优化资源分配。具体来说,该方法提取了关键的系统特征,包括处理器温度、软错误率、缓存缺失率和任务空闲时间。然后,混合预测模型预测在指定时间范围内模态转换的概率。基于这些预测,系统在高概率模式转换期间主动拒绝低临界任务的资源请求,确保高临界任务的资源可用性。综合模拟表明,与最先进的方法相比,阻塞时间(高达75%)、漏报率(高达9.35%)和能耗(高达12.15%)显著降低。这些改进提高了系统的可靠性和效率,使其适用于安全关键应用。
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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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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