Genetic Algorithm for Scheduling Time-Triggered Traffic in Time-Sensitive Networks

Maryam Pahlevan, R. Obermaisser
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引用次数: 52

Abstract

Time-Sensitive Networking (TSN) is introduced as a series of Ethernet extensions to address strict temporal constraints of modern mission-critical applications. TSN offers determinism using global Time-Triggered (TT) transmission schedules. Most of existing scheduling solutions ignore interdependence of routing and scheduling problems and derive the design space of system implementations only from scheduling constraints. This strategy limits the capability of former approaches to compute a global schedule of TT communication for several real-time systems. In this paper, we present a heuristic scheduling approach based on a genetic algorithm. Our approach combines the routing and scheduling constraints and generates static global schedules using joint constraints in a single-step. The number of scheduling possibilities within the design space that is derived from joint routing and scheduling constraints increases in comparison to the approaches that only use the fixed routing. Thereby, the schedulability is improved by our solution. Our genetic-based approach also considers the distribution of real-time applications, multicast patterns and interdependencies of TT flows in the scheduling process. Due to optimized task binding and resource allocation, the experimental results show a significant enhancement of schedulability, TT transmission efficiency and resource utilization compared to the state-of-art solutions.
时间敏感网络中时间触发流量调度的遗传算法
时间敏感网络(TSN)作为一系列以太网扩展引入,以解决现代关键任务应用程序的严格时间限制。TSN使用全局时间触发(TT)传输调度提供确定性。现有的调度方案大多忽略了路由和调度问题的相互依赖性,只从调度约束中推导出系统实现的设计空间。这种策略限制了以前的方法计算多个实时系统的全局TT通信调度的能力。本文提出了一种基于遗传算法的启发式调度方法。我们的方法结合了路由和调度约束,并在单步中使用联合约束生成静态全局调度。与仅使用固定路由的方法相比,来自联合路由和调度约束的设计空间内调度可能性的数量增加了。因此,我们的解决方案提高了可调度性。我们基于遗传的方法还考虑了实时应用的分布、多播模式和调度过程中TT流的相互依赖性。由于优化了任务绑定和资源分配,实验结果表明,与目前的解决方案相比,该方案在可调度性、TT传输效率和资源利用率方面有显著提高。
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