开放软实时系统的可伸缩调度策略设计

R. Glaubius, T. Tidwell, B. Sidoti, David Pilla, Justin Meden, C. Gill, W. Smart
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引用次数: 10

摘要

开放式软实时系统,如移动机器人,必须自适应地响应不同的操作条件,同时平衡执行多个任务特定任务的需求与及时完成这些任务的要求。为共享资源设置和实施利用率目标是实现此行为的关键机制。然而,由于某些任务的不确定性和不可抢占性,经典调度方法的关键假设不成立。在之前的工作中,我们提出了生成任务调度策略的基本方法,以强制具有这些属性的开放式软实时系统按比例使用资源。然而,这些方法在任务数量上呈指数级增长,限制了它们的实际适用性。在本文中,我们提出了一种新的参数化调度策略,将我们的技术扩展到更广泛的系统。这些策略可以表示由我们之前的方法产生的调度策略的几何特征,但只需要一些任务数量的二次参数。我们提供的经验证据表明,这些策略中的最佳策略在小问题中与精确解方法竞争,并且在较大问题中显著优于启发式方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Scheduling Policy Design for Open Soft Real-Time Systems
Open soft real-time systems, such as mobile robots, must respond adaptively to varying operating conditions, while balancing the need to perform multiple mission specific tasks against the requirement that those tasks complete in a timely manner. Setting and enforcing a utilization target for shared resources is a key mechanism for achieving this behavior. However, because of the uncertainty and non-preempt ability of some tasks, key assumptions of classical scheduling approaches do not hold. In previous work we presented foundational methods for generating task scheduling policies to enforce proportional resource utilization for open soft real-time systems with these properties. However, these methods scale exponentially in the number of tasks, limiting their practical applicability.In this paper, we present a novel parameterized scheduling policy that scales our technique to a much wider range of systems. These policies can represent geometric features of the scheduling policies produced by our earlier methods, but only require a number of parameters that is quadratic in the number of tasks. We provide empirical evidence that the best of these policies are competitive with exact solution methods in small problems, and significantly outperform heuristic methods in larger ones.
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