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Adaptive Runtime Response Time Control in PLC-based Real-Time Systems Using Reinforcement Learning

机译:使用强化学习的PLC的实时系统中自适应运行时响应时间控制

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摘要

Timing requirements such as constraints on response time are key characteristics of real-time systems and violations of these requirements might cause a total failure, particularly in hard real-time systems. Runtime monitoring of the system properties is of great importance to check the system status and mitigate such failures. Thus, a runtime control to preserve the system properties could improve the robustness of the system with respect to timing violations. Common control approaches may require a precise analytical model of the system which is difficult to be provided at design time. Reinforcement learning is a promising technique to provide adaptive model-free control when the environment is stochastic, and the control problem could be formulated as a Markov Decision Process. In this paper, we propose an adaptive runtime control using reinforcement learning for real-time programs based on Programmable Logic Controllers (PLCs), to meet the response time requirements. We demonstrate through multiple experiments that our approach could control the response time efficiently to satisfy the timing requirements.
机译:响应时间的约束等时序要求是实时系统的关键特性,并且违规可能导致总失败,特别是在硬实时系统中。运行时监视系统属性非常重要,以检查系统状态并减轻此类故障。因此,保留系统属性的运行时控制可以提高系统对定时违规的鲁棒性。常见的控制方法可能需要在设计时难以提供的系统的精确分析模型。加强学习是一种有希望的技术,可以在环境是随机时提供自适应模型控制,并且控制问题可以作为马尔可夫决策过程制定。在本文中,我们提出了一种基于可编程逻辑控制器(PLC)的实时节目的加强学习,提出了一种自适应运行时控制,以满足响应时间要求。我们通过多个实验证明我们的方法可以有效地控制响应时间以满足定时要求。

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