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Adaptive workload adjustment for cyber-physical systems using deep reinforcement learning

机译:利用深增强学习的网络物理系统自适应工作量调整

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Reducing computational energy consumption in cyber-physical systems (CPSs) has attracted considerable attention in recent years. Associated with energy consumption is a heating of the devices. Device failure rate increases exponentially with increase temperature, so that high energy consumption leads to a significant shortening of processor lifetime.Reducing thermal stress without harming application safety and performance is the goal of this work. Our approach is to abort control tasks dispatch when this is judged, by a neural network, to not contribute to either safety or performance. This technique is orthogonal to others that have been used to reduce energy consumption such as dynamic voltage/frequency scaling and adaptive use of redundancy. Simulation experiments show that this approach leads to a further reduction in device aging when used in conjunction with these prior techniques.
机译:降低网络 - 物理系统(CPSS)的计算能源消耗近年来引起了相当大的关注。 与能量消耗相关的是设备的加热。 器件故障率随着温度的提高呈指数增长,因此高能耗导致处理器寿命的显着缩短。在不损害应用安全性和性能的情况下,减少热力应力和性能是这项工作的目标。 我们的方法是在通过神经网络判断这一点时,判断控制任务派遣,不贡献安全或性能。 该技术与其他人正交,用于减少能量消耗,例如动态电压/频率缩放和自适应使用冗余。 模拟实验表明,当与这些现有技术结合使用时,该方法导致设备老化的进一步减少。

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