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Green Computing in Heterogeneous Internet of Things: Optimizing Energy Allocation Using SARSA-based Reinforcement Learning

机译:异构互联网中的绿色计算:使用基于Sarsa的强化学习优化能量分配

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Green computing has been emerged as a promising paradigm to harvest energy from renewable resources to reduce use of conventional energy source in Internet of Things. Energy harvested battery-operated computation chargers are deployed in network to increase energy efficiency and network lifetime by recharging the nodes. The goal of paper is to allocate optimal power and optimal channel distribution to each node in network, subject to optimize the energy efficiency of network. As, wireless channel and energy harvested from environment are stochastic in nature. So, we propose a model-free 'on policy' based reinforcement learning (RL) approach to learn transition probability of continuous state space to get optimal reward which is unknown to network. To solve the formulated problem, an RL agent uses state-action-reward-state-action (SARSA) algorithm with linear function approximation to optimize the reward. Further, the proposed SARSA algorithm is compared with Q-Learning and Myopic algorithm to analyze the network energy efficiency.
机译:绿色计算已被出现为从可再生资源收获能源的有前途的范例,以减少在物联网中使用传统能源的使用。通过充电节点,在网络中部署了能源收集的电池供电的计算充电器,以提高能源效率和网络生命周期。纸张的目标是为网络中的每个节点分配最佳功率和最佳信道分配,以优化网络的能量效率。因为从环境中收获的无线信道和能量是随机本质上的。因此,我们提出了一种无模型的“政策”的强化学习(RL)方法,以了解连续状态空间的过渡概率,以获得网络未知的最佳奖励。为了解决配制的问题,RL代理使用具有线性函数近似的状态动作奖励状态(SARSA)算法来优化奖励。此外,将所提出的SARSA算法与Q-Learning和近视算法进行比较,以分析网络能效。

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