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A comparison of reinforcement learning based approaches to appliance scheduling

机译:基于强化学习的设备调度方法的比较

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Reinforcement learning is often proposed as a technique for intelligent control in a smart home setup with dynamic real-time energy pricing and advanced sub-metering infrastructure. In this paper, we introduce a variation of State Action Reward State Action (SARSA) as an optimization algorithm for appliance scheduling in smart homes with multiple appliances and compare it with the popular reinforcement learning method Q-learning. A simple, intuitive and unique treelike Markov decision process (MDP) structure of appliances is proposed which takes into account the states, such as on/off/runtime status, of all schedulable appliances but does not require the knowledge of the state to state transition probabilities.
机译:强化学习通常被提议为一种用于智能家庭设置中的智能控制技术,该技术具有动态实时能源价格和先进的子计量基础设施。在本文中,我们介绍了状态动作奖励状态动作(SARSA)的一种变体,它是用于具有多个设备的智能家居中设备调度的优化算法,并将其与流行的强化学习方法Q学习进行了比较。提出了一种简单,直观且独特的树状马尔可夫决策过程(MDP)结构的设备,该结构考虑了所有可调度设备的状态(例如,开/关/运行时状态),但不需要了解状态到状态的转换概率。

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