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A Comparison of Reinforcement Learning Based Approaches to Appliance Scheduling

机译:基于钢筋基于学习的家电调度方法的比较

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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-Iearning. 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:钢筋学习通常被提出作为具有动态实时能源定价和高级子计量基础设施的智能家居设置中的智能控制技术。在本文中,我们将状态行动奖励状态行动(Sarsa)的变化介绍为具有多个设备的智能房屋中的设备调度的优化算法,并将其与流行的加固学习方法进行比较Q-Iearning。提出了一种简单,直观且独特的独特性马尔可夫决策过程(MDP)结构,其考虑了所有可调度设备的状态,例如ON / OFF /运行时状态,但不需要所述状态的知识到状态转换概率。

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