1. What are the contributions in "Enabling cooperative behavior for building demand response based on extended joint action learning" ?
This paper explores the use of distributed intelligence to assist the integration of the demand as a flexible resource, to mitigate the emerging uncertainty in the power system, while fulfilling the customer ’ s local needs, i. e., comfort management.. Firstly, the authors propose a novel cooperative and decentralized reinforcement learning method, dubbed extended joint action learning ( eJAL ).. Secondly, the authors perform a comparison between eJAL to noncooperative decentralized decision making strategies, i. e., Qlearning, and a centralized game theoretic approach, i. e., Nash n-player game.. The authors demonstrated that a range of flexibility requests can be met by providing an optimal energy portfolio of buildings without substantially violating comfort constraints.. Moreover, the authors showed that the proposed eJAL method achieves the highest fairness index.
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2. What are the future works mentioned in the paper "Enabling cooperative behavior for building demand response based on extended joint action learning" ?
Future work:. Moreover, the following topics are identified as future work: •. However, in order to generalize these results, further investigation could be performed with focus on the characterization of the scalability bounds by performing simulations with a higher number of agents.
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