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Adapting Surprise Minimizing Reinforcement Learning Techniques for Transactive Control

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arxiv 2111.06025 v1 pith:6XQQMOAS submitted 2021-11-11 cs.LG

Adapting Surprise Minimizing Reinforcement Learning Techniques for Transactive Control

classification cs.LG
keywords energylearningsurprisearchitecturecontrollerdemandimproveminimizing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Optimizing prices for energy demand response requires a flexible controller with ability to navigate complex environments. We propose a reinforcement learning controller with surprise minimizing modifications in its architecture. We suggest that surprise minimization can be used to improve learning speed, taking advantage of predictability in peoples' energy usage. Our architecture performs well in a simulation of energy demand response. We propose this modification to improve functionality and save in a large scale experiment.

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