Invention Grant
- Patent Title: Deep reinforcement learning based real-time scheduling of Energy Storage System (ESS) in commercial campus
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Application No.: US17102644Application Date: 2020-11-24
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Publication No.: US11610214B2Publication Date: 2023-03-21
- Inventor: Desong Bian , Xiaohu Zhang , Di Shi , Ruisheng Diao , Siqi Wang , Zheming Liang
- Applicant: Desong Bian , Xiaohu Zhang , Di Shi , Ruisheng Diao , Siqi Wang , Zheming Liang
- Applicant Address: US CA San Jose; US CA San Jose; US CA San Jose; US CA San Jose; US CA San Jose; CN Tianjin
- Assignee: Desong Bian,Xiaohu Zhang,Di Shi,Ruisheng Diao,Siqi Wang,Zheming Liang
- Current Assignee: Desong Bian,Xiaohu Zhang,Di Shi,Ruisheng Diao,Siqi Wang,Zheming Liang
- Current Assignee Address: US CA San Jose; US CA San Jose; US CA San Jose; US CA San Jose; US CA San Jose; CN Tianjin
- Agency: Patent PC
- Agent Bao Tran
- Main IPC: G06Q30/02
- IPC: G06Q30/02 ; G06Q10/06 ; G06K9/62 ; G06Q50/06 ; G06N3/08 ; B60L58/12 ; G06Q30/0201 ; G06Q10/0631

Abstract:
A system with deep reinforcement learning based control determines optimal actions for major components in a commercial building to minimize operation costs while maximizing comprehensive comfort levels of occupants. An unsupervised deep Q-network method is introduced to handle the energy management problem by evaluating the influence of operation costs on comfort levels considering the environment factors at each time slot. An optimum control decision can be derived that targets both immediate and long-term goals, where exploration and exploitation are considered simultaneously.
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