cs.AI updates on arXiv.org 09月16日
BuildingGym:建筑能耗管理强化学习工具
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本文介绍了BuildingGym,一款开源工具,旨在为建筑能耗管理中的强化学习控制策略训练提供灵活的框架。它整合EnergyPlus模拟器,适用于系统级和房间级控制,并支持外部信号作为控制输入,适用于多种环境。BuildingGym简化了优化控制策略的获取过程,并支持高级控制算法的实现与测试。

arXiv:2509.11922v1 Announce Type: new Abstract: Reinforcement learning (RL) has proven effective for AI-based building energy management. However, there is a lack of flexible framework to implement RL across various control problems in building energy management. To address this gap, we propose BuildingGym, an open-source tool designed as a research-friendly and flexible framework for training RL control strategies for common challenges in building energy management. BuildingGym integrates EnergyPlus as its core simulator, making it suitable for both system-level and room-level control. Additionally, BuildingGym is able to accept external signals as control inputs instead of taking the building as a stand-alone entity. This feature makes BuildingGym applicable for more flexible environments, e.g. smart grid and EVs community. The tool provides several built-in RL algorithms for control strategy training, simplifying the process for building managers to obtain optimal control strategies. Users can achieve this by following a few straightforward steps to configure BuildingGym for optimization control for common problems in the building energy management field. Moreover, AI specialists can easily implement and test state-of-the-art control algorithms within the platform. BuildingGym bridges the gap between building managers and AI specialists by allowing for the easy configuration and replacement of RL algorithms, simulators, and control environments or problems. With BuildingGym, we efficiently set up training tasks for cooling load management, targeting both constant and dynamic cooling load management. The built-in algorithms demonstrated strong performance across both tasks, highlighting the effectiveness of BuildingGym in optimizing cooling strategies.

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强化学习 建筑能耗管理 BuildingGym EnergyPlus 优化控制
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