利用深度强化学习优化建筑能源管理,打造智能和可持续的基础设施

Nabeel S. Alsharafa, Suguna R, Raguru Jaya Krishna, Vijaya Krishna Sonthi, Padmaja S M, Mariaraja P
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引用次数: 0

摘要

本研究开发了一种新技术,利用实施深度强化学习(DRL)的楼宇能源管理系统(BEMS)优化商务中心的能源消耗(EC)和用户满意度。由于对能源效率的需求不断增长以及采用可再生能源(RES),能源管理模式(EMM)日益先进,对智能电力系统至关重要。由于其不可预测性和无法适应新环境,传统 BEMS 的典型影响就是能源消耗(EC)缺陷和问题。在本调查报告中,展示了一种 DRL 框架,该框架可通过其运行环境的输入,实时改进其决策,以控制节能、电力和暖通空调。与传统的规则驱动和预测控制系统相比,该模型采用了一对重要指标,即能源成本和室温稳定性,以评估其有效性。通过对不同基线模型的研究,实验结果证明 DRL 方法在保持稳定舒适度的同时,显著降低了电费成本。
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Optimizing Building Energy Management with Deep Reinforcement Learning for Smart and Sustainable Infrastructure
This study develops a new technique for optimising Energy Consumption (EC) and occupant satisfaction in business centres using Building Energy Management Systems (BEMS) that implement Deep Reinforcement Learning (DRL). Energy Management Models (EMM) are growing increasingly advanced and vital for intelligent power systems due to the growing demand for energy efficiency and the adoption of Renewable Energy Sources (RES), which are subject to variability. Flawed energy Consumption (EC) and problems are typical effects of traditional BEMS due to their unpredictability and failure to adapt to new environments. In this intended investigation, a DRL framework is demonstrated that may evolve its decision-making in real-time to control energy savings, electricity, and HVAC through input from the environment in which it operates. A pair of significant metrics, namely the cost of energy and room temperature stability, are employed to assess the effectiveness of the model compared to that provided by conventional rule-driven and predictive control systems. As investigated with different baseline models, the experimental findings proved that the DRL approach significantly reduced the cost of electricity while maintaining stable levels of comfort.
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