← 返回
考虑多样化通信速率需求的基站虚拟电厂机会约束优化
Chance-Constrained Optimization for VPPs With Base Stations Considering Diverse Communication Rate Requirements
| 作者 | Chao Guo · Chengjin Ye · Yi Ding · Jing Li · Jiadong Dai · Xuanyi Zhou |
| 期刊 | IEEE Transactions on Sustainable Energy |
| 出版日期 | 2025年7月 |
| 卷/期 | 第 17 卷 第 1 期 |
| 技术分类 | 系统集成 |
| 技术标签 | 虚拟同步机VSG 微电网 储能变流器PCS 模型预测控制MPC |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文针对5G基站高能耗问题,提出将宏/微基站与分布式可再生能源聚合为虚拟电厂(VPP),构建考虑通信速率约束与新能源出力不确定性的机会约束优化调度模型,结合泰勒展开算法求解,提升绿电消纳率5.4%、经济收益18.72%。
English Abstract
5G Base Stations (BSs) consume a large amount of electricity, requiring predominantly green power, which brings huge pressure on their electricity costs. To reduce energy costs and carbon emissions, aggregating 5G BSs (Macro BS and Micro BS), and distributed renewable energy into virtual power plants (VPPs) to participate in market transactions has become a trend. However, the operation of VPPs faces challenges: the uncertainty of renewable energy output and the unclear regulation mechanism of BSs. Consequently, this paper focuses on developing an optimal scheduling strategy for VPPs, considering the schedulability of BSs and the uncertainty of internal renewable energy. Firstly, the flexibility of BSs with 4G and 5G modules is investigated, particularly in terms of transceivers and backup energy storage. The communication rates of BSs are modeled to evaluate the impact of active transceiver numbers on user experience. A dynamic time-domain model of backup energy storage capacity considering communication load is proposed. The impact of user mobility and overlapping coverage areas of BSs on communication rates is considered to be more in line with real-world scenarios. Subsequently, an optimization model is developed for VPPs to maximize the profit of engaging BSs in the day-ahead market transaction, considering diverse communication rate requirements. The optimization model determines the schedule of transceivers, backup energy storage, and other resources. Then, to control the operational risks associated with the uncertainty of internal distributed renewable energy outputs, the chance constraint is introduced. Furthermore, the Taylor expansion-based algorithm is applied to coordinately solve the VPP dispatching problem. Numerical simulations are carried out to validate the effectiveness of the proposed models, which achieve a 5.4% increase in the proportion of internal renewable energy consumption and a 18.72% increase in economic benefits.
S
SunView 深度解读
该研究高度契合阳光电源在光储一体化VPP及智能调度领域的战略布局。其机会约束优化与动态储能建模方法可直接赋能PowerTitan和ST系列PCS在通信基站微网场景的智能协同调度;模型预测控制(MPC)框架可集成至iSolarCloud平台,支撑基站侧‘光伏+储能+PCS’联合参与电力市场。建议将通信负载感知的备用储能动态模型嵌入PowerStack能量管理系统,强化对5G基站等新型负荷的柔性响应能力。