论文标题
通过联合计算连接分布式的能量折线性袋:限制和可能性
Connecting Distributed Pockets of EnergyFlexibility through Federated Computations:Limitations and Possibilities
论文作者
论文摘要
传统上,电网作为多实体系统运行,每个实体管理地理区域。对脱碳和能源民主化的兴趣和需求导致可控能源的渗透率不断增长。反过来,此过程正在增加网格实体的数量。配备了高级处理和计算功能的智能传感器和执行器的采用增加也推动了范式转移。尽管电网实体(代理)之间的协作降低了能源成本并提高了整体可靠性,但实现有效的合作是挑战。主要挑战源于系统代理的异质性及其收集的信息。此外,数据收集的规模不断增加,许多网格实体都有严格的隐私要求。另一个挑战是能源行业将数据保存在孤岛中的共同做法。联合计算是一种非常适合解决这些对多代理能源系统越来越重要的问题的方法。通过联合计算,代理人协作解决学习和优化问题,同时尊重每个代理的隐私以及克服跨设备和跨组织隔离的障碍。在本文中,我们首先确定了联合计算的需求,以实现未来电网的能源优化目标。我们讨论进行多代理数据处理的实际挑战。然后,我们解决了专门针对在物联网中连接分布式能源的运作而引起的挑战。我们通过介绍了一个新的联合计算框架来结束本文,该框架解决了其中一些问题,并通过Grid Fruit LLC分享了研究演示和商业建筑应用中两个初始现场测试设置的示例。
Electric grids are traditionally operated as multi-entity systems with each entity managing a geographical region. Interest and demand for decarbonization and energy democratization is resulting in growing penetration of controllable energy resources. In turn, this process is increasing the number of grid entities. The paradigm shift is also fueled by increased adoption of intelligent sensors and actuators equipped with advanced processing and computing capabilities. While collaboration among power grid entities (agents) reduces energy cost and increases overall reliability, achieving effective collaboration is challenging. The main challenges stem from the heterogeneity of system agents and their collected information. Furthermore, the scale of data collection is constantly increasing and many grid entities have strict privacy requirements. Another challenge is the energy industry's common practice of keeping data in silos. Federated computation is an approach well suited to addressing these issues that are increasingly important for multi-agent energy systems. Through federated computation, agents collaboratively solve learning and optimization problems while respecting each agent's privacy and overcoming barriers of cross-device and cross-organization data isolation. In this paper, we first establish the need for federated computations to achieve energy optimization goals of the future power grid. We discuss practical challenges of performing multi-agent data processing in general. Then we address challenges that arise specifically for orchestrating operation of connected distributed energy resources in the Internet of Things. We conclude this paper by presenting a novel federated computation framework that addresses some of these issues, and we share examples of two initial field test setups in research demonstrations and commercial building applications with Grid Fruit LLC.