利用综合排放建模对区域供热网络进行动态控制:动态知识图谱方法

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-05-18 DOI:10.1016/j.egyai.2024.100376
Markus Hofmeister , Kok Foong Lee , Yi-Kai Tsai , Magnus Müller , Karthik Nagarajan , Sebastian Mosbach , Jethro Akroyd , Markus Kraft
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引用次数: 0

摘要

本文介绍了一种基于知识图谱的方法,用于对区域供热网络进行动态控制,并集成了排放扩散建模。我们提出了一种具有互操作性和可扩展性的实施方案,用于预测市政供热网络的预期热需求,根据先前设计的方法最大限度地降低相关的总发电成本,并将其与诱导空气传播污染物的扩散模拟相结合,自动深入分析各种热源策略对空气质量的影响。我们通过新开发的本体论和语义软件代理,在能源和空气质量之间建立了跨领域互操作性,这些本体论和语义软件代理可以通过 "世界阿凡达 "动态知识图谱串联起来,以类似于复杂系统的行为。此外,我们还将 "城市能源分析仪 "整合到这一生态系统中,提供建筑层面的能源需求和可再生能源发电潜力,以促进战略分析和情景规划。基础计算使用知识图谱中的建筑和天气数据来代替正式软件版本中的固有假设,从而促进了更多的数据驱动方法。作为概念验证,我们在德国的一个中型城镇实施了所有用例,并提供了一个统一的可视化界面,允许在检查三维建筑物的同时,检查其相应的能源需求和供应时间序列以及排放分散数据。通过这项工作,我们概述了语义网技术在连接数字孪生系统以在智慧城市中进行整体能源建模方面的潜力,从而解决相互关联的能源系统日益复杂的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Dynamic control of district heating networks with integrated emission modelling: A dynamic knowledge graph approach

This paper presents a knowledge graph-based approach for the dynamic control of a district heating network with integrated emission dispersion modelling. We propose an interoperable and extensible implementation to forecast the anticipated heat demand of a municipal heating network, minimise associated total generation cost based on a previously devised methodology, and couple it with dispersion simulations for induced airborne pollutants to provide automatic insights into air quality implications of various heat sourcing strategies. We create cross-domain interoperability in the nexus of energy and air quality via newly developed ontologies and semantic software agents, which can be chained together via The World Avatar dynamic knowledge graph to resemble the behaviour of complex systems. Furthermore, we integrate the City Energy Analyst into this ecosystem to provide building-level insights into energy demand and renewable generation potential to foster strategic analyses and scenario planning. Underlying calculations use building and weather data from the knowledge graph in place of inherent assumptions in the official software release, facilitating a more data-driven approach. All use cases are implemented for a mid-size town in Germany as a proof-of-concept, and a unified visualisation interface is provided, allowing for the examination of 3D buildings alongside their corresponding energy demand and supply time series, as well as emission dispersion data. With this work, we outline the potential of Semantic Web technologies to connect digital twins for holistic energy modelling in smart cities, thereby addressing the increasing complexity of interconnected energy systems.

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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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