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首页> 外文期刊>Journal of Management in Engineering >Architecting Smart City Digital Twins: Combined Semantic Model and Machine Learning Approach
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Architecting Smart City Digital Twins: Combined Semantic Model and Machine Learning Approach

机译:架构智能城市数字双胞胎:组合语义模型和机器学习方法

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摘要

This work was motivated by the premise that next-generation smart city systems will be enabled by widespread adoption of sensing and communication technologies deeply embedded within the physical urban domain. These technological advances (e.g., sensing, processing, and data transmission) are what makes smart city digital twins possible. This paper explores approaches and challenges in architecting and the operation of smart city digital twins. A smart city digital twin architecture is proposed that supports semantic knowledge representation and reasoning, working side by side with machine learning formalisms, to provide complementary and supportive roles in the collection and processing of data, identification of events, and automated decision-making. The semantic and machine learning sides of the proposed architecture are exercised on a problem involving simplified analysis of energy usage in buildings located in the Chicago Metropolitan Area.
机译:这项工作是由于下一代智能城市系统将通过广泛采用嵌入物理城市领域的传感和通信技术来实现下一代智能城市系统。这些技术进步(例如,感应,处理和数据传输)是使智能城市数字双胞胎成为可能的。本文探讨了架构和智能城市数字双胞胎的运作的方法和挑战。提出了一种智能城市数字双床架构,支持语义知识表示和推理,并与机器学习形式中并排工作,为收集和处理数据,识别事件和自动决策提供互补和支持的角色。拟议建筑的语义和机器学习侧是对涉及位于芝加哥大都市区的建筑物中的能源用途简化分析的问题。

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