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首页> 外文期刊>Journal of Computing in Civil Engineering >Sensor Data Interpretation with Clustering for Interactive Asset-Management of Urban Systems
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Sensor Data Interpretation with Clustering for Interactive Asset-Management of Urban Systems

机译:传感器数据解释与聚类,用于城市系统的交互式资产管理

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摘要

In responsive cities, user feedback and information provided by sensors are combined to improve urban design and to support asset managers in performing decision making. Optimal management of infrastructure networks requires accurate knowledge of current asset conditions to avoid unnecessary replacement and expensive interventions when cheaper and more sustainable alternatives are available. Structural model updating is a discipline that focuses on improving behavior-model accuracy by means of measurements taken from the built environment. Error-domain model falsification (EDMF) is a simple and practice-oriented methodology that uses measurements at sensor locations to identify plausible models among an initial population generated according to engineering judgment. However, many plausible models are often identified, making result interpretations difficult for practicing engineers. In this paper, a clustering methodology based on bipartite-modularity optimization (BMO) is used to clarify identification outputs. Compared with classical clustering methods such as K-means, BMO clustering provides more accurate interpretations and better visualization of the results. Moreover, engineers can actively interact with the clustering framework to obtain the knowledge that is needed at several stages of the decision-making process.
机译:在响应迅速的城市中,将用户反馈和传感器提供的信息结合起来,以改善城市设计并支持资产管理者执行决策。对基础架构网络的最佳管理需要准确了解当前资产状况,以避免在存在更便宜,更可持续的替代方案时避免不必要的更换和昂贵的干预措施。结构模型更新是一门专注于通过从构建环境中进行的测量来提高行为模型准确性的学科。误差域模型伪造(EDMF)是一种简单且面向实践的方法,该方法使用传感器位置的测量值来确定根据工程判断生成的初始种群中的合理模型。但是,通常会确定许多合理的模型,这使得实际的工程师难以理解结果。在本文中,基于二分模优化(BMO)的聚类方法用于阐明识别输出。与经典的聚类方法(例如K-means)相比,BMO聚类提供了更准确的解释和更好的结果可视化效果。此外,工程师可以与集群框架进行主动交互,以获取决策制定过程中多个阶段所需的知识。

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