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Self-Aware Autonomous City: From Sensing to Planning

机译:自我意识自动城市:从侦察侦察

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摘要

This article presents a knowledge mining model, where a city can plan its development based on existing knowledge during city expansion, for example, telecommunication resource allocation and crowd forecasts in a new region. Unlike most works that focused on Internet-of-Things (IoT) sensing, this study is aimed at urban planning by using harvested data, from the perspective of city architects. For large-scale metropolitan areas, a massive amount of data is generated every day, either from static surveys or dynamic IoT sensing. For urban planners, data collection is not their primary concern. flow to transfer harvested knowledge from exiting parts of the city to suburban/rural/untapped areas is a new challenge. This is because those areas still lack sufficient statistics, and the density of IoT deployment is low. Therefore, development is risky and uncertain. To exploit new regions requires knowledge inference. Such a transition needs data interpretation from historical city dynamics, involving sensor deployment, human activities, and resource allocation in the vicinity. With the proposed model, a city can estimate the requirement for resources when the peripheral areas on the outskirts of a city develop. The same model can be applied to enterprises for resource deployment, and applications are not merely limited to governments.
机译:本文介绍了一个知识挖掘模式,其中一个城市可以根据城市扩张期间的现有知识来规划其发展,例如新地区的电信资源分配和人群预测。与大多数作品相比,专注于互联网(物联网)感知,本研究旨在通过使用收获的数据来源于城市建筑师的角度。对于大型大都市区,每天产生大量数据,无论是静态调查还是动态物联网传感。对于城市规划师来说,数据收集不是他们的主要关注点。流动转移收获的知识从将城市的部分出入到郊区/农村/未开发的地区是一个新的挑战。这是因为这些区域仍然缺乏足够的统计数据,因此IOT部署的密度低。因此,发展冒险和不确定。利用新区域需要知识推理。这种转变需要历史城市动态的数据解释,涉及传感器部署,人类活动和附近的资源分配。通过拟议的模型,一个城市可以在城市开发的外围地区估计资源要求。相同的型号可应用于资源部署的企业,申请不仅限于政府。

著录项

  • 来源
    《IEEE Communications Magazine》 |2019年第4期|33-39|共7页
  • 作者单位

    Natl Sun Yat Sen Univ Kaohsiung Taiwan|Pervas Artificial Intelligence Res Labs Hsinchu Taiwan;

    King Saud Univ Riyadh Saudi Arabia;

    Alfaisal Univ Coll Engn Riyadh Saudi Arabia;

    King Saud Univ Coll Comp & Informat Sci Riyadh Saudi Arabia;

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  • 正文语种 eng
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