智能城市中空气质量测量传感器网络的虚拟增强

G. Aiello, Valentina Chetta, M. D. Coco, E. Giangreco, S. Pino, D. Storelli
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引用次数: 2

摘要

分布式测量系统被广泛应用于许多领域,尤其是智慧城市领域。无论如何,由于设备昂贵和安装问题等原因,传感器的覆盖范围往往不足以实现现代智慧城市的目标。为了超越这些问题,一种新的范例变得有吸引力,一旦给定特定领域,就可以创建一个能够虚拟地增强传感器网络的系统,即在传感器不可用的情况下提供测量估计。这种方法特别侧重于训练目标神经网络模型,该模型可以在具有大型传感器网络的城市地区概述环境问题,然后使其他配备较差传感器网络的地区利用相同的模型。由于复杂的城市环境和测量设备的巨大成本,目前的工作主要集中在空气污染领域,这是一个非常适合这个问题的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A virtual augmentation for air quality measurement sensor networks in smart cities
Distributed measurement systems are widely employed in many domains, particularly in the smart city domain. Anyway, because of reasons like expensiveness of devices and installation issues, the sensor coverage is often inadequate to the accomplish the goals of a modern smart city. To surpass such issues, a novel paradigm becomes attractive that, once a specific domain is given, allows the creation of a system capable to virtually augment the sensor network, i.e. providing measurement estimation where sensors are unavailable. This kind of approach s particularly focused on training a target Neural Network model, which outlines environmental issues, on urban areas provided with large sensor network, and then to make other areas, equipped with poor sensor networks, take advantage of the same model. The present work has been specialized on the domain of air pollution that, because of the complex urban environment and the huge costs of measurements devices, represents a case study extremely fitting the problem.
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