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Deep Multisensor Dashboard for Composition Layer of Web of Things in the Smart City

机译:深度多传感器仪表板,用于智能城市的内容网的构图层

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The application of sensor networks in control and management of smart cities are increasing rapidly. The Internet of Things (IoT) platforms are becoming a major infrastructure component of the smart cities. The requirement for development of Web of Things (WoT) architectures and patterns have significant importance for optimal management and decision support in the smart city. Due to the fact that the sensor networks in even a small city produce a very large amount of data, manual interpretation of this data is not feasible. In recent years machine learning algorithms such as deep learning give the computer systems the ability to interpret and annotate this big data stream and to produce patterns which can help decision makers. This high-level interpretation is often presented in form of dashboards in the composition layers of the WoT. In this paper a deep learning based multisensor dashboard for decision support in the smart city is presented. The proposed dashboard is capable of interpretation and decision level fusion on sensor network data. Simulation results show that the proposed model is a suitable solution for making decisions in the IoT framework for the smart city.
机译:传感器网络在智能城市的控制和管理中的应用正在迅速增加。事情互联网(IOT)平台正在成为智能城市的主要基础设施组成部分。对智能城市的最佳管理和决策支持有重要意义,对事物的网络(WOT)架构和模式的要求具有重要意义。由于传感器网络甚至一个小城市产生了非常大量的数据,因此对这种数据的手动解释是不可行的。近年来,深度学习的机器学习算法使计算机系统能够解释和注释这一大数据流并产生可以帮助决策者的模式。这种高级解释通常以WOT的构图层中的仪表板形式呈现。在本文中,提出了一种基于深度学习的多传感器仪表板,用于智能城市中的决策支持。所提出的仪表板能够在传感器网络数据上解释和决策水平融合。仿真结果表明,该拟议的模型是在智能城市物联网框架中做出决策的合适解决方案。

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