Since there are a number of Internet-of-Things (IoT) applications that need to collect data sets from a large number of sensors or devices in real-time, sensing and communication need to be integrated for efficient uploading from devices. In this paper, we introduce the notion of data-aided sensing (DAS) where a base station (BS) utilizes a subset of data that is already uploaded and available to select the next device for efficient data collection or sensing. Thus, using DAS, certain tasks in IoT applications, including federated learning, can be completed by uploading from a small number of selected devices. Two different types of DAS are considered: one is centralized DAS and the other is distributed DAS. In centralized DAS, the BS decides the uploading order, while each device can decide when to upload its own local data set among multiple uploading rounds in distributed DAS. In distributed DAS, random access is employed where the access probability of each device is decided according to its local measurement for efficient uploading.
翻译:由于有一些因特网电话应用程序需要从大量感应器或装置实时收集数据集,因此,需要将遥感和通信结合起来,以便从设备中有效上传。在本文件中,我们引入了数据辅助遥感概念(DAS),即一个基地台(BS)使用已经上载的一组数据,并可用于选择高效数据收集或感测的下一个装置。因此,利用DAS,可通过上传少数选定的装置完成IoT应用程序中的某些任务,包括联合学习。两种不同的DAS类型是:一种是中央DAS,另一种是分布式DAS。在中央DAS,BS决定上传顺序,而每个装置可以决定何时在分布式DAS的多发上传轮中上传自己的本地数据集。在分布式DAS中,使用随机访问,即根据当地测量结果决定每个装置的存取概率,以便高效上传。