面向物联网中高效情境化的RISC框架

Dimitrios Georgakopoulos, Ali Yavari, P. Jayaraman, R. Ranjan
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引用次数: 1

摘要

物联网(IoT)是一种新的互联网进化,涉及连接数十亿个与互联网相连的设备,我们称之为物联网设备。这些设备可以通过互联网直接智能地进行通信,并生成大量数据,这些数据需要由各种物联网应用程序使用。本文重点关注物联网数据的自动上下文化,这也涉及从物联网中提取信息和知识,旨在简化回答以下在物联网应用中经常出现的基本问题:物联网收集的哪些数据与我自己和我关心的物联网事物相关?围绕上下文管理和上下文化的相关工作范围从涉及查询重写的数据库技术,到语义网和基于规则的上下文管理方法,再到移动和环境计算中的机器学习和基于数据科学的解决方案。所有这些现有的方法都有两个主要的共同点:它们高度不兼容,从可伸缩性和性能的角度来看效率极低。在本文中,我们讨论了一个新的RISC上下文化框架(RCF),我们已经开发,实现了关键方面,并评估了其可扩展性。RCF提供了基本的上下文化概念,可以映射到物联网数据的所有现有上下文化方法(从这个意义上说,它提供了统一上下文化空间的公分母)。RCF可以很容易地实现为基于云的服务,并提供更好的可扩展性和性能,在物联网领域的任何现有的内容管理和上下文化方法。
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Towards a RISC Framework for Efficient Contextualisation in the IoT
The Internet of Things (IoT) is a new internet evolution that involves connecting billions of internet-connected devices that we refer to as IoT things. These devices can communicate directly and intelligently over the Internet, and generate a massive amount of data that needs to be consumed by a variety of IoT applications. This paper focuses on the automatic contextualisation of IoT data, which also involves distilling information and knowledge from the IoT aiming to simplify answering the following fundamental questions that often arises in IoT applications: Which data collected by IoT are relevant to myself and the IoT Things I care for? Related work around context management and contextualisation ranges from database techniques that involve query re-writing, to semantic web and rule-based context management approaches, to machine learning and data science-based solutions in mobile and ambient computing. All such existing approaches have two main aspects in common: They are highly incompatible and horribly inefficient from a scalability and performance perspective. In this paper, we discuss a new RISC Contextualisation Framework (RCF) we have developed, implemented key aspects of, and assess its scalability. RCF provides fundamental contextualisation concepts that can be mapped to all existing contextualisation approaches for IoT data (and in this sense, it provides a common denominator that unifies the contextualisation space). RCF can be easily implemented as a cloud-based service, and provides better scalability and performance that any of the existing content management and contextualisation approaches in the IoT space.
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