Quality-aware Service Selection Approach for Adaptive Context Recognition in IoT

E. Eryilmaz, Frank Trollmann, S. Albayrak
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引用次数: 3

Abstract

While developing context-aware applications, there may be uncertainty with respect to the available data sources. Applications that are developed to a fixed set of data sources may not be flexible enough, to adapt to change in the sensing environment such as sensor disappearance or degradation. Opportunistic sensing tackles this problem by enabling the automatic detection and selection of data sources. However, existing approaches rely on a limited number of quality metrics and do not take into account the influence of data processing on the quality of context recognition. In this paper, we present an extension of the opportunistic sensing approach that is able to take into account quality metrics like execution time affecting the overall quality. Our approach consists of modelling of available data sources and data processing methods that can be used to assemble context recognition chains and estimate their quality. We present a prototypical implementation of the models and mechanisms in an autonomous driving test environment and provided testing results on a use case for finding traffic congestions in a specified route.
物联网中自适应上下文识别的质量感知服务选择方法
在开发上下文感知应用程序时,可用的数据源可能存在不确定性。针对一组固定数据源开发的应用程序可能不够灵活,无法适应传感环境的变化,例如传感器消失或退化。机会感知通过自动检测和选择数据源解决了这个问题。然而,现有的方法依赖于有限数量的质量度量,并且没有考虑到数据处理对上下文识别质量的影响。在本文中,我们提出了机会感知方法的扩展,该方法能够考虑到影响整体质量的执行时间等质量指标。我们的方法包括对可用数据源和数据处理方法进行建模,这些方法可用于组装上下文识别链并估计其质量。我们在自动驾驶测试环境中展示了模型和机制的原型实现,并提供了在指定路线上寻找交通拥堵的用例的测试结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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