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Research on dynamic data fusion algorithm based on context awareness

机译:基于上下文感知的动态数据融合算法研究

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In traditional data fusion algorithms based on context awareness, time-varying application situations and context acquisition cost are not considered, which leads to inaccurate situation prediction and low applicability of data fusion. In this paper, a space-based context model is introduced, in which the sensors' history from three aspects, the context attribute, the context state and the situation space are described. Then optional attributes with the maximum overall utility are chosen by Dynamic Bayesian Networks. After that, the related situation prediction is obtained through data fusion. A data fusion algorithm CFACA (Context Fusion Algorithm based on Context Awareness) proposed in this paper gives a dynamic data fusion method. In the end, the simulation of this algorithm is discussed and the results show the effectiveness of the CFACA.
机译:在传统的数据融合算法中,基于上下文意识,不考虑时变应用情况和上下文采集成本,这导致了数据融合的不准确情况和低适用性。在本文中,引入了一种基于空间的上下文模型,其中描述了来自三个方面的传感器的历史,上下文属性,上下文状态和情况空间。然后由动态贝叶斯网络选择具有最大整体实用程序的可选属性。之后,通过数据融合获得相关的情况预测。本文提出的数据融合算法CFACA(基于上下文意识的上下文融合算法)给出了动态数据融合方法。最后,讨论了该算法的模拟,结果显示了CFACA的有效性。

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