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Navigational data imputation with GPS pinning in compositional Kalman filter for IoT systems

机译:用于物联网系统的组合卡尔曼滤波器中的GPS定位导航数据插补

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Herewith the efficiency of various configurations of employing Kalman filter algorithm for on-the-fly pre-processing of the sensory network originated data streams in the Internet of Things (IoT) systems is investigated. Contextual grouping of the data streams for pre-processing by specialized Kalman filter units is found to be able to satisfy the logistics of IoT system operations. It is demonstrated that interconnection of the elementary Kalman filters into an organized network, the compositional Kalman filter, allows to take advantage of the redundancy of data streams to accomplish IoT pre-processing of the raw data. This includes intermittent data imputation, missing data replacement, lost data recovery, as well as error events detection and correction. Demonstrated is the efficiency of the suggested compositional designs of elementary Kalman filter networks for the purpose of data pre-processing in IoT systems.
机译:因此,研究了使用卡尔曼滤波算法对物联网(IoT)系统中的感官网络原始数据流进行实时预处理的各种配置的效率。发现数据流的上下文分组,可以由专门的卡尔曼过滤器单元进行预处理,从而能够满足物联网系统操作的后勤要求。事实证明,将基本卡尔曼滤波器互连到有组织的网络,即组成卡尔曼滤波器,可以利用数据流的冗余来完成原始数据的IoT预处理。这包括间歇性数据插补,丢失数据替换,丢失数据恢复以及错误事件检测和纠正。演示了用于物联网系统中数据预处理目的的基本卡尔曼滤波器网络的建议组成设计的效率。

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