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Mixed H2/H∞-Based Fusion Estimation for Energy-Limited Multi-Sensors in Wearable Body Networks

机译:基于混合H2 /H∞的可穿戴体网络中能量受限多传感器融合估计

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摘要

In wireless sensor networks, sensor nodes collect plenty of data for each time period. If all of data are transmitted to a Fusion Center (FC), the power of sensor node would run out rapidly. On the other hand, the data also needs a filter to remove the noise. Therefore, an efficient fusion estimation model, which can save the energy of the sensor nodes while maintaining higher accuracy, is needed. This paper proposes a novel mixed H2/H∞-based energy-efficient fusion estimation model (MHEEFE) for energy-limited Wearable Body Networks. In the proposed model, the communication cost is firstly reduced efficiently while keeping the estimation accuracy. Then, the parameters in quantization method are discussed, and we confirm them by an optimization method with some prior knowledge. Besides, some calculation methods of important parameters are researched which make the final estimates more stable. Finally, an iteration-based weight calculation algorithm is presented, which can improve the fault tolerance of the final estimate. In the simulation, the impacts of some pivotal parameters are discussed. Meanwhile, compared with the other related models, the MHEEFE shows a better performance in accuracy, energy-efficiency and fault tolerance.
机译:在无线传感器网络中,传感器节点在每个时间段收集大量数据。如果所有数据都传输到Fusion Center(FC),则传感器节点的电源将迅速耗尽。另一方面,数据还需要过滤器以消除噪声。因此,需要一种有效的融合估计模型,该模型可以在保持较高精度的同时节省传感器节点的能量。本文针对能量受限的可穿戴人体网络提出了一种基于H2 /H∞的混合节能融合估计模型(MHEEFE)。在提出的模型中,首先在保持估计精度的同时有效地降低了通信成本。然后,讨论了量化方法中的参数,并通过具有一些先验知识的优化方法对其进行了确认。此外,还研究了一些重要参数的计算方法,使最终估计更加稳定。最后,提出了一种基于迭代的权重计算算法,可以提高最终估计的容错性。在仿真中,讨论了一些关键参数的影响。同时,与其他相关模型相比,MHEEFE在准确性,能效和容错性方面表现出更好的性能。

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