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Faulty Node Detection in Wireless Sensor Networks using a Recurrent Neural Network

机译:使用递归神经网络的无线传感器网络中的故障节点检测

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The wireless sensor networks (WSN) consist of a set of sensors that are more and more used in surveillance applications on a large scale in different areas: military, Environment, Health ... etc. Despite the minimization and the reduction of the manufacturing costs of the sensors, they can operate in places difficult to access without the possibility of reloading of battery, they generally have limited resources in terms of power of emission, of processing capacity, data storage and energy. These sensors can be used in a hostile environment, such as, for example, on a field of battle, in the presence of fires, floods, earthquakes. In these environments the sensors can fail, even in a normal operation. It is therefore necessary to develop algorithms tolerant and detection of defects of the nodes for the network of sensor without wires, therefore, the faults of the sensor can reduce the quality of the surveillance if they are not detected. The values that are measured by the sensors are used to estimate the state of the monitored area. We used the Non-linear Auto-Regressive with eXogeneous (NARX), the recursive architecture of the neural network, to predict the state of a node of a sensor from the previous values described by the functions of time series. The experimental results have verified that the prediction of the State is enhanced by our proposed model.
机译:无线传感器网络(WSN)由一组传感器组成,这些传感器越来越多地用于不同领域的监视应用中:军事,环境,健康...等。尽管最小化并降低了制造成本在传感器中,它们可以在难以接近的地方操作,而无需重新装入电池。它们在发射功率,处理能力,数据存储和能源方面通常资源有限。这些传感器可以在恶劣的环境中使用,例如在战场上,在有火灾,洪水,地震的情况下。在这些环境中,即使在正常操作下,传感器也可能发生故障。因此,有必要为无电线的传感器网络开发容忍和检测节点缺陷的算法,因此,如果传感器的故障未被检测到,则会降低监视的质量。传感器测量的值用于估计监视区域的状态。我们使用神经网络的递归体系结构与异质非线性自回归(NARX),根据时间序列函数描述的先前值来预测传感器节点的状态。实验结果证明,我们提出的模型增强了对状态的预测。

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