Water level monitoring based on the acoustic signal using the neural network

Veronika Olesnaníková, O. Karpis, M. Chovanec, P. Sarafín, Róbert Zalman
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引用次数: 3

Abstract

There is a significant spectrum of Wireless Sensor Networks applications. Using of the WSN fits to natural setting because it does not require supply power sources and communication lines. When proposing such an application the energy management has to be taken into the consideration. This paper is dedicated to the solutions where the energy of the water streams is evaluated based on its acoustic emission in order to predict possibility of floods. For the multi-environment set up the theory of learning systems was inspirational. The ultrasonic sensor works as the reference for learning phase. Evaluation of the acoustic emissions is provided by the neural network. Firstly the system requires the parameter adjustment (learning phase). Afterwards the unit takes into consideration the learned information and apply them in the operational mode. The devices are able to communicate via the RF modules working within the ISM band.
基于声信号的神经网络水位监测
无线传感器网络的应用范围非常广泛。无线传感器网络的使用不需要电源和通信线路,适合于自然环境。当提出这样的应用时,必须考虑到能源管理。本文研究了基于声发射评价水流能量以预测洪水发生可能性的解决方案。对于多环境下学习系统理论的建立具有启发意义。超声波传感器作为学习阶段的参考。利用神经网络对声发射进行评价。首先,系统需要参数调整(学习阶段)。然后,单元考虑所学到的信息并将其应用到操作模式中。设备可以通过ISM频段内的射频模块进行通信。
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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