论文标题
符合Sigfox的物联网设备上的水质预测:水面前的道路
Water Quality Prediction on a Sigfox-compliant IoT Device: The Road Ahead of WaterS
论文作者
论文摘要
水污染是一个关键问题,可能会影响人类的健康和整个生态系统,从而引起经济和社会关注。在本文中,我们专注于物有的水质预测系统,即水域,可以远程传达利用低功率广泛区域网络技术的收集测量。该解决方案解决了水污染问题,同时考虑到奇特的互联网约束,例如能源效率和自主权,因为该平台配备了光伏电池。在我们解决方案的基础上,时间序列预测有一个长期的短期记忆复发网络。它是预测水质参数(例如pH,电导率,氧和温度)的有效解决方案。这项工作涉及的水质参数测量值在2007年至2012年的参考时间段中指的是Tiziano Project数据集。LSTM应用于预测水质参数可实现高精度和低平均绝对误差为0.20,平均正方形误差为0.092,最终是0.94的均匀度。根据当前体系结构对大规模部署的协议适用性和网络可扩展性,对获得的结果进行了广泛的分析。从网络的角度来看,随着SIGFOX增强的终端设备的越来越多,随着最大设想的部署,数据包错误率最高可达4%。最后,《水源守则》生态系统的源代码是开源的,以鼓励和促进行业和学术界的研究活动。
Water pollution is a critical issue that can affects humans' health and the entire ecosystem thus inducing economical and social concerns. In this paper, we focus on an Internet of Things water quality prediction system, namely WaterS, that can remotely communicate the gathered measurements leveraging Low-Power Wide Area Network technologies. The solution addresses the water pollution problem while taking into account the peculiar Internet of Things constraints such as energy efficiency and autonomy as the platform is equipped with a photovoltaic cell. At the base of our solution, there is a Long Short-Term Memory recurrent neural network used for time series prediction. It results as an efficient solution to predict water quality parameters such as pH, conductivity, oxygen, and temperature. The water quality parameters measurements involved in this work are referred to the Tiziano Project dataset in a reference time period spanning from 2007 to 2012. The LSTM applied to predict the water quality parameters achieves high accuracy and a low Mean Absolute Error of 0.20, a Mean Square Error of 0.092, and finally a Cosine Proximity of 0.94. The obtained results were widely analyzed in terms of protocol suitability and network scalability of the current architecture towards large-scale deployments. From a networking perspective, with an increasing number of Sigfox-enabling end-devices, the Packet Error Rate increases as well up to 4% with the largest envisioned deployment. Finally, the source code of WaterS ecosystem has been released as open-source, to encourage and promote research activities from both Industry and Academia.