Water Salinity Sensing with UAV-Mounted IR-UWB Radar

Author:

Wang Xiaocheng1,Fan Guiyun1,Ding Rong1,Jin Haiming1,Hao Wentian2,Tao Mingyuan2

Affiliation:

1. Shanghai Jiao Tong University, China

2. Damo Academy, Alibaba Group, China

Abstract

The quality of surface water is closely related to human’s production and livelihood. Water salinity is one of the key indicators of water quality assessment. Recently, there has been an increased salinization problem of surface water in many regions of the world, making it necessary to timely monitor the salinity of surface water. Water salinity sensing could be challenging when it comes to surface water with complicated basin and tributaries, where existing methods fail to satisfy both efficiency and accuracy requirements. To address this problem, we propose a novel water salinity sensing system USalt, which leverages the high mobility of UAV and the contactless sensing ability of IR-UWB radar, and realizes fast and accurate water salinity sensing for surface water. Specifically, we design novel methods to eliminate the contamination in raw received radar signals and extract salinity-related features from radar signals. Furthermore, we adopt a neural network model ssNet to precisely estimate water salinity using the extracted features. To efficiently adapt ssNet to different environments, we customize meta learning and design a meta-learning framework mssNet. Extensive real-world experiments carried out by our UAV-based system illustrate that USalt can accurately sense the salinity of water with an MAE of 0.39g/100mL.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference74 articles.

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