基于无人船的水产养殖水质动态监测系统设计与实验
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浙江省基础公益研究计划项目(LGG18F020007)、浙江省高等教育教学改革研究项目(JG20180070)和宁波市自然科学基金项目(2017A610129)


Design and Test of Dynamic Water Quality Monitoring System for Aquaculture Based on Unmanned Surface Vehicle
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    摘要:

    针对传统水产养殖水质监测多使用部署在固定位置的无线监测节点,存在监测范围小、监测位置不灵活和部署成本偏高等问题,设计了基于自动无人船的水产养殖水质动态监测系统。该系统融合无人船和多个传感器进行水质采样,测量水温、pH值和水体浊度等指标,通过岸基控制台将监测数据上传至云服务器。为保证系统的有效性和准确性,提出以自动无人船悬停采样为主的水质监测和低航速下的水质异常检测,结合基于地图解析的路径规划策略,实现无人船自主航行,以提升监测效率。经实验验证,与传统方案相比,动态监测得到的水温相对误差绝对值不大于0.5%,pH值相对误差绝对值不大于1.43%,浊度相对误差绝对值不大于4.9%,均在各传感器精度范围内,可满足监测需求。将该系统部署于水产养殖区,在9800m2水域内共采集731组有效数据,测得各水质指标数值均在正常范围内,监测区域覆盖达水域面积的68%。该方法为水产养殖业的水质监测和异常检测提供了解决方案。

    Abstract:

    Traditional monitoring systems realize water quality monitoring with a large number of monitoring nodes placed in the aquaculture area and communicating with wireless sensor network. The monitoring nodes combine multiple sensors to collect water quality data. The monitoring data changes on each node in the integrated water area reflects water quality status. But the quantity of nodes, monitoring scale and water coverage are limited. While insufficient number of monitoring nodes could not represent the entire water area, but increasing the density of monitoring nodes would increase the complexity of the system and cost. Therefore, the wider range of water quality data was collected, the more intuitive water quality status distribution in the water area reflected. Expanding the monitoring scope could avoid the abnormality or missed inspection of water quality caused by inadequate coverage. A dynamic monitoring system for aquaculture water quality monitoring was designed based on unmanned surface vehicle. The system expanded the monitoring scale, increased the monitoring range and collected more extensive water quality information by dynamic monitoring. It also expanded the current water quality monitoring and anomaly detection programs. The dynamic monitoring system consisted of unmanned surface vehicle, shore-based console, manual remote controller and cloud monitoring server. The unmanned surface vehicle integrated Raspberry Pi and multiple sensors to collect water temperature, pH value and water turbidity, and the data was sent back to the shore-based console and uploaded to the cloud server. The dynamic monitoring system designed a data acquisition scheme based on hover sampling by unmanned surface vehicle, the returned data composed longitude, latitude, roll angle, pitch angle, yaw angle, ultrasonic distance, water temperature, turbidity value and pH value in sequence. The data returned the shore-based console and performed effective filtering on all received packets. The vehicle ran a path planning strategy based on map analysis. It calculated the position and heading angle in real time to assist in automatic navigation to improve monitoring efficiency, and designed an obstacle avoidance system to detect obstacles in front of the hull. After testing and verifying the feasibility of the system and optimizing the monitoring efficiency of the system, the deployment experiment was carried out in Zhoushan aquafarm. It was verified by experiments that the absolute value of the relative error of water temperature was not more than 0.5% compared with the traditional method, the absolute value of the relative error of the pH value was not more than 1.43%, and the absolute value of the relative error of turbidity was not more than 4.9%, all the data was within the accuracy range of the sensor and met the monitoring needs. The system was deployed in aquaculture waters, collecting 731 sets of valid data within 9800m2, covering approximately 68% of the water surface range, which reflected the overall water quality information of the water area and provided abnormal conditions in the water surface area. The dynamic monitoring system improved the shortcomings of current aquaculture water quality monitoring methods and expanded application of the Internet of Things technology in the field of agricultural engineering. Compared with current monitoring program, the scope of water quality monitoring was expanded, the monitoring efficiency was improved, and the monitoring cost was greatly reduced. It could be regarded as monitoring strategy and technical means for aquaculture water quality monitoring which had better application and promotion value and still had somespace to be improved.

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江先亮,尚子宁,金光.基于无人船的水产养殖水质动态监测系统设计与实验[J].农业机械学报,2020,51(9):175-185,174. JIANG Xianliang, SHANG Zining, JIN Guang. Design and Test of Dynamic Water Quality Monitoring System for Aquaculture Based on Unmanned Surface Vehicle[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(9):175-185,174.

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  • 收稿日期:2020-01-02
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  • 在线发布日期: 2020-09-10
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