基于传感器和大数据的水生态环境绿色信息监测与管理

Q4 Engineering Measurement Sensors Pub Date : 2024-06-17 DOI:10.1016/j.measen.2024.101255
Weijia Jin
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引用次数: 0

摘要

随着工业生产的不断发展,水资源污染越来越严重,对水生生物的危害也越来越大。因此,加强水环境监测已成为预防和解决这一问题的关键措施。针对传统水环境监测方法的局限性,提出了一种水生态环境监测方案。本研究采用先进的传感器技术,包括水质传感器、水位传感器、气象传感器等,对水的各项指标进行实时监测。通过数据采集与存储技术,对传感器获取的数据进行整合与分析。同时,利用大数据分析方法,预测和模拟水生态环境的变化趋势。本方案设计开发了传感器网络监测系统,可在监测点实时采集水温数据,通过传感器网络将采样信息传输到汇聚节点,最后通过GPRS传输到信息智能监测设备,实现及时显示和预警。同时,结合水质监测仪器,可实现监测数据的远程查询和处理。实验结果表明,基于传感器和大数据技术的水生态环境监测与管理系统能够高效、准确地监测水体的各项指标。通过对水生态环境的全面监测,可以及时发现异常情况,并采取相应措施进行保护和修复。系统提供的大数据分析结果可为决策者提供科学依据和指导。
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Monitoring and management of green information in water ecological environment based on sensors and big data

With the continuous development of industrial production, the pollution of water resources is becoming more and more serious, and the damage to aquatic organisms is also increasing. Therefore, strengthening water environment monitoring has become a key measure to prevent and solve this problem. Aiming at the limitation of traditional water environment monitoring methods, a water ecological environment monitoring scheme is proposed. This study uses advanced sensor technology, including water quality sensor, water level sensor, weather sensor, etc., to monitor the indicators of water in real time. Through data acquisition and storage technology, the data obtained by the sensor is integrated and analyzed. At the same time, big data analysis method is used to predict and simulate the change trend of water ecological environment. This scheme designs and develops a sensor network monitoring system, which can collect water temperature data in real time at the monitoring point, transmit the sampled information to the aggregation node through the sensor network, and finally transmit to the information intelligent monitoring equipment through GPRS, so as to realize timely display and early warning. At the same time, combined with the water quality monitoring instrument, it can realize the remote query and processing of monitoring data. The experimental results show that the water ecological environment monitoring and management system based on sensor and big data technology can efficiently and accurately monitor the indicators of water. Through the comprehensive monitoring of the water ecological environment, abnormal situations can be found in time, and corresponding measures can be taken to protect and repair. The results of big data analysis provided by the system can provide scientific basis and guidance for decision makers.

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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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