Litcius/Paper detail

Water-Quality Assessment and Pollution-Risk Early-Warning System Based on Web Crawler Technology and LSTM

Guoliang Guan, Yonggui Wang, Ling Yang, Jinzhao Yue, Qiang Li, Jianyun Lin, Qiang Liu

2022International Journal of Environmental Research and Public Health18 citationsDOIOpen Access PDF

Abstract

The openly released and measured data from automatic hydrological and water quality stations in China provide strong data support for water environmental protection management and scientific research. However, current public data on hydrology and water quality only provide real-time data through data tables in a shared page. To excavate the supporting effect of these data on water environmental protection, this paper designs a water-quality-prediction and pollution-risk early-warning system. In this system, crawler technology was used for data collection from public real-time data. Additionally, a modified long short-term memory (LSTM) was adopted to predict the water quality and provide an early warning for pollution risks. According to geographic information technology, this system can show the process of spatial and temporal variations of hydrology and water quality in China. At the same time, the current and future water quality of important monitoring sites can be quickly evaluated and predicted, together with the pollution-risk early warning. The data collected and the water-quality-prediction technique in the system can be shared and used for supporting hydrology and in water quality research and management.

Topics & Concepts

Warning systemWater qualityWeb crawlerEarly warning systemEnvironmental scienceData collectionPollutionData qualityComputer scienceQuality (philosophy)Water pollutionDatabaseHydrology (agriculture)Environmental resource managementEngineeringWorld Wide WebStatisticsTelecommunicationsEpistemologyMetric (unit)Geotechnical engineeringBiologyMathematicsPhilosophyEnvironmental chemistryChemistryEcologyOperations managementWater Quality Monitoring TechnologiesHydrological Forecasting Using AIData Stream Mining Techniques