Water is the source of life, and in recent years, with the progress in technology, water quality data have shown explosive growth; how to use the massive amounts of data for water quality prediction services has become a new opportunity and challenge. In this paper, we use the surface water quality data of an area in Beijing collected and compiled by Zhongguancun International Medical Laboratory Certification Co., Ltd. (Beijing, China). On this basis, we decompose the original water quality indicator data series into two series in terms of trend and fluctuation; for the characteristics of the decomposed series data, we use the traditional time series prediction method to model the trend term, introduce the deep learning method to interpret ...
Water quality prediction has great significance for water environment protection. A water quality pr...
With the serious deterioration of the water environment, accurate prediction of water quality change...
In smart mariculture, traditional methods are not only difficult to adapt to the complex, dynamic an...
Clean water is an indispensable essential resource on which humans and other living beings depend. T...
During the last years, water quality has been threatened by various pollutants. Therefore, modeling ...
The rapid development of urban industrialization has had many negative effects on the quality of wat...
With the growth of industrialization in recent years, the quality of drinking water has been a great...
According to the current situation of water quality in drainage basin, the key to improve the predic...
This study aimed to investigate the applicability of deep learning algorithms to (monthly) surface w...
Accurate forecast of water quality parameters is important for water quality monitoring and water qu...
The development of computer models for water quality index forecasting has been a leading research t...
In the context of escalating global environmental concerns, the importance of preserving water resou...
Providing an accurate prediction of water quality parameters for improved water quality management i...
This research paper focuses on a water quality prediction model which requires high-quality data. In...
In any aquatic system analysis, the modelling water quality parameters are of considerable significa...
Water quality prediction has great significance for water environment protection. A water quality pr...
With the serious deterioration of the water environment, accurate prediction of water quality change...
In smart mariculture, traditional methods are not only difficult to adapt to the complex, dynamic an...
Clean water is an indispensable essential resource on which humans and other living beings depend. T...
During the last years, water quality has been threatened by various pollutants. Therefore, modeling ...
The rapid development of urban industrialization has had many negative effects on the quality of wat...
With the growth of industrialization in recent years, the quality of drinking water has been a great...
According to the current situation of water quality in drainage basin, the key to improve the predic...
This study aimed to investigate the applicability of deep learning algorithms to (monthly) surface w...
Accurate forecast of water quality parameters is important for water quality monitoring and water qu...
The development of computer models for water quality index forecasting has been a leading research t...
In the context of escalating global environmental concerns, the importance of preserving water resou...
Providing an accurate prediction of water quality parameters for improved water quality management i...
This research paper focuses on a water quality prediction model which requires high-quality data. In...
In any aquatic system analysis, the modelling water quality parameters are of considerable significa...
Water quality prediction has great significance for water environment protection. A water quality pr...
With the serious deterioration of the water environment, accurate prediction of water quality change...
In smart mariculture, traditional methods are not only difficult to adapt to the complex, dynamic an...