Investigation of the Environmental Quality of Watershed Prediction System Based on an Artificial Intelligence Algorithm

IF 3.8 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Zian Liu, Lingwei Ren, Zhonghao Ke, Xizheng Jin, Shuya Rui, Hua Pan, Zhiping Ye
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引用次数: 0

Abstract

Monitoring and predicting the environmental quality of watersheds is essential for understanding and managing water pollution. Current prediction models often suffer from limitations, including the need for excessive information, complex architectures, and extensive computational resources. To address these challenges, this paper proposes a water pollution prediction system using artificial neural network trained by the back-propagation algorithm with a 2–6-2 structure. The model was developed using chemical oxygen demand and NH₄⁺ concentration data collected from the catchment areas of Kaihua and Anji counties in Zhejiang Province between November 2020 and October 2021. The average relative errors of the neural network training for chemical oxygen demand and NH4+ were -4.59% and -2.65%, the correlation coefficients were 100% and 98%, and the root-mean-square errors were 7.83% and 0.14%, which confirmed the effectiveness of the back-propagation neural network training. The average relative errors between the predicted and observed values of chemical oxygen demand and NH4+ by the neural network were -4.46% and 2.34%, respectively, with correlation coefficients of 100% and 88%, coefficient of determination of 0.94, and root-mean-square errors of 7.72% and 0.11%, which indicated that the predicted values of the back-propagation neural network on the quality of the water were highly significant correlated with the measured values. This study highlights the potential of artificial neural network models to offer efficient, accurate, and computationally streamlined solutions for water pollution monitoring.

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来源期刊
Water, Air, & Soil Pollution
Water, Air, & Soil Pollution 环境科学-环境科学
CiteScore
4.50
自引率
6.90%
发文量
448
审稿时长
2.6 months
期刊介绍: Water, Air, & Soil Pollution is an international, interdisciplinary journal on all aspects of pollution and solutions to pollution in the biosphere. This includes chemical, physical and biological processes affecting flora, fauna, water, air and soil in relation to environmental pollution. Because of its scope, the subject areas are diverse and include all aspects of pollution sources, transport, deposition, accumulation, acid precipitation, atmospheric pollution, metals, aquatic pollution including marine pollution and ground water, waste water, pesticides, soil pollution, sewage, sediment pollution, forestry pollution, effects of pollutants on humans, vegetation, fish, aquatic species, micro-organisms, and animals, environmental and molecular toxicology applied to pollution research, biosensors, global and climate change, ecological implications of pollution and pollution models. Water, Air, & Soil Pollution also publishes manuscripts on novel methods used in the study of environmental pollutants, environmental toxicology, environmental biology, novel environmental engineering related to pollution, biodiversity as influenced by pollution, novel environmental biotechnology as applied to pollution (e.g. bioremediation), environmental modelling and biorestoration of polluted environments. Articles should not be submitted that are of local interest only and do not advance international knowledge in environmental pollution and solutions to pollution. Articles that simply replicate known knowledge or techniques while researching a local pollution problem will normally be rejected without review. Submitted articles must have up-to-date references, employ the correct experimental replication and statistical analysis, where needed and contain a significant contribution to new knowledge. The publishing and editorial team sincerely appreciate your cooperation. Water, Air, & Soil Pollution publishes research papers; review articles; mini-reviews; and book reviews.
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