Prediction of ammonia contaminants in the aquaculture ponds using soft computing coupled with wavelet analysis
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Date
2023
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier Ltd
Abstract
Intensive aquaculture practices generate highly polluted organic effluents such as biological oxygen demand (BOD), alkalinity, total ammonia, nitrates, calcium, potassium, sodium, iron, and chlorides. In recent years, Inland aquaculture ponds in the western delta region of Andhra Pradesh have been intensively expanding and are more concerned about negative environmental impact. This paper presents the water quality analysis of aquaculture waters in 64 random locations in the western delta region of Andhra Pradesh. The average water quality index (WQI) was 126, with WQI values ranging from 21 to 456. Approximately 78% of the water samples were very poor and unsafe for drinking and domestic usage. The mean ammonia content in aquaculture water was 0.15 mg/L, and 78% of the samples were above the acceptable limit set by the World Health Organization (WHO) of 0.5 mg/L. The quantity of ammonia in the water ranged from 0.05 to 2.8 mg/L. The results show that ammonia levels exceed the permissible limits and are a significant concern in aquaculture waters due to toxicity. This paper also presents an intelligent soft computing approach to predicting ammonia levels in aquaculture ponds, using two novel approaches, such as the pelican optimization algorithm (POA) and POA coupled with discrete wavelet analysis (DWT-POA). The modified and enhanced POA with DWT can converge to higher performance when compared to standard POA, with an average percentage error of 1.964 and a coefficient of determination (R2) value of 0.822. Moreover, it was found that prediction models were reliable with good accuracy and simple to execute. Furthermore, these prediction models could help stakeholders and policymakers to make a real-time prediction of ammonia levels in intensive farming inland aquaculture ponds. © 2023 Elsevier Ltd
Description
Keywords
Ammonia, Biochemical oxygen demand, Chlorine compounds, Dissolved oxygen, Effluents, Eutrophication, Farms, Forecasting, Iron compounds, Lakes, Potable water, Quality control, Wavelet analysis, Andhra Pradesh, Aquaculture ponds, Biological oxygen demand, Intensive aquacultures, Optimization algorithms, Organic effluents, Prediction modelling, Soft-Computing, Water quality indexes, Wavelet-analysis, Water quality, ammonia, drinking water, accuracy assessment, algorithm, alkalinity, aquaculture system, biochemical oxygen demand, computer simulation, concentration (composition), effluent, eutrophication, numerical model, policy making, pollutant source, pollution incidence, pollution policy, pond, prediction, real time, stakeholder, water quality, wavelet analysis, accuracy, agricultural worker, aquaculture, Article, artificial neural network, controlled study, discrete wavelet analysis, environmental parameters, geographic distribution, limit of quantitation, pelican optimization algorithm, predictive model, water analysis, water pollutant, water pollution, water quality index, water sampling, World Health Organization, procedures, India, Aquaculture, Ponds, Water Quality, Wavelet Analysis
Citation
Environmental Pollution, 2023, 331, , pp. -
