Novel assessment tools for inland aquaculture in the western Godavari delta region of Andhra Pradesh

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2024

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Springer

Abstract

The production of fisheries and shrimp has been twice every 10 years for the previous five decades, making it the most rapidly expanding food industry. This growth is due to intensive farming and the conversion of agriculture into aquaculture in many parts of South Asia. Furthermore, intensive aquaculture generates positive economic growth but leads to environmental degradation without proper monitoring. Unfortunately, technical innovation is less in aquaculture than agricultural and manufacturing industries. The advent of remote sensing and soft computing has expanded various opportunities for utilizing and integrating technological advances in civil and environmental disciplines. This paper presents the aquaculture scenario in the western Godavari delta region of Andhra Pradesh and proposes various novel assessment tools to monitor the aquaculture environment. An experimental investigation was carried out on the physicochemical characteristics of the inland aquaculture ponds to evaluate water quality in the aquaculture ponds. Furthermore, to assess the intensity of inland aquaculture, the current work concentrates on the potential application of remote sensing and soft computing approaches. Geospatial models of kriging and inverse distance weighing (IDW) show higher performance in estimating ammonia levels in the intensive aquaculture groundwaters with coefficient of determination (R2) values of 0.947 and 0.901, respectively. Teaching learning-based optimization (TLBO) and adaptive particle swarm optimization (APSO), two of the five soft computing techniques utilized in the study, perform better than the others. Additionally, it was found that remote sensing-based assessment tools and soft computing prediction models were both trustworthy, accurate, and easy to use. Furthermore, these methods could assist in the real-time evaluation of inland aquaculture waters by stakeholders and policymakers. © The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2023.

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Keywords

Ammonia, Aquaculture, Economics, Farms, Groundwater, Inverse problems, Lakes, Particle swarm optimization (PSO), Quality control, Soft computing, Water quality, Andhra Pradesh, Aquaculture ponds, Assessment tool, Food industries, Intensive aquacultures, Positive economics, Remote-sensing, Soft-Computing, South Asia, Water quality indexes, Remote sensing, aquaculture, economic growth, food industry, intensive culture, kriging, physicochemical property, remote sensing, shrimp culture, stock assessment, water quality, India, environmental monitoring, procedures, Environmental Monitoring, Water Quality

Citation

Environmental Science and Pollution Research, 2024, 31, 25, pp. 36275-36290

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