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Aquatic ecosystem-based water management in agriculture project by data analytics using classification by deep learning techniques

  • Research Article - Hydrology and Hydraulics
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Abstract

Over the past few decades, irrigation using groundwater has increased significantly. It has significant effects on local to regional climates as well as terrestrial energy fluxes, food production, and water availability. High cost of metering equipment installation as well as maintenance, privacy concerns, and existence of unregistered or illegal wells make it difficult to monitor irrigation water use on a large scale. This study suggests a unique approach to DL-based feature extraction and categorization for ecosystem-based water management in agricultural fields. Agriculture field water analysis data were used as the input in this instance, which was subsequently processed for noise removal, smoothing, and normalisation. Particle swarm-based convolutional architecture has been used to extract the processed data feature. Back regressive propagation based on incentive Q-learning is used to classify the extracted features. Experimental analysis has been carried out in terms of accuracy, precision, recall, F-1 score, RMSE and mAPE. Proposed technique obtained accuracy of 92%, precision of 78%, recall of 83%, F_1 score of 76%, RMSE of 55% and MAPE of 57%.

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References

  • Ahansal Y, Bouziani M, Yaagoubi R, Sebari I, Sebari K, Kenny L (2022) Towards smart irrigation: a literature review on the use of geospatial technologies and machine learning in the management of water resources in arboriculture. Agronomy 12(2):297

    Article  Google Scholar 

  • Ahmed MH, Lin LS (2021) Dissolved oxygen concentration predictions for running waters with different land use land cover using a quantile regression forest machine learning technique. J Hydrol 597:126213

    Article  CAS  Google Scholar 

  • Alibabaei K, Gaspar PD, Assunção E, Alirezazadeh S, Lima TM, Soares VNGJ, Caldeira JMLP (2022) Comparison of on-policy deep reinforcement learning A2C with off-policy DQN in irrigation optimization: a case study at a site in Portugal. Computers 11(7):104. https://doi.org/10.3390/computers11070104

    Article  Google Scholar 

  • Alshehri M, Kumar M, Bhardwaj A, Mishra S, Gyani J (2021) Deep learning based approach to classify saline particles in sea water. Water 13(9):1251

    Article  CAS  Google Scholar 

  • Dehghanisanij H, Emami H, Emami S, Rezaverdinejad V (2022) A hybrid machine learning approach for estimating the water-use efficiency and yield in agriculture. Sci Rep 12(1):1–16

    Article  Google Scholar 

  • El Bilali A, Taleb A, Brouziyne Y (2021) Groundwater quality forecasting using machine learning algorithms for irrigation purposes. Agric Water Manag 245:106625

    Article  Google Scholar 

  • Jung, C., Ahn, S., Sheng, Z., Ayana, E. K., Srinivasan, R., & Yeganantham, D. (2021). Evaluate River Water Salinity in a Semi‐Arid Agricultural Watershed by Coupling Ensemble Machine Learning Technique with SWAT Model. JAWRA Journal of the American Water Resources Association.

  • Kayhomayoon Z, Azar NA, Milan SG, Moghaddam HK, Berndtsson R (2021) Novel approach for predicting groundwater storage loss using machine learning. J Environ Manag 296:113237

    Article  Google Scholar 

  • Kim C, Kim CS (2021) Comparison of the performance of a hydrologic model and a deep learning technique for rainfall-runoff analysis. Tropic Cyclone Res Rev 10(4):215–222

    Article  Google Scholar 

  • Loukika KN, Keesara VR, Sridhar V (2021) Analysis of land use and land cover using machine learning algorithms on google earth engine for Munneru River Basin. India Sustain 13(24):13758

    Google Scholar 

  • Menaga A, Vasantha S (2022) Smart sustainable agriculture using machine learning and AI: a review. In: Yu-Chen H, Tiwari S, Trivedi MC, Mishra KK (eds) Ambient communications and computer systems: proceedings of RACCCS 2021. Springer Nature Singapore, Singapore, pp 447–458. https://doi.org/10.1007/978-981-16-7952-0_42

    Chapter  Google Scholar 

  • Nathgosavi V (2021) A survey on crop yield prediction using machine learning. Turk J Comput Math Educ 12(13):2343–2347

    Google Scholar 

  • Pallathadka H, Mustafa M, Sanchez DT, Sajja GS, Gour S, Naved M (2021) Impact of machine learning on management, healthcare and agriculture. Mater Today Proc

  • Perea RG, Ballesteros R, Ortega JF, Moreno MÁ (2021) Water and energy demand forecasting in large-scale water distribution networks for irrigation using open data and machine learning algorithms. Comput Electron Agric 188:106327

    Article  Google Scholar 

  • Raghuvanshi A, Singh UK, Sajja GS, Pallathadka H, Asenso E, Kamal M, Singh A, Phasinam K (2022) Intrusion detection using machine learning for risk mitigation in IoT-enabled smart irrigation in smart farming. J Food Qual 2022:1–8. https://doi.org/10.1155/2022/3955514

    Article  Google Scholar 

  • Rehman M, Razzaq A, Baig IA, Jabeen J, Tahir MHN, Ahmed UI, Altaf A, Abbas T (2022) Semantics analysis of agricultural experts’ opinions for crop productivity through machine learning. Appl Artif Intell. https://doi.org/10.1080/08839514.2021.2012055

    Article  Google Scholar 

  • Saggi MK, Jain S (2022) A survey towards decision support system on smart irrigation scheduling using machine learning approaches. Archiv Comput Methods Eng 29:1–24

    Article  Google Scholar 

  • Swetha TM, Yogitha T, Hitha MKS, Syamanthika P, Poorna SS, Anuraj K (2021) IOT based water management system for crops using conventional machine learning techniques. In: 2021 12th international conference on computing communication and networking technologies (ICCCNT), pp. 1–4. IEEE.

  • Vianny DMM, John A, Mohan SK, Sarlan A, Ahmadian A (2022) Water optimization technique for precision irrigation system using IoT and machine learning. Sustain Energy Technol Assess 52:102307

    Google Scholar 

  • Zhang J, Liu J, Chen Y, Feng X, Sun Z (2021) Knowledge mapping of machine learning approaches applied in agricultural management—a scientometric review with citespace. Sustainability 13(14):7662

    Article  Google Scholar 

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Acknowledgements

We would like to express our sincere gratitude, who help us to develop this research.

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Correspondence to Wongchai Anupong.

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This article does not contain any studies with animals performed by any of the authors.

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Edited by Dr. Antonio Zuorro (GUEST EDITOR) / Dr. Michael Nones (CO-EDITOR-IN-CHIEF).

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Anuradha, T., Sen, S.K., Tamilarasi, K.M. et al. Aquatic ecosystem-based water management in agriculture project by data analytics using classification by deep learning techniques. Acta Geophys. 72, 2059–2069 (2024). https://doi.org/10.1007/s11600-023-01104-6

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