A Novel Hybrid AI Federated ML/DL Models for Classification of Soil Components

Main Article Content

Mahendra Eknath Pawar
Rais Allauddin Mulla
Sanjivani H. Kulkarni
Sajeeda Shikalgar
Harikrishna B. Jethva
Gunvant A. Patel

Abstract

The soil is the most fundamental component for the survival of any living thing that can be found on this planet. A little less than 41 percent of Indians are employed in agriculture, which accounts for approximately 19 percent of the country's gross domestic product. As is the case in every other industry, researchers and scientists in this one are exerting a lot of effort to enhance agricultural practices by utilising cutting-edge methods such as machine learning, artificial intelligence, big data, and so on. The findings of the study described in this paper are predicated on the assumption that the method of machine learning results in an improvement in the accuracy of the prediction of soil chemical characteristics. The correlations that were discovered as a result of this research are essential for comprehending the comprehensive approach to predicting the soil attributes using ML/DL models. A number of findings from previous study have been reported and analysed. A state of the art machine learning algorithm, including Logistic Regression, KNN, Support Vector Machine and Random Forest are implemented and compared. Additionally, the innovative Deep Learning Hybrid CNN-RF and VGG-RNN Model for Categorization of Soil Properties is also implemented along with CNN. An investigation into the significance of the selected category for nutritional categorization revealed that a multi-component technique provided the most accurate predictions. Both the CNN-RF and VGG-RNN models that were proposed were successful in classifying the soil with average accuracies of 95.8% and 97.9%, respectively, in the test procedures. A study was carried out in which the CNN-RF model, the VGG-RNN model, and five other machine learning and deep learning models were compared. The suggested VGG-RNN model achieved superior accuracy of classification and real-time durability, respectively.

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How to Cite
Pawar, M. E. ., Mulla, R. A. ., Kulkarni, S. H. ., Shikalgar, S. ., Jethva, H. B. ., & Patel, G. A. . (2022). A Novel Hybrid AI Federated ML/DL Models for Classification of Soil Components . International Journal on Recent and Innovation Trends in Computing and Communication, 10(1s), 190–199. https://doi.org/10.17762/ijritcc.v10i1s.5823
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References

Geetha MCS. Implementation of association rule mining for different soil types in agriculture. International Journal of Advanced Research in Computer and Communication Engineering. 2015 Apr; 4(4):520–2.

Solanki J, Mulge Y. Different techniques used in data mining in agriculture. International Journal of Advanced Research in Computer Science and Software Engineering. 2015 May; 5(5):1223–7.

Bhuyar V. Comparative analysis of classification techniques on soil data to predict fertility rate for Aurangabad District. International Journal of Emerging Trends and Technology in Computer Science. 2014 Mar-Apr; 3(2):200–3.

Fathima NG, Geetha R. Agriculture crop pattern using data mining techniques. International Journal of Advanced Research in Computer Science and Software Engineering. 2014 May; 4(5):781–6.

Suman, Naib BB. Soil classification and fertilizer recommendation using WEKA. International Journal of Computer Science and Management Studies. 2013 Jul; 13(5):142–6.

Ramesh D, Vardhan VB. Data mining techniques and applications to agricultural yield data. International Journal of Advanced Research in Computer and Communication Engineering. 2013 Sep; 2(9):3477–80.

Tsai F, Lai JS, Chen WW, Lin TH. Analysis of topographic and vegetative factors with data mining for landslide verification. Ecological Engineering. 2013 Dec; 61:669–77.

Tittonell P, Shephered KD, Vanlauwe B, Giller KE. Unraveling the effects of soil and crop management on maize productivity in small holder agricultural systems of Western Kenya - An application of classification and regression tree analysis. Agriculture, Ecosystems and Environment. 2008 Jan; 123(1-3):137–50.

Bindraban PS, Stroorvofel JJ, Jansen DM, Vlaming J, Groot JJR. Land quality indicators for suitable land management: Proposed methods for yield gap and soil nutrient balance. Agriculture, Ecosystems and Environment. 2000; 81:103–12.

Gholap J, Lngole A, Gohil J, Shailesh, Attar V. Soil data analysis using classification techniques and soil attribute prediction. 2012 Jun; 9(3):1–4.

Venugopal, S. Aparna, J. Mani, R. Matthew. and V. Williams, “Crop Yield Prediction using Machine Learning Algorithms,” Int. J. of Eng. Res. and Technol., issue 13, vol. 9, pp. 87-91, Aug 2021

Mahendra N. , Dhanush V., Nischitha K., Ashwini and Manjuraju M. R, “Crop Prediction using Machine Learning Approaches,” Int. J. of Eng. Res and Technol., issue 8, vol. 9, pp. 23-26, Aug 2020

Priya P., Muthaiah U. and Balamurugan M., “Predicting Yield of the Crop Using Machine Learning Algorithm,” Int. J. of Eng. Sci and Res. Technol., issue 11,vol. 29, pp. 1248-1255, 2020

M. Champaneri, D. Chachpara, C. Chandvidkar and M. Rathod, “Crop Yield Prediction using Machine Learning,” Int. J. of Sci. and Res., issue 1, vol. 10, pp. 01-03, Apr 2018

Bharath K.R., Balakrishna K., Bency C.A.., Siddesha M. and Sushmitha R., “Crop Recommendation System for Precision Agriculture,” Int. J. of Comput. Sci. and Eng., issue 5, vol. 7, pp. 1277-1282, May 2019

Pawar, M.E., Saini, S. (2022). Mining Top-K Competitors by Eliminating the K-Least Items from Unstructured Dataset. In: Saini, H.S., Singh, R.K., Tariq Beg, M., Mulaveesala, R., Mahmood, M.R. (eds) Innovations in Electronics and Communication Engineering. Lecture Notes in Networks and Systems, vol 355. Springer, Singapore. https://doi.org/10.1007/978-981-16-8512-5_54

Mahendra Eknath Pawar, Satish Saini. (2021). MINING HIGH QUALITY ITEMSET FROM ONLINE REVIEWS USING ASPECT-BASED OPINION MINING AND MULTI-CLASS HYBRID CLASSIFICATION. Harbin Gongye Daxue Xuebao/Journal of Harbin Institute of Technology, 53(12), 271–279.

Mulla, R.A., Saini, S. (2022). An Improved Stock Market Index Prediction System Based on LSTM. In: Pundir, A.K.S., Yadav, N., Sharma, H., Das, S. (eds) Recent Trends in Communication and Intelligent Systems. Algorithms for Intelligent Systems. Springer, Singapore. https://doi.org/10.1007/978-981-19-1324-2_15

Rais Allauddin Mulla, Satish Saini. (2021). Machine Learning Based Framework For Making Adaptive Stock Market Index Prediction System. Harbin Gongye Daxue Xuebao/Journal of Harbin Institute of Technology, 53(12), 243–263.

V. Khetani, Y. Gandhi and R. R. Patil, "A Study on Different Sign Language Recognition Techniques," 2021 International Conference on Computing, Communication and Green Engineering (CCGE), 2021, pp. 1-4, doi: 10.1109/CCGE50943.2021.9776399.

S. Chaudhary, R. Harsh, “Big Data Hysteria, Cognizance and Scope”, 4th International Conference for Convergence in Technology (I2CT) 2018, IEEE, ISBN: 978-1-5386-5432-9/18, 2018.

S. Chaudhary, R. Harsh, “Scope of Big Data Analytics in Bikaner Urban Water Management”, Proceeding of International Conference on Computing Intelligence & Internet of Things (ICCIIoT)2018, International Journal of Computational Intelligence & IoT, Vol. 2,No. 3, Available at: HTTPS://www.ssrn.com/link/ijciiot-pip.html. ELSEVIER-SSRN (ISSN: 1556-5068), 2018.

S. Chaudhary, R. Harsh, “Paradigm Shift of Water demand Forecasting Techniques”, 3rd International Conference on Soft Computing: Theory and Applications, ScienceDirect, Procedia Computer Science 00(2018)000-000, Published by Elsevier Ltd. Selection 2018, Available at: www.elsevier.com/locate/procedia.

S. Chaudhary, R. Harsh, “Epistemological View: Data Ethics, Privacy & Trust on Digital Platform”, 2018 IEEE International Conference on Systems, Computation, Automation, Networking (ICSCAN 2018)” Manakula Vinayagar Institute of Technology, Pondicherry, 6-7 July 2018, pp: 1-6, DOI: 10.1109/ICSCAN.2018.8541166. Added on IEEE Explore Digital Library”22 Nov 2018, Available at: https://ieeexplore.ieee.org/abstract/document/8541166

S. Chaudhary, R. Harsh, “ Role of Ethics in Big data & Issues Faced by Indians”, IEEE International Conference on Advances in Computing, Communication Control and Networking (ICACCCN2018), IEEE ISBN No: 978-1-5386-4119-4, 12-13 Oct 2018.

S. Chaudhary, J. Manocha, “Finest Execution Time Approach for Optimal Execution Time in Mobile and Cloud Computing”, International Journal on Recent and Innovation Trends in Computing and Communication (IJRITCC), ISSN: 2321-8169, PP: 166 – 171, Vol: 6, Issue: 6 , June 18

S. Chaudhary, P. Choudhary, “Motif and Conglomeration of Software Process Improvement Model”, International Journal on Recent and Innovation Trends in Computing and Communication, ISSN: 2321-8169,Vol:6, Issue:6, PP:163-165, June 2018.

S. Chaudhary, A. Kiradoo, “CBIR by Using Features of Shape and Color”, International Journal on future revolution in computer science & communication engineering, ISSN: 2454-4248, Vol: 4, Issue:9, PP:73-76, Sep 2018.

S. Chaudhary and A. Jain, “Storage Security and Predictable Folder Structures in Cloud Computing”, International Journal on Recent and Innovation Trends in Computing and Communication (IJRITCC), ISSN: 2321-8169, vol.- 6,Issue no.- 5,pp. 109-116, May 2018.

S. Chaudhary, M. Dave and A. Sanghi, “Enhance the Data Security in Cloud Computing by Text steganography”, Springer/LNNS proceeding of the World Conference on Smart Trends in Systems, Security and Sustainability, ISSN: 2367-3370, Series:15180, pp. 1-8, Feb 2017.

S. Chaudhary, G.Khatri, M. Dave and A. Sanghi, “Advancing the Potential of Routing Protocol in Mobile Ad Hoc Network” International Journal on Future Revolution in Computer Science & Communication Engineering ,ISSN: 2454-4248,Volume: 3,Issue: 11,PP: 125–128, November 2017.