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Crop Yield Estimation Utilizing Feature Selection Based on Graph Classification

그래프 분류 기반 특징 선택을 활용한 작물 수확량 예측

  • 옴마킨 (순천대학교 인공지능공학부) ;
  • 이성근 (순천대학교 인공지능공학부)
  • Received : 2023.10.13
  • Accepted : 2023.12.27
  • Published : 2023.12.31

Abstract

Crop estimation is essential for the multinational meal and powerful demand due to its numerous aspects like soil, rain, climate, atmosphere, and their relations. The consequence of climate shift impacts the farming yield products. We operate the dataset with temperature, rainfall, humidity, etc. The current research focuses on feature selection with multifarious classifiers to assist farmers and agriculturalists. The crop yield estimation utilizing the feature selection approach is 96% accuracy. Feature selection affects a machine learning model's performance. Additionally, the performance of the current graph classifier accepts 81.5%. Eventually, the random forest regressor without feature selections owns 78% accuracy and the decision tree regressor without feature selections retains 67% accuracy. Our research merit is to reveal the experimental results of with and without feature selection significance for the proposed ten algorithms. These findings support learners and students in choosing the appropriate models for crop classification studies.

작물 수확량 예측은 토양, 비, 기후, 대기 및 이들의 관계와 같은 다양한 측면으로 인해 다국적 식사와 강력한 수요에 필수적이며, 기후 변화는 농업 생산량에 영향을 미친다. 본 연구에서는 온도, 강수량, 습도 등의 데이터 세트를 운영한다. 현재 연구는 농부와 농업인을 지원하기 위해 다양한 분류기를 사용한 기능 선택에 중점을 두고 있다. 특징 선택 접근법을 활용한 작물 수확량 추정은 96% 정확도를 나타내었다. 특징 선택은 기계학습 모델의 성능에 영향을 미친다. 현재 그래프 분류기의 성능은 81.5%를 나타내며, 특징 선택이 없는 Random Forest 회귀 분석은 78%의 정확도를 나타냈다. 또한, 특징 선택이 없는 의사결정 트리 회귀 분석은 67%의 정확도를 유지하였다. 본 논문은 제시된 10가지 알고리즘을 대상으로 특징 선택 중요성에 대한 실험결과를 나타내었다. 이러한 결과는 작물 분류 연구에 적합한 모델을 선택하는 데 도움이 될 것으로 기대된다.

Keywords

Acknowledgement

This work was supported by a Research promotion program of SCNU

References

  1. G. Lou , Y. Liu , T. Zhang, and X. Zheng., "STFL: A Spatial-temporal federated learning framework for graph neural networks," AAAI Conference on Artificial Intelligence Workshop on Deep Learning on Graphs: Methods and Applications, Vancouver, Canada, 2021.
  2. J. Fan, J. Bai, Z. Li, A. O. Bobea, and C. P. Gomes, ""A GNN-RNN approach for harnessing geospatial and temporal information: application to crop yield prediction," Proceedings of the AAAI conference on artificial intelligence, vol. 36, no. 11, 2022, pp. 11873-11881.
  3. C. Yang, H. Xie, L. Sun, L. He, L. Yang, S. S. Yu, Y. Rong, P. Zhao, and J. Huang, "Fedgraphnn: A federated learning benchmark system for graph neural networks," ICLR 2021 Workshop on Distributed and Private Machine Learning (DPML), Appleton, USA, 2021.
  4. R. Liu, P. Xing, Z. Deng, A. Li, and C. Guan, "Federated graph neural networks: overview, techniques and challenges," Journal of latex class files, , vol. 14, no. 8, 2021, pp. 1-16.
  5. M. T. K. Makkithaya and N. V. G, "A Federated Learning-Based Crop Yield Prediction for Agricultural Production Risk Management," 2022 IEEE Delhi Section Conference (DELCON), New Delhi, India, 2022, pp. 1-7.
  6. P. S. M. Gopal and R. Bhargavi, "A novel approach for efficient crop yield prediction," Computers and Electronics in Agriculture," vol. 165, 2019, pp. 1-9. https://doi.org/10.1016/j.compag.2019.104968
  7. M. U. Ahmed and I. Hussain, "Prediction of wheat production using machine learning algorithms in northern areas of Pakistan," Telecommunications policy, vol. 46, Issue 6, 2022, pp. 1-12. https://doi.org/10.1016/j.telpol.2022.102370
  8. S. Yang, L. Gu, X. Li, T. Jiang, and R. Ren, "Crop classification method based on optimal feature selection and Hybrid CNN-RF networks for multi-temporal remote sensing imagery," Remote Sensing, vol. 12, no. 19, 2020, pp. 3119-3225. https://doi.org/10.3390/rs12193119
  9. S. Gupta, A. Geetha, K. S. Sankaran, and A. S. Zamani, "Machine learning- and feature selection-enabled framework for accurate crop yield prediction," Journal of Food Quality, vol. 2022, 2023, pp. 1-7. https://doi.org/10.1155/2022/6293985
  10. S. K. S. Durai and M. D. Shamili, "Smart farming using Machine learning and deep learning techniques," Decision Analytics Journal, vol. 2, no. 3, 2022, pp. 1-30. https://doi.org/10.1016/j.dajour.2022.100041
  11. O. Khin and S. Lee, "Performance Analysis of Deep Reinforcement Learning Algorithms in Agricultural Crop Production," J. of the Korea Institute of Electronic Communication Sciences, vol. 18, no. 1, 2023, pp. 99-105.
  12. J. Bong, S. Jeong, S. Jeong, and J. Han, "Study on Image Use for Plant Disease Classification," J. of the Korea Institute of Electronic Communication Sciences, vol. 17, no. 2, 2022, pp. 343-350.
  13. O. Khin and S. Lee, " Feature Extraction and Recognition of Myanmar Characters Based on Deep Learning," J. of the Korea Institute of Electronic Communication Sciences, vol. 17, no. 5, 2022, pp. 977-984.