Abstract :
Predictive modeling in remote sensing using machine learning (ML) algorithms has emerged as a powerful approach for addressing various environmental and climatic challenges. This paper explores the integration of advanced ML techniques with remote sensing data to enhance predictive capabilities for applications such as land cover classification, crop yield prediction, climate change monitoring, and disaster management. We review related works and existing systems, highlighting platforms like Google Earth Engine (GEE), NASA Earth Exchange (NEX), and Sentinel Hub, which leverage cloud computing to handle large-scale data processing and model deployment. The proposed system incorporates data acquisition, preprocessing, feature extraction, model selection and training, and prediction and visualization to provide accurate and timely predictions. Future enhancements, including deep learning integration, real-time data processing, enhanced user interfaces, and collaboration with Internet of Things (IoT) devices, are discussed to further strengthen the system’s capabilities. The paper concludes by emphasizing the potential of ML algorithms in transforming remote sensing applications, supporting informed decision-making, and improving the management of Earth’s resources.
Keywords :
Cloud Computing, Data, Deep learning, environmental monitoring, Google Earth Engine, Machine learning, NASA Earth Exchange, Predictive modeling, Remote Sensing, Sentinel HubReferences :
- Zhu, X. X., Tuia, D., Mou, L., Xia, G. S., Zhang, L., Xu, F., & Fraundorfer, F. (2017). Deep learning in remote sensing: A comprehensive review and list of resources. IEEE Geoscience and Remote Sensing Magazine, 5(4), 8-36.
- Ma, L., Liu, Y., Zhang, X., Ye, Y., Yin, G., & Johnson, B. A. (2019). Deep learning in remote sensing applications: A meta-analysis and review. ISPRS Journal of Photogrammetry and Remote Sensing, 152, 166-177.
- Shaik, N., & Krishna Priya, C. (2024). Navigating the Future: Unraveling the Potential of Software-Defined Networking. International Journal of Research Publication and Reviews, 5(6), 2580-2590. [Online]. Available: www.ijrpr.com. ISSN 2582-7421.
- Patel, D., Shah, S., & Patel, A. (2023). An extensive study on deep learning-based fraud detection systems. Journal of Computational Science, 54, 101253.
- Abdul Subhahan Shaik and Nazeer Shaik. “Enhancing BGP Security with Blockchain Technology: Challenges and Solutions.” International Journal of Advance Research and Innovative Ideas in Education, 10(3) (2024): 5249-5257.
- Shaik, N., Chitralingappa, P., & Harichandana, B. (2024). “Securing Parallel Data: An Experimental Study of Hindmarsh-Rose Model-Based Confidentiality.” International Journal of Advanced Research in Science, Communication and Technology (IJARSCT), 4(1), 81. DOI: 10.48175/IJARSCT-18709.
- Shaik, N., & Shaik, A. S. (2024). Reinforcement Learning for Adaptive Cognitive Sensor Networks. International Journal of Advanced Research in Science, Communication and Technology (IJARSCT), 4(1), 662. [Online]. Available: www.ijarsct.co.in. DOI: 10.48175/IJARSCT-18785.
- Shaik, N., Harichandana, B., & Chitralingappa, P. (2024). Deep learning: Cutting-edge techniques and real-world applications. International Journal of Advance and Applied Research, 11(5), 123-135. https://www.ijaar.co.in
- Krishna Priya, C., & Shaik, N. (2024). Unveiling the Quantum Frontier: Exploring Principles, Applications, and Challenges of Quantum Networking. International Journal of Scientific Research in Engineering and Management (IJSREM), 08(06), 1. [Online]. Available: www.ijsrem.com. ISSN: 2582-3930. DOI: 10.55041/IJSREM35747.
- Wang, Y., Zhang, L., & Li, Z. (2020). Blockchain-based fraud detection system for streaming services. Computers & Security, 96, 102087.
- Krishna Priya, C., & Shaik, N. (2024). Unveiling the Quantum Frontier: Exploring Principles, Applications, and Challenges of Quantum Networking. International Journal of Scientific Research in Engineering and Management (IJSREM), 08(06), 1. [Online]. Available: www.ijsrem.com.ISSN:2582-3930.DOI:10.55041/IJSREM35747.
- Shaik, N., Harichandana, B., & Chitralingappa, P. (2024). “Quantum Computing and Machine Learning: Transforming Network Security.” International Journal of Advanced Research in Science, Communication and Technology (IJARSCT), 4(1), 500. DOI: 10.48175/IJARSCT- 18769.
- Kumar, N. M., & Rodrigues, J. J. P. C. (2020). Machine learning algorithms for remote sensing image classification: A survey. Remote Sensing Applications: Society and Environment, 19, 100351.
- Maxwell, A. E., Warner, T. A., & Fang, F. (2020). Implementation of machine-learning classification in remote sensing: An applied review. International Journal of Remote Sensing, 41(6), 2696-2723.
- Geng, X., Wang, J., & Yu, W. (2020). Integrating deep learning and transfer learning for landslide susceptibility mapping through satellite remote sensing images. Sensors, 20(20), 5735.
- Ball, J. E., Anderson, D. T., & Chan, C. S. (2017). A comprehensive review of deep learning for image segmentation and object detection. IEEE Transactions on Neural Networks and Learning Systems, 29(6), 2212-2232.
- Tian, H., Yang, X., Wang, C., & Liu, Y. (2020). Remote sensing image scene classification based on convolutional neural networks pre-trained with Gabor features. Remote Sensing, 12(3), 495.
- Hu, M., Liu, S., Zhu, M., Peng, J., & Zeng, M. (2020). Crop yield prediction using deep learning with remotely sensed data. International Journal of Digital Earth, 13(2), 132-150.
- Zhang, X., Zhang, X., Liang, T., & Bai, X. (2021). A convolutional neural network for heterogeneity land cover classification in Sentinel-2 imagery. Remote Sensing Letters, 12(1), 1-10.
- Su, H., Zhang, Y., Hu, H., Tang, C., & Liang, J. (2020). An ensemble learning framework for large-scale crop mapping from multitemporal remote sensing imagery. Remote Sensing of Environment, 248, 111962.
- Li, S., He, Q., Yu, L., & Li, X. (2021). Monitoring urban land cover dynamics using deep learning and remote sensing images. Journal of Environmental Management, 277, 111444.
- Robinson, C., Brown, J., Xu, L., & Griffith, J. (2021). Predicting climate change impacts on vegetation distributions using convolutional neural networks. Ecological Informatics, 61, 101195.
- Chaturvedi, R. K., & Ramaswami, A. (2020). Machine learning approaches to improve climate resilience of urban areas: A review. Environmental Research Letters, 15(11), 113003.
- Kim, S., & Lee, W. (2022). Predicting flood risks in urban areas using deep learning and remote sensing data. International Journal of Disaster Risk Reduction, 74, 102862.
- Jain, M., Srivastava, A., & Karimi, P. (2022). Integrating machine learning and remote sensing for enhancing agricultural productivity. Computers and Electronics in Agriculture, 194, 106693.