AI Driven IoT based Satellite remote sensing system: KSK Approach in Satellite Remote Sensing

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This is an unedited manuscript accepted for publication and provided as an Article in Press for early access at the author’s request. The article will undergo copyediting, typesetting, and galley proof review before final publication. Please be aware that errors may be identified during production that could affect the content. All legal disclaimers of the journal apply.

Year : 2026 | Volume : 04 | 01 | Page :
    By

    Dr. Kazi Kutubuddin Sayyad Liyakat,

  1. Professor, Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur (MS), Maharashtra, India

Abstract

The convergence of the Internet of Things (IoT) and satellite remote sensing has traditionally been bottlenecked by massive data latency and limited downlink bandwidth. This paper proposes a decentralized framework for an “AI-Driven IoT-based Satellite Remote Sensing System,” which shifts the paradigm from raw data transmission to onboard edge-intelligence. By integrating lightweight convolutional neural networks (CNNs) directly into satellite payloads, the system performs real-time feature extraction and anomaly detection before transmission. We demonstrate that this architecture not only optimizes spectral data processing but also reduces telemetry overhead by filtering redundant environmental noise. Our findings suggest that deploying autonomous AI agents at the orbital edge is the critical lynchpin for achieving instantaneous global situational awareness in disaster management, precision agriculture, and maritime surveillance. his study proposes a high-performance satellite remote sensing system based on the KSK Approach (Knowledge-Sensors-Knowledge) for real-time land cover classification and environmental monitoring. The KSK approach optimizes satellite data processing by creating an intelligent loop of pre-defined domain knowledge, raw sensor data acquisition, and post-processed knowledge generation. Experimental results indicate that this framework significantly outperforms traditional unsupervised techniques, achieving an accuracy of (99.9%) and a recall of (97.9%) in classification tasks. By addressing the computational limitations of analyzing large-scale high-resolution imagery, the KSK approach enhances operational efficiency, providing robust and reliable data for disaster management and sustainable resource planning.

Keywords: AIIoT, Satellite IoT, Remote Sensing, KSK Approach, Low latency Telemetry,

How to cite this article:
Dr. Kazi Kutubuddin Sayyad Liyakat. AI Driven IoT based Satellite remote sensing system: KSK Approach in Satellite Remote Sensing. International Journal of Satellite Remote Sensing. 2026; 04(01):-.
How to cite this URL:
Dr. Kazi Kutubuddin Sayyad Liyakat. AI Driven IoT based Satellite remote sensing system: KSK Approach in Satellite Remote Sensing. International Journal of Satellite Remote Sensing. 2026; 04(01):-. Available from: https://journals.stmjournals.com/ijsrs/article=2026/view=243279


References

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Ahead of Print Subscription Review Article
Volume 04
01
Received 06/05/2026
Accepted 07/05/2026
Published 09/05/2026
Publication Time 3 Days


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