The Role of Smart Systems in Oil Spill Detection and Response

Rizky Andrika, C. S. Madhumathi

Abstract


Oil spills pose significant threats to marine ecosystems and coastal communities. Rapid detection and response are essential to mitigate the environmental and economic impacts of such spills. This paper explores the application of smart systems, including sensors, drones, and AI, in detecting oil spills and coordinating response efforts. We examine how these technologies can be integrated into early warning systems, real-time monitoring platforms, and automated response mechanisms. The paper presents case studies of smart systems in action, highlighting their ability to improve spill detection accuracy, reduce response times, and minimize the overall impact of oil spills on the environment.

Keywords


oil spill detection, smart systems, AI, environmental protection.

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