Applications Of Artificial Intelligence (AI) For Detection & Controlling Environmental Pollution : A Short Review
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Abstract
Environmental pollution has emerged as a pressing global issue with far-reaching consequences for ecosystems, public health, and the planet's sustainability. As traditional methods struggle to keep pace with the scale and complexity of pollution, innovative technologies such as Artificial Intelligence (AI) have emerged as powerful tools for detecting and controlling environmental pollution. This article explores the role of AI in addressing environmental pollution and its potential to revolutionize environmental management practices. AI enables us to detect pollution, assess environmental risks, and implement targeted interventions to mitigate pollution levels effectively by leveraging advanced technologies, data analytics, and predictive modelling.
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References
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