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Prediction and Optimization of Carbon Footprint
Published Online: September-October 2025
Pages: 01-06
Cite this article
↗ https://www.doi.org/10.59256/ijrtmr.20250505001Abstract
The alarming escalation of global carbon dioxide (CO₂) emissions has intensified the urgency for sustainable, data-driven approaches to combat climate change. This study, titled Prediction and Optimization of Carbon Footprint, presents a comprehensive framework for analyzing historical emission trends across multiple industrial sectors and forecasting their future trajectories. Leveraging publicly available datasets dating back to 1900, the project employs systematic data acquisition, preprocessing, and exploratory data analysis (EDA) to uncover sector-specific emission patterns and anomalies. Advanced visualization techniques, combined with predictive statistical models, facilitate the identification of high-emission sectors and the formulation of targeted optimization strategies. The system incorporates Python-based analytical pipelines with libraries such as Pandas, NumPy, and Matplotlib, alongside interactive visualization tools for stakeholder engagement. Results include a cleaned dataset, sector-wise emission trends, preliminary predictive insights, and actionable recommendations for emission reduction. This framework establishes a foundation for integrating advanced machine learning models in future iterations, ultimately supporting policymakers, industries, and environmental organizations in advancing towards climate neutrality.
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