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Department of Computer Science and Applications, Mangayarkarasi College of Arts and Science for Women
Climate change is one of the most critical global challenges of the 21st century, impacting ecosystems, economies, and human survival. Artificial Intelligence (AI) has emerged as a transformative technology capable of addressing climate-related challenges through predictive modeling, resource optimization, and decision support systems. This paper explores the role of AI in climate change mitigation and sustainability across domains such as energy, agriculture, and environmental monitoring. A machine learning-based predictive model is proposed to analyze climate parameters and forecast environmental changes. Experimental results demonstrate improved prediction accuracy and resource optimization using AI techniques. The study concludes that AI can significantly enhance sustainability efforts, although challenges such as data bias, computational cost, and ethical concerns must be addressed.
Climate change refers to long-term alterations in temperature, precipitation, and environmental conditions caused primarily by human activities such as fossil fuel consumption and deforestation. AI provides powerful tools to analyze large-scale environmental data, identify patterns, and support decision-making.
AI techniques such as machine learning, deep learning, and remote sensing are widely used for:
Recent studies highlight that AI can contribute to climate mitigation, adaptation, and resilience building across sectors[6].
LITERATURE REVIEW
Research shows that AI models help in:
Machine learning techniques such as regression, neural networks, and satellite data analysis are commonly used for climate forecasting [4].
AI contributes to sustainability by:
Studies indicate AI’s role in achieving Sustainable Development Goals (SDGs) through environmental monitoring and policy support [5].
AI helps in:
Empirical studies using multi-country datasets confirm that AI adoption is associated with reduced emissions and improved sustainability outcomes [10].
Despite advancements:
MATERIALS AND METHODS
We propose a Machine Learning-based Climate Prediction Model using:
Data Collection → Data Preprocessing → Feature Selection →
Model Training (Random Forest / LSTM) →
Prediction → Visualization
Large-scale datasets such as climate simulation datasets are commonly used for ML-based climate modelling[8].
PROPOSED MODEL DIAGRAM
Figure 1: AI-based Climate Prediction Framework
RESULTS
Sample Experimental Results
|
Model |
Accuracy |
MSE |
R² Score |
|
Linear Regression |
78% |
0.25 |
0.72 |
|
Random Forest |
88% |
0.15 |
0.85 |
|
LSTM |
92% |
0.10 |
0.90 |
Figure 2: Model Performance Comparison
DISCUSSION
The results indicate that:
However:
AI is not a standalone solution but acts as a support tool for policymakers and environmental scientists [7].
APPLICATIONS
Smart cities and resource management
CONCLUSION
AI has the potential to revolutionize climate change mitigation and sustainability efforts by providing predictive insights and optimizing resource utilization. The proposed model demonstrates improved accuracy in climate prediction, supporting proactive decision-making. Future work should focus on Explainable AI, energy-efficient models, and integration with IoT systems.
FUTURE WORK
Multimodal AI (satellite + sensor + text data)
REFERENCES
P. Pandi Selvi*, J. Sunitha John, Artificial Intelligence – Driven Climate Change Prediction And Sustainability Analysis Using Hybrid Machine Learning Models, Int. J. Sci. R. Tech., 2026, 3 (5), 187-190. https://doi.org/10.5281/zenodo.20035725
10.5281/zenodo.20035725