AI-Driven Environmental Simulation and Climate Pattern Prediction

Authors

  • Aino Kettunen Faculty of Science and Forestry, University of Eastern Finland, Finland Author
  • Marko Rantala Tampere University, Finland Author
  • Linnea Saaristo University of Oulu, Finland Author
  • Ville Koivuniemi LUT University, Finland Author

DOI:

https://doi.org/10.5281/zenodo.17850644

Keywords:

Environmental simulation, Climate prediction, artificial intelligence, Deep Learning, multi agent systems

Abstract

Environmental simulation and climate pattern pre diction have entered a new era through advances in artificial intelligence. Modern deep learning architectures, cognitive models, and multi agent systems enable fine grained climate forecasting, behavior driven environmental modeling, and the identification of emergent ecological trends. This paper explores the design and application of AI driven environmental simulation using insights from cooperative learning, cognitive architectures, visual analysis, reinforcement design, and sensor based data processing. The study integrates twenty referenced works across cognitive science, multi agent dynamics, healthcare prediction, spectrum adaptation, and reasoning systems to build a unified perspective on climate prediction. Experiments include colorful diagrams, structured models, and comparative charts. The results demonstrate that AI enhanced simulation offers superior predictive accuracy and stability across volatile climate conditions. These findings support the growing importance of AI as a foundational tool for climate science.

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Published

2020-08-02