Paper List

Journal: ArXiv Preprint
Published: Unknown
BioinformaticsEcology

EcoCast: A Spatio-Temporal Model for Continual Biodiversity and Climate Risk Forecasting

Concordia University | Algoma University

Hammed A. Akande, Abdulrauf A. Gidado
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The 30-Second View

IN SHORT: This paper addresses the critical bottleneck in conservation: the lack of timely, high-resolution, near-term forecasts of species distribution shifts under rapidly changing environmental conditions, moving beyond static models to operational, data-driven decision support.

Innovation (TL;DR)

  • Methodology First transformer-based model applied to ecological and climate risk forecasting in Africa, using sequence-to-point prediction (12-month environmental sequences → next-month species occurrence) with explicit temporal dependency modeling via self-attention.
  • Methodology Integration of continual learning (rehearsal + EWC) into biodiversity forecasting, enabling model updates with new data streams without catastrophic forgetting, crucial for non-stationary climate impacts.
  • Biology Operational near-term forecasting paradigm (monthly to seasonal) that requires no future climate projections, using observed environmental sequences to predict immediate conservation-relevant shifts, bridging geophysical forecasting architectures with species distribution modeling.

Key conclusions

  • EcoCast achieves macro-averaged F1 score of 0.65 and PR-AUC of 0.72 on 2023 holdout data for five African bird species, representing +34 and +43 percentage point improvements respectively over Random Forest baseline (F1=0.31, PR-AUC=0.29).
  • Transformer architecture successfully captures critical temporal dependencies: annual seasonality via positional encoding, lagged environmental responses (2-4 month delays), and cross-species ecological signals through joint multi-label training.
  • The framework demonstrates operational feasibility with monthly forecast updates using near-real-time data (ERA5 available within 5 days, final data 2-3 months later), enabling alignment with conservation planning cycles rather than static decadal projections.
Background and Gap: Current conservation relies on static Species Distribution Models (SDMs) or decadal climate projections that cannot provide timely, fine-grained forecasts for immediate management decisions, especially in data-scarce regions like Africa where rapid environmental changes outpace traditional modeling approaches.

Abstract: Increasing climate change and habitat loss are driving unprecedented shifts in species distributions. Conservation professionals urgently need timely, high-resolution predictions of biodiversity risks, especially in ecologically diverse regions like Africa. We propose EcoCast, a spatio-temporal model designed for continual biodiversity and climate risk forecasting. Utilizing multisource satellite imagery, climate data, and citizen science occurrence records, EcoCast predicts near-term (monthly to seasonal) shifts in species distributions through sequence-based transformers that model spatio-temporal environmental dependencies. The architecture is designed with support for continual learning to enable future operational deployment with new data streams. Our pilot study in Africa shows promising improvements in forecasting distributions of selected bird species compared to a Random Forest baseline, highlighting EcoCast's potential to inform targeted conservation policies. By demonstrating an end-to-end pipeline from multi-modal data ingestion to operational forecasting, EcoCast bridges the gap between cutting-edge machine learning and biodiversity management, ultimately guiding data-driven strategies for climate resilience and ecosystem conservation throughout Africa.