地理空间分析
扎根理论
灾害应对
心理学
计算机科学
地理
遥感
社会学
政治学
定性研究
社会科学
应急管理
法学
作者
Yiheng Chen,Lingyao Li,Zihui Ma,Qingwu Hu,Yilun Zhu,Min Deng,Runlong Yu
出处
期刊:Cornell University - arXiv
日期:2025-10-14
标识
DOI:10.48550/arxiv.2510.12061
摘要
Effective disaster response is essential for safeguarding lives and property. Existing statistical approaches often lack semantic context, generalize poorly across events, and offer limited interpretability. While Large language models (LLMs) provide few-shot generalization, they remain text-bound and blind to geography. To bridge this gap, we introduce a Geospatial Awareness Layer (GAL) that grounds LLM agents in structured earth data. Starting from raw wildfire detections, GAL automatically retrieves and integrates infrastructure, demographic, terrain, and weather information from external geodatabases, assembling them into a concise, unit-annotated perception script. This enriched context enables agents to produce evidence-based resource-allocation recommendations (e.g., personnel assignments, budget allocations), further reinforced by historical analogs and daily change signals for incremental updates. We evaluate the framework in real wildfire scenarios across multiple LLM models, showing that geospatially grounded agents can outperform baselines. The proposed framework can generalize to other hazards such as floods and hurricanes.
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