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Main Authors: Sukhorukov, Daniil, Zakharov, Andrei, Glazkov, Nikita, Yanchanka, Katsiaryna, Kirilin, Vladimir, Dubovitsky, Maxim, Sultimov, Roman, Maksimov, Yuri, Makarov, Ilya
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.23387
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author Sukhorukov, Daniil
Zakharov, Andrei
Glazkov, Nikita
Yanchanka, Katsiaryna
Kirilin, Vladimir
Dubovitsky, Maxim
Sultimov, Roman
Maksimov, Yuri
Makarov, Ilya
author_facet Sukhorukov, Daniil
Zakharov, Andrei
Glazkov, Nikita
Yanchanka, Katsiaryna
Kirilin, Vladimir
Dubovitsky, Maxim
Sultimov, Roman
Maksimov, Yuri
Makarov, Ilya
contents We present the Hierarchical AI-Meteorologist, an LLM-agent system that generates explainable weather reports using a hierarchical forecast reasoning and weather keyword generation. Unlike standard approaches that treat forecasts as flat time series, our framework performs multi-scale reasoning across hourly, 6-hour, and daily aggregations to capture both short-term dynamics and long-term trends. Its core reasoning agent converts structured meteorological inputs into coherent narratives while simultaneously extracting a few keywords effectively summarizing the dominant meteorological events. These keywords serve as semantic anchors for validating consistency, temporal coherence and factual alignment of the generated reports. Using OpenWeather and Meteostat data, we demonstrate that hierarchical context and keyword-based validation substantially improve interpretability and robustness of LLM-generated weather narratives, offering a reproducible framework for semantic evaluation of automated meteorological reporting and advancing agent-based scientific reasoning.
format Preprint
id arxiv_https___arxiv_org_abs_2511_23387
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical AI-Meteorologist: LLM-Agent System for Multi-Scale and Explainable Weather Forecast Reporting
Sukhorukov, Daniil
Zakharov, Andrei
Glazkov, Nikita
Yanchanka, Katsiaryna
Kirilin, Vladimir
Dubovitsky, Maxim
Sultimov, Roman
Maksimov, Yuri
Makarov, Ilya
Artificial Intelligence
We present the Hierarchical AI-Meteorologist, an LLM-agent system that generates explainable weather reports using a hierarchical forecast reasoning and weather keyword generation. Unlike standard approaches that treat forecasts as flat time series, our framework performs multi-scale reasoning across hourly, 6-hour, and daily aggregations to capture both short-term dynamics and long-term trends. Its core reasoning agent converts structured meteorological inputs into coherent narratives while simultaneously extracting a few keywords effectively summarizing the dominant meteorological events. These keywords serve as semantic anchors for validating consistency, temporal coherence and factual alignment of the generated reports. Using OpenWeather and Meteostat data, we demonstrate that hierarchical context and keyword-based validation substantially improve interpretability and robustness of LLM-generated weather narratives, offering a reproducible framework for semantic evaluation of automated meteorological reporting and advancing agent-based scientific reasoning.
title Hierarchical AI-Meteorologist: LLM-Agent System for Multi-Scale and Explainable Weather Forecast Reporting
topic Artificial Intelligence
url https://arxiv.org/abs/2511.23387