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---
license: mit
task_categories:
- time-series-forecasting
tags:
- nigeria
- agriculture
- food-systems
- synthetic
- weather-and-climate
size_categories:
- 100K<n<1M
data_type: synthetic
---

> ⚠️ **Synthetic dataset** — Parameterized from published SSA literature, not real observations. Not suitable for empirical analysis or policy inference.

# Nigeria Agriculture – Farm Weather Stations

## Dataset Description

Daily weather: temp, rainfall, humidity, wind, solar radiation.

**Category**: Weather & Climate  
**Rows**: 150,000  
**Format**: CSV, Parquet  
**License**: MIT  
**Synthetic**: Yes (generated using reference data from FAO, NBS, NiMet, FMARD)

## Dataset Structure

### Schema

- **state**: string
- **date**: string
- **temp_c**: float
- **rainfall_mm**: float
- **humidity_pct**: float
- **wind_kmh**: float
- **solar_mj_m2**: float

### Sample Data

```
| state   | date       |   temp_c |   rainfall_mm |   humidity_pct |   wind_kmh |   solar_mj_m2 |
|:--------|:-----------|---------:|--------------:|---------------:|-----------:|--------------:|
| Rivers  | 2022-09-26 |     24.9 |           9.5 |           92   |       12.2 |          16.7 |
| Ondo    | 2022-08-05 |     24.5 |          15.8 |           61.2 |        3.6 |          20.5 |
| Yobe    | 2023-10-30 |     29.2 |           2.1 |           80.4 |        1.7 |          23.1 |
| Oyo     | 2023-03-26 |     27.6 |           1.2 |           60   |        3.4 |          17.9 |
| Ebonyi  | 2024-08-09 |     27.9 |           1.8 |           66.8 |        9.7 |          19.5 |
```

## Data Generation Methodology

This dataset was synthetically generated using:

1. **Reference Sources**:
   - FAO (Food and Agriculture Organization) - crop yields, production data
   - NBS (National Bureau of Statistics, Nigeria) - farm characteristics, surveys
   - NiMet (Nigerian Meteorological Agency) - weather patterns
   - FMARD (Federal Ministry of Agriculture and Rural Development) - extension guides
   - IITA (International Institute of Tropical Agriculture) - agronomic research

2. **Domain Constraints**:
   - Crop calendars and phenology (planting/harvest windows)
   - Agro-ecological zone characteristics (Sahel, Sudan Savanna, Guinea Savanna, Rainforest)
   - Nigeria-specific realities (smallholder dominance, market dynamics, conflict zones)
   - Statistical distributions matching national agricultural patterns

3. **Quality Assurance**:
   - Distribution testing (KS test, chi-square)
   - Correlation validation (rainfall-yield, fertilizer-yield, yield-price)
   - Causal consistency (DAG-based generation)
   - Multi-scale coherence (farm → state aggregations)
   - Ethical considerations (representative, unbiased)

See `QUALITY_ASSURANCE.md` in the repository for full methodology.

## Use Cases

- **Machine Learning**: Yield prediction, price forecasting, pest detection, supply chain optimization
- **Policy Analysis**: Agricultural program evaluation, subsidy impact assessment, food security planning
- **Research**: Climate-agriculture interactions, market dynamics, technology adoption patterns
- **Education**: Teaching agricultural economics, data science applications in agriculture

## Limitations

- **Synthetic data**: While grounded in real distributions, individual records are not real observations
- **Simplified dynamics**: Some complex interactions (e.g., multi-generational pest populations) are simplified
- **Temporal scope**: Covers 2022-2025; may not reflect longer-term trends or future climate scenarios
- **Spatial resolution**: State/LGA level; does not capture micro-level heterogeneity within localities

## Citation

If you use this dataset, please cite:

```bibtex
@dataset{nigeria_agriculture_2025,
  title = {Nigeria Agriculture – Farm Weather Stations},
  author = {Electric Sheep Africa},
  year = {2025},
  publisher = {Hugging Face},
  url = {https://huggingface.co/datasets/electricsheepafrica/nigerian_agriculture_farm_weather_stations}
}
```

## Related Datasets

This dataset is part of the **Nigeria Agriculture & Food Systems** collection:
- https://huggingface.co/collections/electricsheepafrica/nigeria-agriculture-and-food-systems

## Contact

For questions, feedback, or collaboration:
- **Organization**: Electric Sheep Africa
- **Collection**: Nigeria Agriculture & Food Systems
- **Repository**: https://github.com/electricsheepafrica/nigerian-datasets

## Changelog

### Version 1.0.0 (October 2025)
- Initial release
- 150,000 synthetic records
- Quality-assured using FAO/NBS/NiMet reference data