Skip to content

tomversluys/Quantifying-drought-sensitivity-in-coconut-agriculture

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

3 Commits
 
 
 
 
 
 

Repository files navigation

Quantifying-drought-sensitivity-in-coconut-agriculture

Problem Statement:

Coconuts are a crucial global food crop, consumed by around 30% of the world's population. Anecdotal observations suggest that the yield of coconut trees depends on climatic conditions and is particularly sensitive to drought. In light of increasing climate uncertainties, there is an urgent need to identify and promote the cultivation of genetically drought-resistant trees, especially in regions prone to drought.

Data Source:

For this project, I leveraged climate and yield data from the Ivory Coast. The Ivory Coast, with its diverse climatic patterns, offers a rich dataset that can provide valuable insights into the interplay between climatic factors and coconut yields.

Methodology:

  1. Feature Engineering: I used rainfall and temperature data to engineer distinct features aimed at capturing the effects of drought on coconut yields.

  2. Modeling Sensitivity: I then used generalised additive models to analyse the sensitivity of individual coconut trees to drought.

  3. Identification: Post analysis, I identified trees that exhibit drought-sensitive or drought-resistant traits. This classification was then used to recommend cultivation strategies in varying climatic conditions.

Why This Matters:

By understanding which trees are naturally more drought-resistant, agricultural strategies can be refined to ensure consistent yields, even in adverse climatic conditions. This project not only holds the potential to stabilise the coconut supply in drought-prone regions but also supports the livelihoods of countless farmers and communities dependent on this crop.

Releases

No releases published

Packages

No packages published

Languages