/growthmodel

Growth modeling applied to several fruit species

Primary LanguageJupyter Notebook

Growth modeling applied to several fruit species

Daniel Jacob (INRAE BFP 2022)


Contents

  • R scripts for growth modeling on 9 fruit species as part of the ANR FRIMOUSS project (see below). 2 models based on sigmoids (single and double) were chosen. Optimization of model parameters uses the R package minpack.lm which implements the Levenberg-Marquart nonlinear least-squares algorithm.

    • odam.R : retrieves data directly in the FRIMOUSS data collection from an ODAM server using the API (see R package Rodam)
    • fitmodels.R : general routines for model fitting
    • growth.R : routines to interface growth modeling with FRIMOUSS collection data
  • 2 Jupyter notebooks implementing growth modeling

    • Growth_model_nb1.ipynb : comparison of the growth modeling based on both models for one species
    • Growth_model_nb2.ipynb : comparison of the growth modeling based on the second model for all species

Frimouss project: FRuit Integrative MOdelling for a Unified Selection System

  • ANR Project ID: ANR-15-CE20-0009

  • Publication : Léa Roch, Sylvain Prigent, Holger Klose, Coffi-Belmys Cakpo, Bertrand Beauvoit, et al.. Biomass composition explains fruit relative growth rate and discriminates climacteric from non-climacteric species. Journal of Experimental Botany, Oxford University Press (OUP), 2020, 71 (19), pp.5823-5836. doi:10.1093/jxb/eraa302

Frimouss dataset interfaced by ODAM