stochseq_DEBIPM_Orchestia.m (3.65 kB)View fileThis item contains files with download restrictions
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Orchestia gammarellus on Schiermonnikoog DEB parameters and population measures.xlsx (587.74 kB)View fileThis item contains files with download restrictions
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Smallegange and Berg 2019 Orchestia gammarellus model check.docx (185.31 kB)View fileThis item contains files with download restrictions
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Data and code on the stochastic demography of Orchestia gammarellus and Manta alfredi.
Here, matlab scripts are provided to apply an integral projection model in
which growth and reproduction were described using dynamic energy budget theory
to the litter-feeding, bioturbating terrestrial crustacean Orchestia gammarellus and the reef manta ray Manta alfredi in order to identify which species is the most sensitive to shifts in temporal autocorrelation structure. Empirical data that were used to parameterise the model for O. gammarellus are given as well.
Funding
IMS acknowledges funding from the Netherlands Organisation for Scientific Research (VIDI grant no. 864.13.005).