Time-structured models of population growth in fluctuating environments
Pradeep Pillai, Tarik C. Gouhier

TL;DR
This paper introduces time-structured models (TSMs) that incorporate historical environmental exposure to improve predictions of population growth under fluctuating conditions, addressing limitations of traditional models.
Contribution
The paper develops a new class of TSMs that account for cohort-specific environmental histories, enhancing accuracy in population growth modeling under variable environments.
Findings
TSMs outperform non time-structured models in accuracy.
Traditional models show significant errors under temperature fluctuations.
TSMs effectively incorporate ecological memory effects.
Abstract
1. Although environmental variability is expected to play a more prominent role under climate change, current demographic models that ignore the differential environmental histories of cohorts across generations are unlikely to accurately predict population dynamics and growth. The use of these approaches, which we collectively refer to as non time-structured models or nTSMs, will instead yield error-prone estimates by giving rise to a form of ecological memory loss due to their inability to account for the historical effects of past environmental exposure on subsequent growth rates. 2. To address this important issue, we introduce a new class of time-structured models or TSMs that accurately depict growth under variable environments by splitting seemingly homogeneous populations into distinct demographic cohorts based on their past exposure to environmental fluctuations. By…
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Taxonomy
TopicsEcosystem dynamics and resilience · Physiological and biochemical adaptations · Animal Ecology and Behavior Studies
