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Dynamics of Weeds in the Soil Seed Bank: A Hidden Markov Model to Estimate Life History Traits from Standing Plant Time Series

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  • Benjamin Borgy
  • Xavier Reboud
  • Nathalie Peyrard
  • Régis Sabbadin
  • Sabrina Gaba

Abstract

Predicting the population dynamics of annual plants is a challenge due to their hidden seed banks in the field. However, such predictions are highly valuable for determining management strategies, specifically in agricultural landscapes. In agroecosystems, most weed seeds survive during unfavourable seasons and persist for several years in the seed bank. This causes difficulties in making accurate predictions of weed population dynamics and life history traits (LHT). Consequently, it is very difficult to identify management strategies that limit both weed populations and species diversity. In this article, we present a method of assessing weed population dynamics from both standing plant time series data and an unknown seed bank. We use a Hidden Markov Model (HMM) to obtain estimates of over 3,080 botanical records for three major LHT: seed survival in the soil, plant establishment (including post-emergence mortality), and seed production of 18 common weed species. Maximum likelihood and Bayesian approaches were complementarily used to estimate LHT values. The results showed that the LHT provided by the HMM enabled fairly accurate estimates of weed populations in different crops. There was a positive correlation between estimated germination rates and an index of the specialisation to the crop type (IndVal). The relationships between estimated LHTs and that between the estimated LHTs and the ecological characteristics of weeds provided insights into weed strategies. For example, a common strategy to cope with agricultural practices in several weeds was to produce less seeds and increase germination rates. This knowledge, especially of LHT for each type of crop, should provide valuable information for developing sustainable weed management strategies.

Suggested Citation

  • Benjamin Borgy & Xavier Reboud & Nathalie Peyrard & Régis Sabbadin & Sabrina Gaba, 2015. "Dynamics of Weeds in the Soil Seed Bank: A Hidden Markov Model to Estimate Life History Traits from Standing Plant Time Series," PLOS ONE, Public Library of Science, vol. 10(10), pages 1-15, October.
  • Handle: RePEc:plo:pone00:0139278
    DOI: 10.1371/journal.pone.0139278
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    Cited by:

    1. Movedi, Ermes & Valiante, Daniele & Colosio, Alessandro & Corengia, Luca & Cossa, Stefano & Confalonieri, Roberto, 2022. "A new approach for modeling crop-weed interaction targeting management support in operational contexts: A case study on the rice weeds barnyardgrass and red rice," Ecological Modelling, Elsevier, vol. 463(C).
    2. Orlando, Francesca & Alali, Sumer & Vaglia, Valentina & Pagliarino, Elena & Bacenetti, Jacopo & Bocchi, Stefano & Bocchi, Stefano, 2020. "Participatory approach for developing knowledge on organic rice farming: Management strategies and productive performance," Agricultural Systems, Elsevier, vol. 178(C).
    3. Louvet, Apolline, 2022. "Extinction threshold and large population limit of a plant metapopulation model with recurrent extinction events and a seed bank component," Theoretical Population Biology, Elsevier, vol. 145(C), pages 22-37.

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