Temporal dynamics of fine root production, mortality and turnover deviate across branch orders in a larch stand View Full Text


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Article Info

DATE

2022-07-01

AUTHORS

Changfu Huo, Jiacun Gu, Lizhong Yu, Peng Wang, Weixin Cheng

ABSTRACT

Fine roots play a key role in carbon, nutrient, and water biogeochemical cycles in forest ecosystems. However, inter-annual dynamics of fine root production, mortality, and turnover on the basis of long-term measurement have been less studied. Here, field scanning rhizotrons were employed for tracking fine root by branch order over a 6 years period in a larch plantation. For total fine roots, from the first- to the fifth-order roots, annual root length production, length mortality, standing crops, and turnover rate varied up to 3.4, 2.3, 1.5, and 2.3-folds during the study period, respectively. The inter-annual variability of those roots indices in the first-order and the second-order roots were greater than that of the higher order (third- to fifth-order) roots. The turnover rate was markedly larger for the first-order roots than for the higher order roots, showing the greatest variability up to 20 times. Seasonal dynamics of root length production followed a general concentrated pattern with peak typically occurring in June or July, whereas root length mortality followed a general bimodal mortality pattern with the dominant peak in May and the secondary peak in August or October. Furthermore, the seasonal patterns of root length production and mortality were similar across years, especially for the first-order and the second-order roots. These results from long-term observation were beneficial for reducing uncertainty of characterizing fine root demography in consideration of large variation among years. Our findings highlight it is important for better understanding of fine root dynamics and determining root demography through distinguishing observation years and root branch orders. More... »

PAGES

699-709

References to SciGraph publications

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  • 2011-06-14. Lower order roots more palatable to herbivores: a case study with two temperate tree species in PLANT AND SOIL
  • 2000-11-01. Relationships between fine root dynamics and nitrogen availability in Michigan northern hardwood forests in OECOLOGIA
  • 2017-03-30. Fine-root growth in a forested bog is seasonally dynamic, but shallowly distributed in nutrient-poor peat in PLANT AND SOIL
  • 2019-11-23. Variations in fine root dynamics and turnover rates in five forest types in northeastern China in JOURNAL OF FORESTRY RESEARCH
  • 2020-05-07. Root respiration and biomass responses to experimental soil warming vary with root diameter and soil depth in PLANT AND SOIL
  • 2017-08-03. Fine root dynamics after soil disturbance evaluated with a root scanner method in PLANT AND SOIL
  • 1997-07. Relationships among root branch order, carbon, and nitrogen in four temperate species in OECOLOGIA
  • 2001-11. Soil freezing alters fine root dynamics in a northern hardwood forest in BIOGEOCHEMISTRY
  • 2019-12-21. Fine root classification matters: nutrient levels in different functional categories, orders and diameters of roots in boreal Pinus sylvestris across a latitudinal gradient in PLANT AND SOIL
  • 1990-12. Applications and limitations of rhizotrons and minirhizotrons for root studies in PLANT AND SOIL
  • 2017-03-28. Intraspecific variation in morphological traits of root branch orders in Chamaecyparis obtusa in PLANT AND SOIL
  • 1995-07. Review of root dynamics in forest ecosystems grouped by climate, climatic forest type and species in PLANT AND SOIL
  • 2014-12-05. Early season root production in relation to leaf production among six diverse temperate tree species in PLANT AND SOIL
  • 2004-06-04. Fine root branch orders respond differentially to carbon source-sink manipulations in a longleaf pine forest in OECOLOGIA
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    http://scigraph.springernature.com/pub.10.1007/s00442-022-05206-8

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    DIMENSIONS

    https://app.dimensions.ai/details/publication/pub.1149152708

    PUBMED

    https://www.ncbi.nlm.nih.gov/pubmed/35776205


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