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Predictions of Carbon Stock in Forests of the Southern Moscow Region under Different Scenarios of Forest Use

  • 01-12-2024
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Abstract

The article presents a comprehensive study on predicting carbon stock changes in forests of the Southern Moscow region using simulation modeling. It focuses on the impact of various forest management scenarios on carbon balance and ecosystem services. The study uses the Dankovsky district forestry as a case study, employing dynamic models like FORRUS-S and Romul_Hum to simulate carbon stock dynamics under different management practices. The results show significant variations in carbon reserves and emissions based on forest growth conditions and management strategies, highlighting the importance of tailored management approaches for sustainable forestry.

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Title
Predictions of Carbon Stock in Forests of the Southern Moscow Region under Different Scenarios of Forest Use
Authors
V. N. Shanin
I. V. Priputina
P. V. Frolov
D. N. Tebenkova
S. S. Bykhovets
S. I. Chumachenko
Publication date
01-12-2024
Publisher
Pleiades Publishing
Published in
Contemporary Problems of Ecology / Issue 7/2024
Print ISSN: 1995-4255
Electronic ISSN: 1995-4263
DOI
https://doi.org/10.1134/S1995425524700823
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