1. bookVolume 26 (2022): Edition 1 (January 2022)
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Anthropogenic Factors Affecting the Vegetation Dynamics in the Arid Middle East

Publié en ligne: 25 Sep 2022
Volume & Edition: Volume 26 (2022) - Edition 1 (January 2022)
Pages: 774 - 805
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License
Format
Magazine
eISSN
2255-8837
Première parution
26 Mar 2010
Périodicité
2 fois par an
Langues
Anglais

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