fdkl glmno pmj gnqr j po fggmhfg iseo c dj9 tfg dpmhn imn pmj gnqj dqgsgf ks sulg 5unmj gr j gmtgfj smntfd c sc d smd umhkl dfgsgo po fggmhfg np ipfgmk fsvfg dfl g pfmo9 sulg mgo ip 8w27 n 9 skm ipk xqgfyd kimj i idv sfimgn mggmhn iig npsgtf ffmpj9 f xqgfyd kpmk nzk fifgj dqgsgf gnp n ffg fgugu ipmk i cumhggd npsgtfn cutj9 sulg skm c me ijgh gfg ffgmk npsgtf iqm9 f imutkl iqmo ip mffqzj m dfr fkl p dqg9 kpmk {fgh pkl fggmhkl fsvfg gr k fgm sygd gj9 |l nzk zqk f idvh} ir nddn ig ~ 2w9 fgm g fipmj dqgsr gf sulg 5unmj9 c k ifgfgk c dfg fipmj pdu}vl p dqg pk zfgc k qmmq c d mhg pfg nstgko pk l mtfgk lgfg9 pk zfgc k iutk nmksr mukd gmejd lgk pmj c ipn fr gtn isehj sulgk9 mmq utj nfipfgug nmuspo c klp c sulgk pmh sl iseo nor iftkl gmer jl f sgo u{o9 4mj }eo tfg sulgk mfgr iftkl gmejl c nfgk c fm dfl g9 ugo tfg sulgk gdtk c mk pk pfmo9 ulg 5unmj lgcugfj c tgmhkd imvpjd np pj fggmhfgh gfugfgug9 5 C
The article covers the possibility of applying digital technologies for mapping seafloor vegetation for coastal sea zone. Submitted method allows promptly and accurately receive information about distribution of algae species. Laspi bay is distinguished by biological diversity, an abundance of unique habitats of seafloor vegetation, where sea grass and algae communities are represented. Based on these qualities it was chosen as a model region for mapping macrophytes distribution. Aerial photography using an unmanned aerial vehicle (UAV) and hydro-botanical studies were conducted in the summer of 2019 year. The distribution map of macrophyte made based on aerial photos, while composition and structure were determined though hydro-botanical surveys. Five transects were laid in the bay, hydrobotanical profiles were compiled. Five seafloor plant communities identified for mapping. Digitized boundaries were set using software package QGIS version 2.18.12. Based on boundaries distribution map was made. The spatial patterns of the distributionof dominant macrophyte species (Cystoseira, Phyllophora and Zostera noltei) mapped along with quantitative characteristics.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.
hi@scite.ai
10624 S. Eastern Ave., Ste. A-614
Henderson, NV 89052, USA
Copyright © 2024 scite LLC. All rights reserved.
Made with 💙 for researchers
Part of the Research Solutions Family.