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2016年論文 2016 թուականի Մայիսին հրատարակուած գիտական յօդուած наукова стаття, опублікована в травні 2016 2016年论文 2016 nî lūn-bûn artigo científico (publicado na 2016) articol științific wetenschappelijk artikel научни чланак artikull shkencor სამეცნიერო სტატია مقالهٔ علمی article scientifique (publié 2016) 2016年論文 articolo scientifico teaduslik artikkel naučni članak ২০১৬-এ প্রকাশিত বৈজ্ঞানিক নিবন্ধ vitenskapelig artikkel 2016年论文 научна статия article científic سائنسی مضمون artículo científico publicado en 2016 tieteellinen artikkeli artigo científico bilimsel makale 2016年論文 мақолаи илмӣ vitskapeleg artikkel artykuł naukowy 2016年论文 2016년 논문 مقالة علمية (نشرت في 12-5-2016) vědecký článek artículu científicu espublizáu en 2016 2016年論文 mokslinis straipsnis научни чланак scienca artikolo 2016年论文 vetenskaplig artikel บทความทางวิทยาศาสตร์ artikulong pang-agham 2016 թվականի մայիսին հրատարակված գիտական հոդված bài báo khoa học 2016年の論文 2016年论文 artigo científico (publicado na 2016) 2016年論文 tudományos cikk мақолаи илмӣ vedecký článok wissenschaftlicher Artikel scientific article article scientific επιστημονικό άρθρο מאמר מדעי 2016年论文 научная статья videnskabelig artikel (udgivet 2016)
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