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:: Volume 22, Issue 3 (autumn 2020) ::
علوم زراعی 2020, 22(3): 212-224 Back to browse issues page
Evaluation of grain yield stability of irrigated barley (Hordeum vulgare L.) promising lines in warm regions of Iran using GGE biplot analysis
Ali Barati , Iraj Lakzadeh Mr., Mehdi Jabbari, Omid Poodineh, Jabbar Alt Jafarbby, Kamal Shahbazihomonlo, Ahmad Gholipour, Nosratollah Tabatabaei Fard
Seed and Plant Improvement Institute, Agricultural Research, Education and Extension Organization (AREEO), Karaj, Iran
Abstract:   (457 Views)
The main purpose of this research was to identify barley promising lines with high grain yield and yield stability for warm region of Iran. In this experiment, 17 barley promising lines and two check cultivars were evaluated in five agricultural research stations; Ahvaz, Darab, Zabol, Gonbad and Moghan, Iran, in 2015-16 and 2016-17 cropping seasons, using randomized complete block design with three replications. Combined analysis of variance showed significant effect of year, year × location and year × location × genotype on grain yield. To identify genotypes with high grain yield and yield satbilty, Lin and Bin's superiority statistic and GGE biplot analysis method were employed. The lowest values of Lin and Bin's superiority statistic were for lines No. 2, 3 and 9. GGE biplot analysis revealed that the first and second principle components explained 40% and 24% of total variation, respectively. In this experiment, two mega- environments were identified. The first mega-environment included Ahavaz and Darab, and the second mega-environment included Zabol, Gonbad and Moghan. Considering grain yield and yield stability stability estimates, line NO. 2 has been identified with wide adpatation and released for warm regions (north and south) and line NO. 3 with specific adaptaion for the north warm region of Iran.
Keywords: Adoptability, Barley, Principal components, Warm regions and Yield stability.
Full-Text [PDF 868 kb]   (154 Downloads)    
Type of Study: Scientific & Research | Subject: Special
Received: 2019/03/16 | Accepted: 2020/10/24 | Published: 2020/11/30
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Barati A, Lakzadeh I, Jabbari M, Poodineh O, Alt Jafarbby J, Shahbazihomonlo K, et al . Evaluation of grain yield stability of irrigated barley (Hordeum vulgare L.) promising lines in warm regions of Iran using GGE biplot analysis. علوم زراعی. 2020; 22 (3) :212-224
URL: http://agrobreedjournal.ir/article-1-979-en.html

Volume 22, Issue 3 (autumn 2020) Back to browse issues page
نشریه علوم زراعی ایران Iranian Journal of Crop Sciences
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