AMMI and GGE Biplot Analyses for Mega-Environment Identification and Selection of Some High-Yielding Oat (Avena sativa L.) Genotypes for Multiple Environments

Author:

Wodebo Kibreab Yosefe12ORCID,Tolemariam Taye1ORCID,Demeke Solomon1,Garedew Weyessa1ORCID,Tesfaye Tessema3ORCID,Zeleke Muluken4ORCID,Gemiyu Deribe5,Bedeke Worku5,Wamatu Jane4,Sharma Mamta6

Affiliation:

1. College of Agriculture and Veterinary Medicine, Jimma University, Jimma P.O. Box 307, Ethiopia

2. Bonga Agricultural Research Center, Bonga P.O. Box 101, Ethiopia

3. Arba Minch Agricultural Research Center, Arba Minch P.O. Box 2228, Ethiopia

4. International Centre for Agricultural Research in Dry Areas, Addis Ababa P.O. Box 5689, Ethiopia

5. South Agricultural Research Institute (SARI), Hawassa P.O. Box 06, Ethiopia

6. International Crops Research Institute for the Semi-Arid Tropics, Hyderabad P.O. Box 502324, India

Abstract

This paper reports an evaluation of eleven oat genotypes in four environments for two consecutive years to identify high-biomass-yielding, stable, and broadly adapted genotypes in selected parts of Ethiopia. Genotypes were planted and evaluated with a randomized complete block design, which was repeated three times. The additive main effect and multiplicative interaction analysis of variances revealed that the environment, genotype, and genotype–environment interaction had a significant (p ≤ 0.001) influence on the biomass yield in the dry matter base (t ha−1). The interaction of the first and second principal component analysis accounted for 73.43% and 14.97% of the genotype according to the environment interaction sum of squares, respectively. G6 and G5 were the most stable and widely adapted genotypes and were selected as superior genotypes. The genotype-by-environment interaction showed a 49.46% contribution to the total treatment of sum-of-squares variation, while genotype and environment effects explained 34.94% and 15.60%, respectively. The highest mean yield was obtained from G6 (12.52 kg/ha), and the lowest mean yield was obtained from G7 (8.65 kg/ha). According to the additive main effect and multiplicative interaction biplot, G6 and G5 were high-yielding genotypes, whereas G7 was a low-yielding genotype. Furthermore, according to the genotype and genotype–environment interaction biplot, G6 was the winning genotype in all environments. However, G7 was a low-yielding genotype in all environments. Finally, G6 was an ideal genotype with a higher mean yield and relatively good stability. However, G7 was a poor-yielding and unstable genotype. The genotype, environment, and genotype x environment interaction had extremely important effects on the biomass yield of oats. The findings of the graphic stability methods (additive main effect and multiplicative interaction and the genotype and genotype–environment interaction) for identifying high-yielding and stable oat genotypes were very similar.

Funder

South Agricultural Research Institute

Bonga Agricultural Research Center

International Centre for Agricultural Research in Dry Areas

Publisher

MDPI AG

Subject

Plant Science,Ecology,Ecology, Evolution, Behavior and Systematics

Reference64 articles.

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3. Seré, C., Ayantunde, A., Duncan, A., Freeman, A., Herrero, M., Tarawali, S.A., and Wright, I. (July, January 29). Livestock production and poverty alleviation—Challenges and opportunities in arid and semi-arid tropical rangeland based systems. Proceedings of the Multifunctional Grasslands in a Changing World, Volume 1: XXI International Grassland Congress and VIII International Rangeland Congress, Hohhot, China.

4. (2023, June 20). FAO. Available online: http://faostat.fao.org.

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