Abstract:
Soybean (Glycine max (L.) Merrill] is that recently introduced crop in Ethiopia and also getting importance
over time. However, production is affected by environment interaction and lack of stable genotypes across
locations. Hence, this experiment was conducted with the objectives of estimating the genotype by
environment interaction through stability parameters and to study the interrelationship among stability
parameters. Twenty-four soybean genotypes were planted at six soybeans major growing agroecologies of
Ethiopia (Asosa, Bako, Dimtu, Jimma, Metu and Pawe) with RCBD in three replications in 2015/2016
cropping season. Among the nine traits subjected to the combined analysis all are showed a highly
significant (P ˂ 0.01) environment, genotype and GEI that claims the need of stability analysis. Similarly,
combined AMMI ANOVA for grain yield revealed that there were a very highly significant (P˂ 0.01)
difference among genotypes, environments and genotype by environment interactions and accounted
15.3%, 47.32% and 14.24% of the total variations respectively. The high percentages of the environments
are an indication that the major factor that influences the yield performance of soybean grain in Ethiopia
is the environment. In addition, the first two IPCAs are significant and accounted for 70.34 form a total of
interaction sum squares. Nine stability measures viz.,Additive Main Effects and Multiplicative Interactions
(AMMI), AMMI stability value (ASV), Francis and Kannenberg’s Coefficient of Variability (CVi), The
Environmental Variance (S2
i), Wricke’s Ecovalence Analysis (Wi), Shukla’s Stability Variance (σ2
i), Finlay
and Wilkenson (bi ), Eberhart and Russell's (bi and S2
di), Lin and Binns's cultivar performance measure (Pi)
and Genotype plus GEI (GGE) bi-plot analysis were used to identify the high yielding and stable genotypes
across the testing environments. Genotypes Hang dou No-1 and Spry were the most stable genotypes by
stability measures such as ASV, Shukla's stability variance, Wricke's ecovalence, Finlay and Wilkinson's,
environmental variance, Eberhart and Russell's and, Lin and Binns's cultivar performance measure. The
total correspondence for significance Spearman’s rank correlation was used to see the level of association
among stability measures. Pi showed a positive highly significant rank correlation(r=0.97**) with mean
grain yield and it did not show any correlation with other stability measures except S2
i (r=-0.85**) and bi
(r=0.88**). From AMMI model, genotypes SCS-1, AFGAT and Clarck-63k were selected as best varieties
for Asosa, AFGAT, SCS-1 and Clarck-63k for Bako; SCS-1, ks4895, and Clarck-63k for Dimtu; SCS-1,
ks4895 and AGS-7-1 for Jimma; AFGAT, Clarck-63k and Motte for Metu; SCS-1, AFGAT and Clarck-63k
for Pawe that suit to a specific environment. AMMI1 biplot showed Pawe is ideal environment; Bako is
favorable environment; Asosa average environment; and the rest environments viz., Dimtu, Jimma, and
Metu as unfavorable environments. Whereas AMMI-2 biplot analysis genotypes Prichard, Spry, Delsoy
4710 and Croton 3.9 were identified as stable genotypes. Bako and Metu were identified as the most
discriminating environments this may due the effects of climate change called El Niño. Mega environments
and the best yielding soybean genotypes on each mega environment were revealed by GGE bi-plots analysis
model. The genotypes SCS-1 and AGS-7-1 were stable across soybean growing environments and it
recommended for mega environment production.