Madras Agric. J., 98 (10-12): 321-326, December 2011

Stability Analysis of Seed Cotton Yield and its Components of Gossypium barbadense Genotypes D. Kavithamani*, P. Amala Balu and S. Rajarathinam Department of Cotton, Centre for Plant Breeding and Genetics Tamil Nadu Agricultural University, Coimbatore - 641 003

In India, among four cultivated cotton species, G. barbadense is important species for fibre quality which is the only source for production of extra long staple (ELS) cotton. The mill requirement for extra long staple cotton is 20 lakh bales but the production is only five lakh bales. Hence to increase extra long staple cotton production, area under inter specific hybrids (G. hirsutum x G. barbadense) should be increased. This study was carried out to identify stable G. barbadense accession so as to develop high yielding H x B hybrids. Forty one G. barbadense accessions were tested under three seasons at Coimbatore, Tamil Nadu. The Eberhart and Russell model (1966) of stability analysis was carried out to study the genotype x environment interaction for seed cotton yield and its component traits. The variance due to genotypes, environments, genotypes x environments and environments (linear) were significant for all the characters. The present investigation revealed that the barbadense genotypes viz., Barbados, 6002-1 and Giza 70 and 17/3A had regression coefficient around unity and least deviation from regression and thus appeared to exhibit good stability with more responsiveness over environments for the characters viz., seed cotton yield, lint yield, ginning outturn (%), boll weight and number of bolls per plant. Hence, these genotypes were highly adaptable and suitable for cultivation over a wide range of agro climatic conditions for the characters under study. Hence, these genotypes can be utilized as parental lines in the development of H x B hybrids. Key words: G. barbadense accessions, genotype x environments, seed cotton yield, stability analysis

In India among the four cultivated cotton species, G. barbadense is one of the important species for fibre quality which is the only source for production of extra long staple (ELS) cotton. In India the mill requirement for extra long staple cotton is 20 lakh bales but the production is only five lakh bales. Hence to increase ELS productions, area under inter specific hybrids (G. hirsutum x G. barbadense) should be increased. But cotton is a long duration crop which is greatly influenced by seasonal and environmental fluctuations over different locations. The performance of any crop variety is the result effect of its genotype and environment in which it grows. It is observed that the relative performance of different genotypes varies in different environments; there exists a genotype x environment interaction. This interaction is a result of changes in cultivar’s relative performance across environments, due to differential responses of the genotypes to various soil, climate and biotic factor (Dixon and Nukenine, 1997). Therefore, the analysis of genotype x environment interaction becomes an important tool employed by breeders for evaluating varietal adaptation. Hence stability analysis was carried out to identify stable G. barbadense *Corresponding author email: [email protected]

accessions so as to develop high yielding H x B hybrids. Material and Methods An experiment was conducted with forty G. barbadense accessions along with one check (Suvin). The complete set of 41 G. barbadense accessions were tested under three seasons in Department of cotton, Tamil Nadu Agricultural University, Coimbatore viz., winter 2009-10, summer 2010-11 and winter 2010-11. The material was sown in randomized block design using two replications with a spacing of 90 x 45 cm. Each entry had four rows of 6.0 m length. The whole experiment was conducted under irrigated condition. The biometrical observations were recorded on five randomly selected plants for seed cotton yield (kg/ha), lint yield (kg/ha), ginning outturn (%), boll weight (g), number of bolls per plant and seed index. The averaged data were analyzed for stability according to method suggested by Eberhart and Russell (1966). The significance of regression coefficient (bi) from unity and deviation from regression (S 2 di) for each genotype was tested using t-test and F-test respectively.

322 Results and Discussion The mean performance i.e. average data over all the three locations for seed cotton yield (kg/ha), lint yield (kg/ha), ginning outturn (%), boll weight (g), number of bolls per plant and seed index are presented in Tables 2 and 3.

From the pooled analysis of variance, it was evident that mean squares for genotypes, environments and G x E were significant for all the characters under study, indicating existence of considerable variability among these components (Table 1). The presences of significant G x E interaction showed the inconsistency of

Table 1. Pooled ANOVA for stability of seed cotton yield and its component characters in Gossypium barbadense genotypes Mean Sum of Squares d. f. ANOVA Source

Genotypes Environments Genotypes x Environments Environments (Linear) Genotypes x Environments (Linear) Pooled deviation Pooled error

Seed cotton yield (kg/ha)

Lint yield (kg/ha)

Ginning out turn(%)

Boll weight (g)

No. of bolls / plant

Seed index (g)

27.40**

40

5.20*

2.75*

3.44**

3.98**

1.64*

2

65.90**

421.23**

31.60**

69.80**

69.08**

2.38*

80

36.40*

43.40**

29.65*

2.10*

37.40*

3.11**

1

142.50**

126.70**

81.40**

201.45**

323.20**

7.90**

40

0.41

0.93

0.37

3.30**

2.71**

6.70**

41

3.10**

1.50**

1.26*

2.98*

1.37*

0.53

240

0.29

0.29

0.45

0.81

0.61

0.27

*,** Significant at P=0.05 and P=0.01 level, respectively.

performance of cotton genotypes across the environments. The significant mean squares due to environment (linear) for seed cotton yield revealed differential response of the genotypes and environments. Significant variance due to environments (linear) for all the traits studied indicated considerable differences among the environments and their pre-dominant effects on the traits. This could be due to the variations in weather and soil conditions over environments. Significant pooled deviation for all the traits suggested that the deviation from linear regression also contributed substantially towards the differences in stability of genotypes there by indicating difficulty in predicting the performance of genotypes over environments for these traits. Mean squares for pooled deviation were significant for all the characters studied except seed index which indicated that variation in performance over environments was only party predictable in nature. These results are in agreement with those reported by Kalsy and Singh (1974), Shroff et al. (1983), Bhatade et al. (1994), Patel et al. (1994), Gopinath et al. (1996). Patel et al. (2000) ; Patil and Patel (2010) in cotton. The results of estimates of stability parameters (mean, bi and S 2 di) of 41 genotypes with respect to various morphological yield traits are described below. Seed cotton yield

In the present study, 24 G. barbadense accessions had high seed cotton yield, regression coefficient near to unity and least deviation from regression and thus appeared to exhibit average stability with more responsiveness to wide range of environments. This is due to their regression around unity and least deviations from regression

accompanied by high mean performance over the three locations studied ( Eberhast and Russel, 1966). The rest of the hybrids either possessed mean seed cotton yield lower than the population mean with significant deviation from regression and that was found unstable. Fourteen genotypes viz., TCB 209, SB 1085-6, TNB-1, Giza 7, ED(A), EC 9257, Barbados, Orissa SI, Giza 1467, SIA 9, 19/61, 76/3, SBYF, SIY 135, 16/2R and Monostem had bi>1. Eleven genotypes viz., Egyptian-1, Sudan G-45, EC 131979, PSH, EC 101786, SBS (YF), 6002-1, Giza 70, Sudan G 53, B-13/2 and Suvin had bi values around unity (1), where as remaining sixteen genotypes showed bi values below 1. (bi<1) indicating their suitability to favourable/better environments, all kinds of environments and unfavorable/poor environments respectively/ Above average seed cotton yield was recorded in 21 genotypes, where as four genotypes were average in seed cotton yield. However, below average seed cotton yield was recorded in 16 genotypes. Out of 25 stable genotypes, 14 genotypes had above average seed cotton yield. Among them, Egyptian-1, Sudan G-45, EC 101786, SBS (YF), 6002-1 and Giza 70 showed their adaptability to a wide range of environments. Genotypes EC 111254, 85/2, 17/3A and Sudan G55 had high response (bi>1) indicating its adaptability to exploit in better environment. However, SB 1085-6, EC 9257, Barbados, Orissa SI, 76/3 and 16/2R genotypes having above average seed cotton yield can adapt well to poor environment as their response was below average (bi<1). Similar results were reported by Reddy and Satyanarayana (2003); Patil and Patel (2010).

323 Table 2. Estimates of stability parameters for individual genotypes with respect to seed cotton yield, lint yield and ginning outturn Genotype

Seed cotton yield (kg/ha) 2

Lint yield(kg/ha)

Ginning outturn (%) 2

bi

S2di

34.4*

1.15*

1.01

34.0

1.84**

1.01

33.5

0.89

3.27*

Mean

bi

S di

Mean

bi

S di

Mean

TCB 209

1375*

0.43*

102619.8*

473*

0.61

49654.8*

SB 1085-6

1330*

0.90*

58977.7

452*

1.04

6012.7

857

0.78

54467.1

287

0.61**

1502.1

TNB-1 TCB472/4

884

1.36

57933.8*

300

1.44

4968.8*

34.0

1.19

0.27

TCB 472/5

1059

1.35

60882.1*

366

0.86

7917.1*

34.6*

0.35

2.04

Egyptian-1

1338*

1.12

53975.4

458*

1.02

1010.4

34.3*

1.42*

1.31

Giza7

1080

0.72

289775.2**

375

1.23

36810.2*

34.7*

0.92**

11.01*

Barx LT

1075

1.23

57334.5*

371

0.92

4369.5

34.5*

0.92

1.17*

ED(A)

1016

0.84*

83740.2

362

1.01

30775.2*

35.6*

1.03

2.17

TCB 377

1341*

1.80

60820.0*

462*

1.60*

7855.0*

34.5*

0.89*

3.52*

EC 9257

1248*

0.72

72912.3

440*

1.70

19947.3*

35.3*

1.19

2.10

Sudan G-45

1248*

1.17

154288.0*

425*

0.78**

1323.0

34.1

0.23*

3.16*

EC 97631

1182

1.30

122298.1*

417*

1.33

69333.1**

35.3*

0.61

11.07*

Barbados

1659*

0.83

55797.4

564*

1.01

2832.4

34.0

1.00

1.01

EC 111254

1350*

1.69

54993.9

442*

0.99

2028.9

32.8

1.18

5.74*

EC 131979

1264*

1.12

187838.4**

423*

0.78**

34873.4

33.5

0.57

2.06

PSH

1261*

1.12

57547.0*

430*

1.12*

4582.0*

34.1

0.34**

1.09

Orissa SI

1404*

0.76

190851.8*

493*

1.02

37886.8*

35.1*

1.12

1.28

85/2

1249*

1.51*

110323.2*

410

0.93*

14358.2*

32.9

0.54*

2.13

Giza

1321*

1.20

195177.3**

443*

1.45

42212.3**

33.6

1.73

0.64 1.06

863

0.80

54644.9

299

0.70

1679.9

34.7*

1.34

SIA 9

Giza 1467

1190

0.89

55355.5

420*

0.98

2390.5

34.5*

1.31

1.07

19/61

885

0.82

55090.1

296

0.70

2125.1

33.5

1.42

13.44**

EC101786

1233*

1.14

123562.7*

412

1.09*

70597.7

33.4

0.99*

1.92

17/3A

1375*

1.36**

54985.4

467*

1.03

2020.4

34.0

1.04

1.14

SBS(YF)

1214*

0.98

60609.4

373

1.14*

7644.4*

30.7

1.02

0.35

Tadia

1117

1.26

266741.1**

375

1.19**

13776.1*

33.6

1.95**

3.11*

76/3

1237*

0.69

54065.0

418*

0.91

1100.0*

33.8

0.88

5.38*

6002-1

1623*

1.10

55664.4

580*

1.12

2699.4

35.7*

1.05

1.17

SBYF

1191

0.61

57668.0

395

1.31

4703.0

33.1

1.01

11.20**

Giza 70

1297*

1.02

97307.3

468*

1.00

44342.3

36.1*

1.01

1.69

SIY 135

987

0.59

54404.7

350

0.68

1439.7

35.5*

1.09

1.02

1292*

1.22*

495314.5*

442*

1.08

42349.5**

34.2

0.96

1.09 2.97*

Sudan G 55 Sudan G 53

1152

1.14

385897.9*

399

1.48*

32932.9

34.7

1.38*

16/2R

1210*

0.87

54054.6

440*

1.04

1089.6

36.4*

1.07

1.07

B-13/2

1201

0.99

197938.7*

418*

0.72

44973.7**

34.8*

1.02

0.39

B-125

1084

2.00

167518.1*

372

0.78**

14553.1

34.4*

1.04

2.39

BCS 5919

951

1.26

59995.7*

317

0.80*

7030.7*

33.4

1.27

1.20

EC111248

958

1.23

271072.0**

328

0.69

18107.0*

34.3*

1.80*

12.66**

Monostem

864

0.81*

54715.3*

284

0.59*

1750.3

32.9

1.04**

1.57

Suvin

848

1.03

59545.4

273

1.14

6580.4*

32.2

1.12

1.75

Mean

1176

402

34.13

30.72

11.01

0.17

S.E. (±)

* ,** Significant at P=0.05 and P=0.01 level, respectively. Lint yield

For lint yield, 22 genotypes recorded greater lint yield than population mean (402 kg/ha). There were 20 genotypes recorded significant S2di and such

performances of these genotypes was not predictable across the environments. A total of 21 genotypes indicated absence of G x E interaction when the non-significance of bi and S 2 di was considered together. In general, 16 genotypes had

324 bi approaching to “1”. The nine genotypes with bi<1 and 16 genotypes with bi>1 indicated their suitability for general, unfavourable and favourable environments, respectively. Twenty one genotypes had above average mean for this parameter. Amongst 21 stable genotypes Sudan G-45 and EC 131979 had high mean and below average response and none of them for above average mean with response, genotypes SB 1085-6, Egyptian-1, Barbados, EC 111254, SIA 9, 17/3A, 6002-1, Giza 70 and 16/2R were found ideal for lint index indicating their suitability to poor/unfavourable, better/ favourable and all kinds of environments respectively. Siwach et al. (2007) ; Patil and Patel (2010) also reported similar findings for stability parameters while identifying the potential stable genotypes over the environments. Ginning outturn

Twenty eight genotypes had above average response four genotypes had below average response and nine genotypes were average in response, showing their suitability for favourable, unfavourable and all kinds of environments, respectively. Sixteen genotypes had above average ginning outturn, where as 13 genotypes had below average ginning outturn. However, 12 genotypes were average for this character. According to Eberhart and Russell (1966) an ideal genotype is one which has high mean yield, a regression coefficient value of 1.0 and a deviation mean square of zero. Accordingly the genotypes viz., ED (A), 6002-1, Giza 70, SIY 135, 16/2R, B-13/2 and B-125 were classified as highly stable over all types of environments because of its high mean ginning out turn with regression coefficient close to unit and presence of non-significant deviation from linearity. Where as TCB 209, Egyptian-1, EC 9257, Orissa SI, Giza 1467 and SIA 9 showing high mean ginning outturn and above average responsiveness of the genotype indicating their suitability to favourable environments. Though the genotype TCB 472/ 5 was showing high mean ginning outturn (34.6 %) and below in response (bi = 0.35) i.e. less than unity. Hence it is suited for poor environments. Boll weight

Twenty genotypes had bi value >1, nine genotypes were having bi<1 and other 12 genotypes had bi approaching to “1” indicating their suitability to favourable, unfavourable and general environments, respectively. Out of 25 stable genotypes, above average boll weight was exhibited in 20 genotypes in which Egyptian-1, Barbados, EC 111254, SIA 9, SBYF, Giza 70 and SIY 135 indicated their adaptability to all types of environments, where as TCB 209, Giza 1467 and B-13/2 were found suitable to unfavourable/poor environments and SB 1085-6, TCB 472/5, Orissa SI, 85/2, 6002-1, BCS 5919 and EC 111248 suitable to better/superior environments. The findings are in agreement with

those of Bhatade et al. (1995), Modi et al. (1999) and Patil and Patel (2010). Number of bolls / plant

Twelve genotypes had significant S2di values indicating the presence of non-linear component of G x E interaction and hence prediction of the performance across the environment would be difficult. Out of 41 genotypes, 14 genotypes had bi>1, indicating their suitability to favourable environment, another 16 genotypes were having bi<1 which showed their adaptability to poor environments. Remaining 11 genotypes were suitable for all kinds of environments as these were having bi =1. Considering the mean performance of individual genotype indicated that 15 genotypes had above average, where as 19 genotypes were below average and another 7 genotypes had average number of bolls/plant. Out of stable genotypes, high mean performance was exhibited by only ten genotypes. Among them, Barx LT, EC 9257 and Monostem had above average response; TCB 472/ 4, TCB 472/5 and Sudan G 53 had below average response and Barbados, EC 101786, Giza 70 and Suvin had average response showing their suitability to favourable, unfavourable and general environments respectively. Bhatade et al. (1994), Gopinath et al. (1996) and Patel et al. (2000) reported similar results for number of bolls / plant in cotton. Seed index

Twenty nine genotypes had bi>1, seven genotypes had bi<1, where as five genotypes were having bi values approaching to “1” indicating their adaptability/suitability to favourable, unfavourable and all types of environments, respectively/ Nineteen genotypes had above average seed index, 20 genotypes below average seed indeed and only two genotypes were average in seed index. Out of 32 stable genotypes above average seed index was exhibited by 15 genotypes. Among them, BCS 5919 had average response, TCB 209, SB 1085-6, TNB1, Barx LT, Barbados, Giza 1467, 19/61, SBS (YF), Giza 70, B-13/2 and Monostem had above average response and TCB 472/5, EC 97631 and EC 131979 were having below average response indicating their adaptability to general, better and poor environments respectively. It was concluded that yield and its related traits may be taken into account while selecting/evaluating genotypes for stability performance across the environments. To measure stability of genotypes across the environments, deviations from regression (S2di) appeared to be more important criteria than regression coefficient (bi). Mahajan and Khera, 1992 have also emphasized that the linear regression (bi) may simply be regarded as a measure of response of particular genotype and deviations from regression (S2di) should be given more weightage as a measure of stability. The result also indicated that, in some environments, distribution of rainfall

325 Table 3. Estimates of stability parameters for individual genotypes with respect to boll weight (g), number of bolls/plant and seed index Boll weight (g/boll)

Genotype

No. of bolls /plant 2

S di

Mean

bi

Seed Index 2

S di

Mean

bi

S2di

Mean

bi

TCB 209

4.0*

0.91

0.016

20

1.78

1.92

11.60*

1.86*

0.17

SB 1085-6

3.7*

1.64

0.206

29*

0.36

17.94*

10.33*

5.31**

0.00

TNB-1

2.9

0.87*

0.116

28*

1.02

13.12*

12.00*

1.58

0.07

TCB472/4

3.0

1.03

0.399*

27*

0.46*

6.84

9.95

1.87

0.54*

TCB 472/5

3.8*

1.18**

0.063

27*

0.66

0.34

10.57*

0.57

0.00

Egyptian-1

3.7*

1.04

0.064

26

1.00

17.94*

11.30*

1.06

0.29* 0.17

Giza7

3.0

1.10

0.713*

33*

2.14

31.73**

10.10

0.87

Barx LT

3.5

0.37

0.256

27*

1.51**

19.86

11.23*

2.58*

0.09

ED(A)

2.7

1.30*

0.067

21

2.34*

5.73

8.97

3.73**

0.09

TCB 377

2.8

1.23

0.399*

26

0.30

23.51*

9.82

0.72

0.24*

EC 9257

2.9

1.04

0.266*

32*

1.78

1.92

8.80

1.00

0.29* 0.36*

Sudan G-45

3.1

0.37*

0.456*

23

2.44

0.58

10.15

1.59*

EC 97631

3.4*

2.92

0.457*

25

0.66

1.35

10.75*

0.72

0.24

Barbados

4.0*

1.01

0.065

33*

0.99

0.34

10.87*

1.45

0.04

EC 111254

3.9*

1.06

0.029

24

1.01

0.02

9.78

1.89

0.01

EC 131979

3.1

1.56**

0.401*

25

1.03

0.58

10.60*

0.29

0.02

PSH

3.2

0.91

0.606*

26

1.78

1.92

9.10

0.87

0.17 0.02

Orissa SI

3.8*

1.56

0.236

29*

0.36*

17.94*

9.50

4.02*

85/2

3.6*

2.01*

0.178

26*

1.78

1.92

8.63

2.73

0.11

Giza

3.3

1.41

0.578*

21

0.66

0.34

9.82

0.72

0.24*

Giza 1467

3.4*

0.82

0.028

19

1.42

8.05

11.08*

3.03

0.13

SIA 9

3.9*

1.09

0.180

19

1.08

14.77*

9.73

2.87

0.03

19/61

3.2

0.96

0.579*

23

0.76

4.94

10.75*

1.58

0.08

3.5*

1.00**

0.702*

27*

1.02

2.06

10.45*

1.03

0.21*

17/3A

3.2

0.78

0.028

14

1.22**

0.12

9.87

3.45**

0.03

SBS(YF)

2.9

1.20

0.108

15

0.86

14.77

10.25*

2.87

0.03

Tadia

3.2

1.28*

0.349*

22

0.92

27.46*

9.00

1.58

0.09

76/3

3.3

1.56

0.400*

22

0.44

0.58

8.47

2.02

0.13

6002-1

3.6*

1.10

0.113

26

0.75

2.58

9.20

3.31

0.06

SBYF

3.9*

1.06

0.206

22

0.76

4.94

9.97

1.07

0.18

Giza 70

3.4*

1.03

0.011

33*

1.03

8.05

10.20*

2.87

0.17

SIY 135

3.4*

1.00

0.206

26

1.01

0.12

10.30*

1.44

0.46*

3.2

2.01*

0.178

20

0.36

17.94

10.30*

2.54*

0.78*

EC101786

Sudan G 55 Sudan G 53

3.1

1.82

0.828*

33*

0.79

4.94

9.23

1.44

0.15

16/2R

3.9*

1.28

0.349*

27*

1.02

13.12*

8.90

3.16

0.07

B-13/2

3.4*

0.55**

0.178

20

1.23*

13.12*

10.50*

4.02**

0.02

B-125

3.0

1.28

0.350*

26

0.37

17.94*

8.37

1.87

0.02

BCS 5919

3.7*

1.11*

0.179

22

1.17

55.82**

10.25*

1.01

0.11

EC111248

3.9*

1.29

0.030

19

1.78*

1.92

8.03

1.47

0.01

Monostem

3.1

1.30

0.067

34*

1.78

1.92

11.78*

3.02*

0.01

Suvin

3.1

0.98

0.260

27*

0.97

6.84

9.90

1.56

0.02

Mean

3.38

25

10.01

S.E. (±)

0.06

0.75

0.15

* ,** Significant at P=0.05 and P=0.01 level, respectively.

during the growing period is the determining factor for the performance of cotton genotypes. Accordingly, the mean and deviation from regression of each genotype were considered for stability and linear regression was used for testing the varietal

response. Genotypes with high mean, bi = 1 with non significant s 2 di are suitable for general adaptation, i.e., suitable over all environmental conditions and they are considered as stable genotypes and genotypes with high mean, bi > 1

326 with non significant s2di are considered as below average in stability. Such genotypes tend to respond favourably to better environments but gives poor yield in unfavourable environments. Hence they are suitable for favourable environments. Whereas genotypes with high mean, bi < 1 with non significant s 2 di do not respond favourably to improved environmental conditions and hence, it could be regarded as specifically adapted to poor environments. Taking into account of all the parameters of stability it can be inferred that overall the experiment has resulted in identification of three stable cotton genotypes viz., Barbados, 6002-1 and Giza 70. These genotypes are adapted to all kinds of environments. Along with this Giza 1467 was identified as suitable genotype to poor environments and 17/3A for favourable/better environments. These genotypes were also found stable for most of the seed cotton yield contributing traits, thus indicating that the stability of various component traits must be responsible for the observed stability of various genotypes for seed cotton yield (Table 2 and 3). According to Grafius (1956), a universal variety/hybrid must either resist change or adjust favorably to a new environment. These genotypes were highly adaptable and suitable for cultivation over a wide range of environmental conditions. Thus the genotypes can directly introduced as cultivars and also used as parents for improving stability of the cotton genotypes. Acknowledgement The financial help received from the Technology Mission in Cotton (TMC MM 1.2) Project is duly acknowledged. References Bhatade, S.S., Rajewar, S.R., Reddy, V.G. and Nadre, N.R. 1994. Phenotypic stability in cotton genotypes of different species composition J. Cotton Res. Dev. 8: 7-9.

Eberhart, S.A. and Russell, W.A. 1966. Stability parameters for comparing varieties. Crop Sci. 6: 36-40. Gopinath, M., Sambamurthy, J.S.V. and Raghundha Rao, 1996. Stability of yield in other quantitative traits in cotton. J. Indian Soc. Cotton Improv. 21: 37-40. Grafius, J.E. 1956. Components of yield in oats. A geometric interpretation. Agron.J. 48: 419-23. Harshal, E., Patil and Patel, K.G. 2010. Stability analysis of Seed Cotton Yield and its Components of released Bt Cotton hybrids of Gujarat State J. Cotton. Res. Dev. 24: 17-22. Kalsy, H.S. and Singh, T.H. 1974. Phenotypic stability in upland cotton. Cotton Grow. Rev. 51: 210-12. Mahajan, V. and Khera, A.S. 1992. Stability analysis of kernel yield and its components in maize ( Zea mays L.) in winter and monsoon seasons. Indian J. Genet., 52: 63-67. Modi, N.D., Patel, U.G., Patel, J.C. and Patel, D.H. 1999. Genotype x environment interaction in G. herbaceum cotton. J. Indian Soc. Cotton Improv. 24: 64-65. Patel, J.C., Patel, D.H., Patel, K.M., Patel, U.G. and Modi, N.D. 2000. Stability analysis of yield in cotton genotypes developed through multispecies crosses. J. Indian Soc. Cotton Improv. 25: 78-80. Patel, J.C., Patel, U.G. and Modi, N.D. 1994. Genotype x environment interaction for boll weight and seed cotton yield in Asiatic cotton (Gossypium herbaceum L.). Indian J.agri. Sci. 64: 701-703. Reddy, A.N. and Satyanarayana, A. 2003. Stability of hybrids and their parents for yield component characters in American cotton (G. hirsutum L.). J. Cotton Res. Dev. 17: 134-41. Shroff, V.N., Parmar, A.L., Pandey, S.C., Mandoloi, K.C. and Dabholkar, A.R. 1983. Phenotypic stability in cotton hybrids. Paper presented in XV International Congress on Genetics held at New Delhi in December. pp. 12-21. Siwach, S.S., Raj Bahadur and Sangwan, R.S. 2007. Stability analysis of seed cotton yield and its components in upland cotton (Gossypium hirsutum L.). J. Cotton Res. Dev. 21: 162-66.

Received: March 5, 2011; Accepted: December 20, 2011

1 Lecture December 2011 final.pmd

J., 98 (10-12): 321-326, December 2011. Stability Analysis of ... Eberhart and Russell model (1966) of stability analysis was carried out to study the genotype.

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