PERFORMANCE EVALUATION OF UPLAND COTTON GENOTYPES IN TERMS OF SEED COTTON YIELD UNDER INCONSISTENT ENVIRONMENTAL CONDITIONS

Authors

  • M JAMIL Cotton Research Station, Vehari, Pakistan
  • M SAEED Maize and Millets Research Institute (MMRI), Yusafwala, Sahiwal, 57000, Pakistan
  • M ABDULLAH Soil and Water Testing Laboratory Jhang, Pakistan
  • U FAHEEM Entomological Research Institute, Sub-station, Multan, Pakistan
  • K HAYAT Central Cotton Research Institute old Shujabad Road Multan, Pakistan
  • S AHMAD Cotton Research Institute old Shujabad Road Multan, Pakistan
  • G AHMAD Cotton Research Institute old Shujabad Road Multan, Pakistan
  • A HUSSAIN Maize and Millets Research Institute (MMRI), Yusafwala, Sahiwal, 57000, Pakistan
  • F HUSSAIN Sugarcane Research Station District Rahim Yar Khan, Pakistan
  • I AKHTAR Regional Agricultural Research Institute, Bahawalpur, 63100, Pakistan
  • K JAVED Cotton Research Station, Vehari, Pakistan
  • J IQBAL Cotton Research Institute old Shujabad Road Multan, Pakistan

DOI:

https://doi.org/10.54112/bcsrj.v2023i1.226

Keywords:

Agro-environments, Cotton, Genotype by environment interaction, Genotype Selection Index, Yield

Abstract

Yield constancy is a crucial characteristic for a variety to become popular among growers. To study this aspect, the present trial was carried out at seven locations in the cotton belt of Punjab during 2020-21. Twenty-five upland cotton strains from different breeding stations were tested along with the standard variety CIM-602. The main objective was to choose super-yielding plus stable strains. Maximum variability due to environments (65%) followed by GEI (22.8%) was observed. The first two interaction principal components (IPC) were squeezed with 72.3% of cumulative variability due to GEI. The analysis of additive main effects and multiplicative interaction (AMMI) diagnosed AMMI5 as an appropriate model. Strain CKC-5 gave maximum mean yield (1812kg ha-1) and winner in all AMMI models. Test sites were split into two mega environments (ME). ENT7 (CRS Faisalabad) site was bearing the highest mean seed cotton yield of (2532kg ha-1) with the biggest (52.18) IPC1 score. The correlation between sites and IPC1 scores was (0.68) as recorded by AMMI analysis. AMMI1 ranks depicted that (PCI2) CIM-875 bears yield advantage of (29.09%) at ENT6 (Vehari) site over (trial winner strain CKC-5) due to micro adaptations. Genotype Selection Index (GSI) discriminated strain BS-J5 as yielder cum stable one with the least GSI value. Approval of this strain for general cultivation from the respective forum may boost cotton production in the province.

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Published

2023-03-16

How to Cite

JAMIL, M., SAEED, M., ABDULLAH, M., FAHEEM, U., HAYAT, K., AHMAD, S., AHMAD, G., HUSSAIN, A., HUSSAIN, F., AKHTAR, I., JAVED, K., & IQBAL, J. (2023). PERFORMANCE EVALUATION OF UPLAND COTTON GENOTYPES IN TERMS OF SEED COTTON YIELD UNDER INCONSISTENT ENVIRONMENTAL CONDITIONS. Biological and Clinical Sciences Research Journal, 2023(1), 226. https://doi.org/10.54112/bcsrj.v2023i1.226

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