Bhartiya Krishi Anusandhan Patrika, volume 38 issue 3 (september 2023) : 223-226

A Method of Constructing p-rep Designs

L.N. Vinaykumar1, Cini Varghese1, Seema Jaggi2, Eldho Varghese3, Mohd Harun1, Sayantani Karmakar1,*, Devendra Kumar1
1ICAR-Indian Agricultural Statistics Research Institute, Pusa-110 012, New Delhi, India.
2Human Resource Development, Krishi Anusandhan Bhavan II, ICAR, New Delhi, India.
3Division of Fishery Resources Assessment, ICAR-Central Marine Fisheries Research Institute, Kochi-682 018, Kerala, India.
  • Submitted13-07-2022|

  • Accepted02-06-2023|

  • First Online 04-10-2023|

  • doi 10.18805/BKAP561

Cite article:- Vinaykumar L.N., Varghese Cini, Jaggi Seema, Varghese Eldho, Harun Mohd, Karmakar Sayantani, Kumar Devendra (2023). A Method of Constructing p-rep Designs . Bhartiya Krishi Anusandhan Patrika. 38(3): 223-226. doi: 10.18805/BKAP561.
Background: Early generation breeding trials (EGBTs) are very important in plant breeding programmes. In most cases, a large number of breeding lines are to be tested, often with very few available resources and it is also required to repeat these trials in a number of environments. For such trials, an alternative is to use partially replicated designs, where a proportion of the test lines are replicated at each environment. 

Methods: Here, a general method of constructing a series of efficient partially replicated designs for EGBTs in equal block sizes, through initial blocks is developed. 

Result: Taking all environments together, the designs obtained are equi-replicate and are partially balanced. They are cost effective in terms of resources as they require lesser replications.

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