Per Recruit Models for Stock Assessment and Management of Carp Fishes in the Pattipul Stream, Sheetalpur, Saran (Bihar)
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https://doi.org/10.58414/SCIENTIFICTEMPER.2021.12.1.27Keywords:
Per recruit models, Major carp, Pattipul streamDimensions Badge
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The Per recruit models were applied to assess Major carp stock in the Pattipul of Bihar showed rapid increment in Yield per recruit (Y/R) at low values of fishing mortality (M=0.17/year) and age at first capture (Tc=0.5 years and increasing F (0.50/year) as 1068 g per year. The Y/R above this level was constant or slightly decreased and the recent F value is higher than the biological reference points as F0.1 (0.15 per year), FSB40% (0.13 per year), FSB50% (0.08 per year) and FSB25% (0.24 per year). The Tc increase by one year resulted in slight increase in Y/R, while additional Tc increase led to decrease in Y/R values. The Tc increase in F required to obtaining the maximum Y/R until reaching a optimum state as initial recruitment at constant M, while recent F value gives small increase in recent level of F, increasing the Tc by one year would result in a small increase in biomass per recruit (B/R). The Tc increase caused a gradual increase in B/R, followed by a decline after a certain value of Tc. These results provide evidence of recruitment over-fishing at all optimum fishing levels, and so sustainable management and conservation of Major carps in Pattipul would require a decrease in F to levels less than F0.1 and FSB40%, which can be achieved through a reduction in fishing effort but not through an increase in Tc.Abstract
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