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ON STOCK ASSESSMENT AND FORECASTING THE STOCK ABUNDANCE OF NORTH SHRIMP PANDALUS EOUS MAKAROV, 1935 NEAR SOUTH-WESTERN KAMCHATKA

https://doi.org/10.15853/2072-8212.2019.55.72-91

Abstract

Based on some assumptions about growth of north shrimp we made an attempt in this research to evaluate age composition of the crustacean from size structure using the method of mixture separation. Average length, average weight and part of individuals of commercial size were evaluated in different age groups. Obtained results were used to simulate dynamics and consequent likelihood forecast of the commercial stock and total allowed catch of north shrimp near South-Western coast of Kamchatka. Shaefer production model, statistical cohort model and model of the “CSA”-type functional groups dynamics were used for the stock abundance assessment.

About the Authors

O. I. Ilyin
Kamchatka Branch of Russian Research Institute of Fisheries and Oceanography (“KamchatNIRO”)
Russian Federation


O. G. Mikhaylova
Kamchatka Branch of Russian Research Institute of Fisheries and Oceanography (“KamchatNIRO”)
Russian Federation


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For citations:


Ilyin O.I., Mikhaylova O.G. ON STOCK ASSESSMENT AND FORECASTING THE STOCK ABUNDANCE OF NORTH SHRIMP PANDALUS EOUS MAKAROV, 1935 NEAR SOUTH-WESTERN KAMCHATKA. The researches of the aquatic biological resources of Kamchatka and the North-West Part of the Pacific Ocean. 2019;(55):72-91. (In Russ.) https://doi.org/10.15853/2072-8212.2019.55.72-91

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