Kalinkina N., Korosov A., Syarki M. For creating an expert system of Lake Onega: optimization of monitoring the state of the ecosystem on zooplankton indicators // Principy èkologii. 2017. № 1. P. 117‒132. DOI: 10.15393/j1.art.2017.5864


Issue № 1

Methods of ecological investigations

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For creating an expert system of Lake Onega: optimization of monitoring the state of the ecosystem on zooplankton indicators

Kalinkina
   Nataliya Mikhailovna
D. Sc., Northern Water Problems Institute, KRC RAN, Aleksander Nevsky st., 50, 185030 Petrozavodsk, Republic of Karelia Russia, kalina@nwpi.krc.karelia.ru
Korosov
   Andrey Viktorovich
D.Sc., Petrozavodsk state university, 185640, Karelia, Petrozavodsk, Lenin st., 33, korosov@mail.ru
Syarki
   Maria Tagevna
Northern Water Problems Institute, KRC RAN, Aleksander Nevsky st., 50, 185030 Petrozavodsk, Republic of Karelia Russia, MSyarki@yandex.ru
Keywords:
expert system
Lake Onega
monitoring
zooplankton
Summary: In Lake Onega zooplankton is considered as a convenient and reliable indicator of the state of the lake ecosystem. As a formal basis for the consolidation of the accumulated information on the biota of Lake Onega, it is proposed to create an expert system using zooplankton as a prototype of an intelligent computer environment on all biotic components. In this context, it is proposed to review the organization of monitoring the state of zooplankton to increase the number of samples taken and to expand the geography of sampling as well as to simplify and computerize the sample analysis.

© Petrozavodsk State University

Reviewer: N. Ilmast
Reviewer: V. K. Shitikov
Received on: 17 October 2016
Published on: 11 April 2017

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