Sergeev A.P., Butorova A.S., Shichkin A.V., Buevich A.G., Baglaeva E.M., Subbotina I.E.
УДК 504.064.2.001.18
https://doi.org/10.47148/1609-364X-2022-2-42-53
Сandidate of Physical and Mathematical Sciences
Leading Researcher, Acting Head of the laboratory of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia
е-mail: sergeev@ecko.uran.ru
Anastasia S. Butorova
Research engineer of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia;
1st year Postgraduate Student of the Institute of Radio Electronics and Information Technologies – RtF of the Ural Federal University named after B.N. Yeltsin
19, Mira str., Ekaterinburg, 620002, Russia
е-mail: amoskalyova11@yandex.ru
Andrey V. Shichkin
Researcher of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia
е-mail: and@ecko.uran.ru
Alexander G. Buevich
Researcher of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia
е-mail: bag@ecko.uran.ru
Elena M. Baglaeva
Candidate of Physical and Mathematical Sciences
Senior Researcher of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia
е-mail: e.m.baglaeva@urfu.ru
Irina Ev. Subbotina
Candidate of Physical and Mathematical Sciences
Researcher of the Institute of Industrial Ecology, UB RAS
20, S. Kovalevskoy str., Ekaterinburg, 620990, Russia
е-mail: iesub@mail.ru
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Key words: permutation method, randomization, predicted values, observed values, spatial distribution, predictive ability assessment, artificial neural networks