НЕЙРОМЕРЕЖЕВЕ ПРОГНОЗУВАННЯ ВЛАСТИВОСТЕЙ ХОЛОДОАГЕНТІВ: ОГЛЯД

Автор(и)

  • С.В. Артеменко Одеська національна академія харчових технологій, навчально-науковий інститут холоду, кріотехноло-гій та екоенергетики ім. В.С. Мартиновського, вул. Дворянська, 1/3, Одеса, 65082, Ukraine

DOI:

https://doi.org/10.15673/0453-8307.6/2014.30992

Ключові слова:

Штучні нейронні мережі – Властивості холодоагентів – Фазова рівновага

Анотація

В роботі проведено огляд статей, пов'язаних з моделюванням властивостей холодоагентів за допомогою штучних нейронних мереж, що представляють альтернативу прогнозуванню термодинамічних властивостей речовин на основі апарату термодинаміки. У статті обговорюється ефективність, адекватність і обмеження застосування цього підходу.

Посилання

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2015-01-16

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Холодильні та супутні технології