| Literature DB >> 31137247 |
Hong Jie Deng1, Ling Xi Peng1, Jia Jing Zhang1, Chun Ming Tang2, Hao Liang Fang1, Hao Huai Liu3.
Abstract
Aerator is an indispensable tool in aquaculture, and China is one of the largest aquaculture countries in the world. So, the intelligent control of the aerator is of great significance to energy conservation and environmental protection and the prevention of the deterioration of dissolved oxygen. There is no intelligent aerator related work in practice and research. In this paper, we mainly study the intelligent aerator control based on deep learning, and propose a dissolved oxygen prediction algorithm with long and short term memory network, referred as DopLSTM. The prediction results are used to the intelligent control design of the aerator. As a result, it is proved that the intelligent control of the aerator can effectively reduce the power consumption and prevent the deterioration of dissolved oxygen.Entities:
Keywords: deep learning ; intelligent aerator ; long term memory network
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Year: 2019 PMID: 31137247 DOI: 10.3934/mbe.2019148
Source DB: PubMed Journal: Math Biosci Eng ISSN: 1547-1063 Impact factor: 2.080