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A novel complex network-based deep learning method for characterizing gas–liquid two-phase flow
2020
Petroleum Science
Gas-liquid two-phase flow widely exits in production and transportation of petroleum industry. Characterizing gas-liquid flow and measuring flow parameters represent challenges of great importance, which contribute to the recognition of flow regime and the optimal design of industrial equipment. In this paper, we propose a novel complex network-based deep learning method for characterizing gas-liquid flow. Firstly, we map the multichannel measurements to multiple limited penetrable visibility
doi:10.1007/s12182-020-00493-3
fatcat:lvktkyim7bbbzhm36xa5tkbx6e