Citation: | Yu-jun Bao, Chang-ying Ji, Bing Zhang. 2022: Prediction of dissolved oxygen content changes based on two-dimensional behavior features of fish school and T–S fuzzy neural network. Water Science and Engineering, 15(3): 210-217. doi: 10.1016/j.wse.2022.06.001 |
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