Prediction of dissolved oxygen content in river crab culture based on least squares support vector regression optimized by improved particle swarm optimization
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Daoliang Li | Yu Jiang | Shuangyin Liu | Longqin Xu | Qiucheng Li | Haijiang Tai | Lihua Zeng | Daoliang Li | Shuangyin Liu | L. Zeng | Longqin Xu | Qiucheng Li | Yu Jiang | Haijiang Tai
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