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首页> 外文期刊>PeerJ Computer Science >A novel dissolved oxygen prediction model based on enhanced semi-naive Bayes for ocean ranches in northeast China
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A novel dissolved oxygen prediction model based on enhanced semi-naive Bayes for ocean ranches in northeast China

机译:基于东北地区海洋牧场增强半幼稚贝叶斯的新型溶解氧预测模型

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摘要

A challenge of achieving intelligent marine ranching is the prediction of dissolved oxygen (DO). DO directly reflects marine ranching environmental conditions. Through accurate DO predictions, timely human intervention can be made in marine pasture water environments to avoid problems such as reduced yields or marine crop death due to low oxygen concentrations in the water. We use an enhanced semi-naive Bayes model for prediction based on an analysis of DO data from marine pastures in northeastern China from the past three years. Based on the semi-naive Bayes model, this paper takes the possible values of a DO difference series as categories, counts the possible values of the first-order difference series and the difference series of the interval before each possible value, and selects the most probable difference series value at the next moment. The prediction accuracy is optimized by adjusting the attribute length and frequency threshold of the difference sequence. The enhanced semi-naive Bayes model is compared with LSTM, RBF, SVR and other models, and the error function and Willmott’s index of agreement are used to evaluate the prediction accuracy. The experimental results show that the proposed model has high prediction accuracy for DO attributes in marine pastures.
机译:实现智能海洋牧场的挑战是预测溶解的氧气(DO)。直接反映海洋牧场环境条件。通过准确的预测,可以在海洋牧场水环境中进行及时的人力干预,以避免由于水中低氧浓度导致的产量或海洋作物死亡等问题。我们使用增强的半天空贝叶斯模型进行预测,基于中国东北三年来从海洋牧场的DO数据分析。基于半天真贝叶斯模型,本文采用DO差异系列的可能值作为类别,计算每个可能值之前的一阶差异系列和区间差异系列的可能值,并选择最多可能的差异系列值在下一刻。通过调整差异序列的属性长度和频率阈值来优化预测精度。增强的半天真贝叶斯模型与LSTM,RBF,SVR和其他模型进行了比较,并且错误函数和WillMott的协议索引用于评估预测精度。实验结果表明,该模型具有高预测准确性,用于海洋牧场的属性。

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