基于SRU深度学习的海水养殖关键水质参数自动准确预测

Juntao Liu, Chuang Yu, Zhuhua Hu, Yaochi Zhao, Xin Xia, Zhigang Tu, Ruoqing Li
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引用次数: 14

摘要

在智能海水养殖中,关键水质参数的自动准确预测是一个重要而具有挑战性的问题。本文重点研究了关键水质参数中pH和水温参数的预测。首先,采用改进的方法对水质参数进行预处理。然后,采用Pearson相关系数法寻找水质参数之间的相关性。最后,利用SRU (Simple Recurrent Unit,简单循环单元)深度学习模型建立关键水质参数的预测模型,实现准确预测。同时,我们还对RNN (Recurrent Neural Network)深度学习网络建立的预测模型的预测效果进行了评价。实验结果表明,在时间复杂度相近的情况下,所提出的预测方法比基于RNN的预测方法具有更高的预测精度。该方法预测每个数据平均耗时11.3ms,预测精度可达98.91%。
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Automatic and Accurate Prediction of Key Water Quality Parameters Based on SRU Deep Learning in Mariculture
In smart mariculture, an automatic and accurate prediction of key water quality parameters is a significant and challenge issue. This paper focuses on the prediction of pH and water temperature parameters in key water quality parameters. Firstly, the water quality parameters are preprocessed by improved method. Then, the Pearson correlation coefficient method is used to find the correlation between the water quality parameters. Finally, the SRU (Simple Recurrent Unit) deep learning model is used to establish a prediction model for the key water quality parameters, so as to achieve accurate prediction. Meanwhile, we also evaluate the prediction effect of prediction model built by RNN (Recurrent Neural Network) deep learning network. The experimental results show that the proposed prediction method has higher prediction accuracy than the method based on RNN when the time complexity is similar. The proposed method takes 11.3ms to predict every data in average, and the prediction accuracy can reach 98.91%.
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