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基于深度 LSTM 网络考虑智能养殖中相关性的水质预测方法。

A Water Quality Prediction Method Based on the Deep LSTM Network Considering Correlation in Smart Mariculture.

机构信息

State Key Laboratory of Marine Resource Utilization in South China Sea, College of Information Science & Technology, Hainan University, No.58, Renmin Avenue, Haikou 570228, China.

School of Software & Microelectronics, Peking University, No.24, Jinyuan Road, Daxing District, Beijing 102600, China.

出版信息

Sensors (Basel). 2019 Mar 22;19(6):1420. doi: 10.3390/s19061420.

DOI:10.3390/s19061420
PMID:30909468
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6470961/
Abstract

An accurate prediction of cage-cultured water quality is a hot topic in smart mariculture. Since the mariculturing environment is always open to its surroundings, the changes in water quality parameters are normally nonlinear, dynamic, changeable, and complex. However, traditional forecasting methods have lots of problems, such as low accuracy, poor generalization, and high time complexity. In order to solve these shortcomings, a novel water quality prediction method based on the deep LSTM (long short-term memory) learning network is proposed to predict pH and water temperature. Firstly, linear interpolation, smoothing, and moving average filtering techniques are used to repair, correct, and de-noise water quality data, respectively. Secondly, Pearson's correlation coefficient is used to obtain the correlation priors between pH, water temperature, and other water quality parameters. Finally, a water quality prediction model based on LSTM is constructed using the preprocessed data and its correlation information. Experimental results show that, in the short-term prediction, the prediction accuracy of pH and water temperature can reach 98.56% and 98.97%, and the time cost of the predictions is 0.273 s and 0.257 s, respectively. In the long-term prediction, the prediction accuracy of pH and water temperature can reach 95.76% and 96.88%, respectively.

摘要

笼养水质的准确预测是智能海水养殖的热门话题。由于养殖环境始终与周围环境开放,水质参数的变化通常是非线性的、动态的、多变的和复杂的。然而,传统的预测方法存在精度低、泛化能力差、时间复杂度高等问题。为了解决这些缺点,提出了一种基于深度 LSTM(长短期记忆)学习网络的新型水质预测方法,用于预测 pH 值和水温。首先,采用线性插值、平滑和移动平均滤波技术分别对水质数据进行修复、校正和去噪。其次,使用皮尔逊相关系数获取 pH 值、水温与其他水质参数之间的相关先验信息。最后,使用预处理后的数据及其相关信息构建基于 LSTM 的水质预测模型。实验结果表明,在短期预测中,pH 值和水温的预测精度分别可达 98.56%和 98.97%,预测时间成本分别为 0.273s 和 0.257s。在长期预测中,pH 值和水温的预测精度分别可达 95.76%和 96.88%。

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