预测循环水养殖系统硝酸盐浓度的混合神经网络模型

ArXiv Pub Date : 2024-01-03 DOI:10.48550/arXiv.2401.01491
Xiangyu Fan, Jiaxin Lia, Yingzhe Wang, Yingsha Qu, Hao Li, Keming Qu, Z. Cui
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引用次数: 0

摘要

这项研究开创性地将神经网络模型应用于再循环水产养殖系统(RAS)的硝酸盐管理。我们提出了一个混合神经网络模型,该模型利用六个水质参数准确预测了硝酸盐的日浓度及其变化趋势。我们进行了为期 105 天的水产养殖实验,在此期间,我们从五组 RAS 中采集了 450 个样本来训练我们的模型(C-L-A 模型),该模型结合了卷积神经网络(CNN)、长短期记忆(LSTM)和自我注意力。此外,我们还从独立的 RAS 中获取了 90 个样本作为测试数据,以评估模型在实际应用中的性能。实验结果证明,C-L-A 模型能准确预测 RAS 中的硝酸盐浓度,即使在训练数据比例减少的情况下也能保持良好的性能。我们建议使用过去 7 天的水质参数来预测未来的硝酸盐浓度,因为在这个时间范围内,模型可以实现最大的泛化能力。此外,我们还比较了 C-L-A 模型与三种基本神经网络模型(CNN、LSTM、self-Attention)以及三种混合神经网络模型(CNN-LSTM、CNN-Attention、LSTM-Attention)的性能。结果表明,C-L-A 模型(R2=0.956)明显优于其他神经网络模型(R2=0.901-0.927)。我们的研究表明,利用神经网络模型,特别是 C-L-A 模型,有可能帮助 RAS 行业节约日常硝酸盐监测的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Neural Network Model For Predicting The Nitrate Concentration In The Recirculating Aquaculture System
This study was groundbreaking in its application of neural network models for nitrate management in the Recirculating Aquaculture System (RAS). A hybrid neural network model was proposed, which accurately predicted daily nitrate concentration and its trends using six water quality parameters. We conducted a 105-day aquaculture experiment, during which we collected 450 samples from five sets of RAS to train our model (C-L-A model) which incorporates Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), and self-Attention. Furthermore, we obtained 90 samples from a standalone RAS as the testing data to evaluate the performance of the model in practical applications. The experimental results proved that the C-L-A model accurately predicted nitrate concentration in RAS and maintained good performance even with a reduced proportion of training data. We recommend using water quality parameters from the past 7 days to forecast future nitrate concentration, as this timeframe allows the model to achieve maximum generalization capability. Additionally, we compared the performance of the C-L-A model with three basic neural network models (CNN, LSTM, self-Attention) as well as three hybrid neural network models (CNN-LSTM, CNN-Attention, LSTM-Attention). The results demonstrated that the C-L-A model (R2=0.956) significantly outperformed the other neural network models (R2=0.901-0.927). Our study suggests that the utilization of neural network models, specifically the C-L-A model, could potentially assist the RAS industry in conserving resources for daily nitrate monitoring.
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