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基于多尺度一维卷积神经网络融合与紫外可见光谱法的水化学需氧量预测

Prediction of Water Chemical Oxygen Demand with Multi-Scale One-Dimensional Convolutional Neural Network Fusion and Ultraviolet-Visible Spectroscopy.

作者信息

Li Jingwei, Lu Yijing, Ding Yipei, Zhou Chenxuan, Liu Jia, Shao Zhiyu, Nian Yibei

机构信息

School of Electrical, Energy and Power Engineering, Yangzhou University, No. 88 South University Road, Yangzhou 225009, China.

出版信息

Biomimetics (Basel). 2025 Mar 20;10(3):191. doi: 10.3390/biomimetics10030191.

Abstract

Chemical oxygen demand (COD) is a critical parameter employed to assess the level of organic pollution in water. Accurate COD detection is essential for effective environmental monitoring and water quality assessment. Ultraviolet-visible (UV-Vis) spectroscopy has become a widely applied method for COD detection due to its convenience and the absence of the need for chemical reagents. This non-destructive and reagent-free approach offers a rapid and reliable means of analyzing water. Recently, deep learning has emerged as a powerful tool for automating the process of spectral feature extraction and improving COD prediction accuracy. In this paper, we propose a novel multi-scale one-dimensional convolutional neural network (MS-1D-CNN) fusion model designed specifically for spectral feature extraction and COD prediction. The architecture of the proposed model involves inputting raw UV-Vis spectra into three parallel sub-1D-CNNs, which independently process the data. The outputs from the final convolution and pooling layers of each sub-CNN are then fused into a single layer, capturing a rich set of spectral features. This fused output is subsequently passed through a Flatten layer followed by fully connected layers to predict the COD value. Experimental results demonstrate the effectiveness of the proposed method, as it was compared with three traditional methods and three deep learning methods on the same dataset. The MS-1D-CNN model showed a significant improvement in the accuracy of COD prediction, highlighting its potential for more reliable and efficient water quality monitoring.

摘要

化学需氧量(COD)是用于评估水中有机污染程度的关键参数。准确检测COD对于有效的环境监测和水质评估至关重要。紫外可见(UV-Vis)光谱法因其便捷性且无需化学试剂,已成为一种广泛应用于COD检测的方法。这种无损且无需试剂的方法提供了一种快速可靠的水分析手段。近年来,深度学习已成为一种强大的工具,可实现光谱特征提取过程的自动化并提高COD预测精度。在本文中,我们提出了一种专门为光谱特征提取和COD预测设计的新型多尺度一维卷积神经网络(MS-1D-CNN)融合模型。所提出模型的架构包括将原始UV-Vis光谱输入到三个并行的子一维卷积神经网络中,这些网络独立处理数据。然后将每个子卷积神经网络的最终卷积层和池化层的输出融合到单个层中,以捕获丰富的光谱特征集。随后,这个融合输出经过一个展平层,再通过全连接层来预测COD值。实验结果证明了所提方法的有效性,因为它在同一数据集上与三种传统方法和三种深度学习方法进行了比较。MS-1D-CNN模型在COD预测精度上有显著提高,突出了其在更可靠、高效的水质监测方面的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/447d/11940155/c08e80d42de3/biomimetics-10-00191-g001.jpg

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