cs.AI updates on arXiv.org 09月11日
基于CNN的NLR模型在水质数据补缺中的应用
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本文提出一种基于卷积神经网络(CNN)的非线性低秩表示(NLR)模型,用于填补水质数据中的缺失值。该模型通过融合时间特征和提取非线性交互与局部模式,提高了水质数据补缺的准确度,为复杂动态环境下的水质监测提供了有效方法。

arXiv:2506.23629v2 Announce Type: replace-cross Abstract: The integrity of Water Quality Data (WQD) is critical in environmental monitoring for scientific decision-making and ecological protection. However, water quality monitoring systems are often challenged by large amounts of missing data due to unavoidable problems such as sensor failures and communication delays, which further lead to water quality data becoming High-Dimensional and Sparse (HDS). Traditional data imputation methods are difficult to depict the potential dynamics and fail to capture the deep data features, resulting in unsatisfactory imputation performance. To effectively address the above issues, this paper proposes a Nonlinear Low-rank Representation model (NLR) with Convolutional Neural Networks (CNN) for imputing missing WQD, which utilizes CNNs to implement two ideas: a) fusing temporal features to model the temporal dependence of data between time slots, and b) Extracting nonlinear interactions and local patterns to mine higher-order relationships features and achieve deep fusion of multidimensional information. Experimental studies on three real water quality datasets demonstrate that the proposed model significantly outperforms existing state-of-the-art data imputation models in terms of estimation accuracy. It provides an effective approach for handling water quality monitoring data in complex dynamic environments.

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水质数据 数据补缺 卷积神经网络 非线性低秩表示 环境监测
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