4.7 Article

A deep learning CNN architecture applied in smart near-infrared analysis of water pollution for agricultural irrigation resources

Journal

AGRICULTURAL WATER MANAGEMENT
Volume 240, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.agwat.2020.106303

Keywords

Water pollution; Agricultural resource; NIR spectroscopy; Convolutional neural network; Decision tree; Optimization; Intelligent analysis

Funding

  1. National Natural Science Foundations of China [61505037]
  2. China Postdoctoral Science Foundation [2018T110880]
  3. Natural Science Foundations of Guangxi Province [2018GXNSFAA050045, 2018GXNSFAA138121, 2018GXNSFBA281020]
  4. Guangxi Science and Technology Base Foundation [AD18281039]

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Water is a natural resource for agricultural irrigation. Recycling use of water is important in terms of resource conservation and is good for sustainable development of the ecological environment. The wastewater from daily living and industrial production contains various chemicals that are supposed as pollutants leading to the decline of water quality. For the demand of water protection and recycling, the assessment of water pollution level should be evaluated. An effective scientific technique is required for rapid detection of water pollution. Near-infrared (NIR) spectroscopy is a modern technology suitable for rapid detection of agricultural targets. For monitoring the agricultural water resource, the NIR modeling methods are required to be smart and artificially controlled to solve the issues when we confront a considerable number of data or a dynamic situation. In this study, an improved convolutional neural network (CNN) architecture was designed for a deep calibration on the NIR data. The architecture is shallow, simply constructed with one convolution layer and one pooling layer. The decision tree algorithm was employed in the pooling layer for extracting the informative features in a data driven manner. The CNN architecture was trained by combined tuning of multiple parameters in different layers. The convolution filters, the decision tree branches and the hidden neurons in the fully connected layer were automatically adaptive with fidelity to the measured data. A CNN calibration model for NIR quantitatively determination of water pollution level was then established and optimized in deep learning mode, and eventually improved the NIR prediction accuracy. Prospectively, the designed shallow CNN architecture is feasible to be used for establishing intelligent spectroscopic models for evaluating the level of water pollution, and is expected to provide smart technical support in dealing with the issues of water recycling and conservation for agricultural cultivation.

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