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

机译:一种深入学习CNN建筑,适用于智能近红外分析农业灌溉资源水污染

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摘要

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.
机译:水是农业灌溉的自然资源。回收利用水在资源保护方面是重要的,对生态环境的可持续发展有利。来自日常生活和工业生产的废水包含各种视为污染物的化学品,导致水质下降。对于水保护和回收的需求,应评估水污染水平的评估。需要一种有效的科学技术来快速检测水污染。近红外(NIR)光谱是一种适用于快速检测农业目标的现代技术。为了监测农业资源,必需的NIR建模方法是智能和人工控制,以解决当我们面临相当数量的数据或动态情况时解决问题。在本研究中,设计了一种改进的卷积神经网络(CNN)架构,用于在NIR数据上进行深度校准。架构很浅,简单地构造了一个卷积层和一个池层。决策树算法用于汇集层以以数据驱动方式提取信息特征。 CNN架构通过组合调整多个参数在不同层中进行培训。完全连接层中的卷积滤波器,决策树分支和隐藏的神经元随着保真度自动适应测量数据。然后在深度学习模式下定量地确定水污染水平的CNN校准模型,并在深度学习模式下进行优化,并最终提高了NIR预测精度。预期的,设计的浅CNN架构是可行的,用于建立智能光谱模型,用于评估水污染程度,预计将为处理农业培养的水循环和保护问题提供智能技术支持。

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