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Identification of land use with water quality data in stormwater using a neural network

机译:基于神经网络的雨水水质数据识别土地利用

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To control stormwater pollution effectively, development of innovative, land-use-related control strategies will be required. An approach that could differentiate land-use types from stormwater quality would be the first step to solving this problem. We propose a neural network approach to examine the relationship between stormwater water quality and various types of land use. The neural network model can be used to identify land-use types for future known and unknown cases. The neural model uses a Bayesian network and has 10 water quality input variables, four neurons in the hidden layer, and five land-use target variables (commercial, industrial, residential, transportation, and vacant). We obtained 92.3 percent of correct classification and 0.157 root-mean-squared error on test files. Based on the neural model, simulations were performed to predict the land-use type of a known data set, which was not used when developing the model. The simulation accurately described the behavior of the new data set. This study demonstrates that a neural network can be effectively used to produce land-use type classification with water quality data.
机译:为了有效地控制雨水污染,将需要开发与土地利用相关的创新控制策略。可以将土地利用类型与雨水质量区分开的方法将是解决此问题的第一步。我们提出了一种神经网络方法来检查雨水水质与各种土地利用类型之间的关系。神经网络模型可用于识别未来已知和未知案例的土地利用类型。该神经模型使用贝叶斯网络,具有10个水质输入变量,隐藏层中的4个神经元和5个土地利用目标变量(商业,工业,住宅,交通和闲置)。我们在测试文件上获得了92.3%的正确分类,并获得了0.157均方根误差。基于神经模型,进行了模拟以预测已知数据集的土地使用类型,该模型在开发模型时并未使用。该模拟准确地描述了新数据集的行为。这项研究表明,神经网络可以有效地利用水质数据进行土地利用类型分类。

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