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Intelligent Land Evaluation Research Based on Matlab and GIS

机译:基于Matlab和GIS的土地智能评价研究。

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Applying the neural network to the land evaluation, we can break through the limitations that the traditional approaches are impacted by the human factors. Back propagation neural network (BP neural network) was used to evaluate the land suitability of the Changling town of the Guangshui city, Hubei province, China. We first establish evaluation index system, these indexes include the soil contamination degree, the irrigation guaranteed rate, the drainage condition, the pH value, the organic matter content. Then we establish the BP neural network and use MatLab to write the code forming the network. The evaluation criteria were input the network to train it. Then the network performance was test until the network meets the requirements. The evaluation data of the Changling town was input as the vectors to the appropriate network which calculates to get output vectors. And the output vectors were transformed the evaluation levels that can be imported the ArcGIS software to create the land suitability assessment figure. We can draw the conclusion that the suitability for the paddy field of the unused land and the arable land is very high and the ChangLin town is suitable for the development of paddy field agriculture.
机译:将神经网络应用于土地评估,我们可以突破传统方法受人为因素影响的局限性。运用BP神经网络(BP神经网络)对湖北省广水市长岭镇的土地适宜性进行了评价。首先建立评价指标体系,这些指标包括土壤污染程度,灌溉保证率,排水条件,pH值,有机质含量。然后,我们建立BP神经网络,并使用MatLab编写构成网络的代码。将评估标准输入网络进行培训。然后测试网络性能,直到网络满足要求。将长岭镇的评估数据作为向量输入到适当的网络中,该网络进行计算以获得输出向量。然后将输出向量转换为评估级别,可以将其导入ArcGIS软件以创建土地适宜性评估图。由此可以得出结论:闲置土地和耕地对稻田的适应性很高,长林镇很适合发展稻田农业。

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