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基于路网的土壤采样布局优化——模拟退火神经网络算法

韩宗伟1,黄魏1**,罗云1,张春弟1,祁大成2   

  1. (1华中农业大学资源与环境学院, 武汉430070; 2红安县土壤肥料工作站, 湖北黄冈 438400)
  • 出版日期:2015-03-18 发布日期:2015-03-18

Application of simulated annealing method and neural network on optimizing soil sampling schemes based on road distribution.

HAN Zong-wei1, HUANG Wei1, LUO Yun1, ZHANG Chun-di1, QI Da-cheng2   

  1. (1College of Resource and Environment, Huazhong Agricultural University, Wuhan 430070, China;  2Hong’an Soil and Fertilizer Station, Huanggang 438400, Hubei, China)
  • Online:2015-03-18 Published:2015-03-18

摘要:

以湖北省钟祥市东部的土壤有机质为研究对象,通过地形分析提取坡度、沿平面曲率、沿剖面曲率、地形湿度指数、汇流动力指数、沉积物运移指数等地形因子,在道路周边设置13种采样尺度,运用模拟退火算法对各样点的空间布局分别进行优化,以获取基于路网的土壤采样优化布局.在此基础上,对地形因子和优化后样点的有机质建立多元线性回归模型,同时建立基于神经网络的多层感知机模型,并用此模型精度与多元线性回归模型精度进行对比.结果表明:利用道路网制定土壤采样方案是可行的,优化后的采样点布局能够准确获取土壤景观知识,并且优于原始样点的精度.本研究利用道路空间分布格局、历史样点、数字高程数据等可利用资源设计采样方案,为降低采样成本、提高采样效率、展现有机质空间分布格局提供了有效手段与理论依据.
 

Abstract: Taking the soil organic matter in eastern Zhongxiang County, Hubei Province, as a research object, thirteen sample sets from different regions were arranged surrounding the road network, the spatial configuration of which was optimized by the simulated annealing approach. The topographic factors of these thirteen sample sets, including slope, plane curvature, profile curvature, topographic wetness index, stream power index and sediment transport index, were extracted by the terrain analysis. Based on the results of optimization, a multiple linear regression model with topographic factors as independent variables was built. At the same time, a multilayer perception model on the basis of neural network approach was implemented. The comparison between these two models was carried out then. The results revealed that the proposed approach was practicable in optimizing soil sampling scheme. The optimal configuration was capable of gaining soil-landscape knowledge exactly, and the accuracy of optimal configuration was better than that of original samples. This study designed a sampling configuration to study the soil attribute distribution by referring to the spatial layout of road network, historical samples, and digital elevation data, which provided an effective means as well as a theoretical basis for determining the sampling configuration and displaying spatial distribution of soil organic matter with low cost and high efficiency.