基于分区的局域神经网络时空建模方法研究
Local Neural Networks of Space-time Modeling Based on Partitioning for Lattice Data in GIS
- 2008年第5期 页码:707-715
纸质出版日期: 2008
DOI: 10.11834/jrs.20080592
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纸质出版日期: 2008 ,
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[1]王海起,王劲峰.基于分区的局域神经网络时空建模方法研究[J].遥感学报,2008(05):707-715.
WANG Hai-qi1, WANG Jin-feng2. Local Neural Networks of Space-time Modeling Based on Partitioning for Lattice Data in GIS[J]. Journal of Remote Sensing, 2008,(5):707-715.
区域数据表现为两种尺度的空间特性:反映全局特征的空间依赖性和反映局域特征的空间波动性。空间波动性表现为空间数据在局部地区的聚集或高低交错现象。在研究区域数据时空预测性建模时
从降低数据的空间波动和不平稳性对模型预测能力的影响角度出发
提出了一种基于分区的局域神经网络时空非线性建模的思路。分区过程由基于空间邻接关系的K-means聚类算法完成。不同的分区方案通过相关性、波动性、紧凑性等指标进行评价和优选。在确定最优分区方案的基础上
对各子区分别采用两层前馈网络进行建模
模型的输入不仅要考虑本区内单元的作用
而且要考虑相邻子区的边界效应。各神经网络模型的时空预测能力通过平均相均差和动态相似率等指标进行衡量。最后
通过对法国94个县每周流感报告病例的时空建模分析表明
与全局神经网络模型相比
基于分区的局域神经网络模型具有更好的预测能力。
This paper focuses on space-time nonlinear intelligent modeling for lattice data.Lattice data refers to attributes attached to fixed
regular or irregular
polygonal regions such as districts or census zones in two-dimensional space.Lattice data space-time analysis is aiming at detecting
modeling and predicting space-time patterns or trends of lattice attributes changed with time while spatial topological structures are simultaneously kept invariable.From the perspective of space
lattice objects have two different scale spatial properties influencing lattice data modeling: global dependence and local fluctuation.Global spatial dependence or autocorrelation quantifies the correlation of the same attribute at different spatial locations
and local spatial fluctuation or rough
coexisted with global dependence
is represented in the form of local spatial clustering of similar values or local spatial outliers.To consider simultaneously the effects of two properties above
local neural networks(NN) model is studied for space-time nonlinear autoregressive modeling.The main research contents include:(1) To reduce influence of spatial fluctuation on prediction accuracy of NN
all regions are partitioned into several subareas by an improved k-means algorithm.(2) Different partition schemes are evaluated and compared according to three essential criteria including dependence
continuity
fluctuation.Dependence means that an optimal partition must guarantee that there is real and significant spatial dependence among regions in a subarea because the results of output layer nodes in a NN model depending on the interactions of input layer nodes through hidden layers nodes.Spatial autocorrelation of a subarea can be measured by global Moran’s I and its significance test can be done based on z-score of Moran’s I.Continuity means that only neighboring regions can be grouped into a subarea
and this criterion is fused into the modified k-means algorithm.When the algorithm judges one region which subarea it belongs to
not only should the distance be considered to the centroid of a subarea but also the common borders between this region and the regions in a subarea.As to fluctuation
although it is impossible to make each subarea have complete spatial stability through partitioning
the less fluctuation means the better predicting results of NN model.For a subarea
standard deviation between local Moran’s I of all regions in the subarea and global Moran’s I of the subarea is regarded as an evaluation index to the fluctuation of the subarea.(3) Each multi-layer perceptrons(MLPs) network is used respectively in modeling and predicting for each subarea.The output nodes are the predicting values at time t of an attribute for all regions in a subarea.The input nodes are observations before time t of the same attribute of both regions in the subarea and regions neighboring to the subarea and the latter is called boundary effect.Finally
as a case study
all local models of all the subareas are trained
tested and compared with a single global MLPs network by modeling one-step-ahead prediction of an epidemic dataset which records weekly influenza cases of 94 departments in France from the first week of 1990 to the 53th of 1992.Two performance measures
including average relative variance(ARV) and dynamic similarity rate(DSR)
indicate that local NN model based on partitioning has better predicting capability than global NN model.Several issues are still worth further study:(1) The initial subareas of partitioning are selected randomly in our research.In the further study
a reasonable approach should combine selection with spatial patterns
for instance considering the center of local cluster.(2) Partition criteria should be another issue and different types of spatial and space-time processes
such as rainfall
price waves
public data
etc
may have different objective criteria for choosing an optimal partition.(3) It may be more imperative to study feasible measures for quantifying global and local space-time dependence of lattice data and testing significance of this dependence.
格数据时空建模分区K-means聚类神经网络边界效应
lattice dataspace-time modelingpartitioningK-means clusteringneural networksboundary effect
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