会议专题

Using Tuned LS-SVR to Derive Normal Height from GPS Height

This paper presents the application of least squares support vector regression (LS-SVR) with radial basis function (RBF) kernel in deriving orthometric height from GPS heights. First, identical survey points in both height systems of a D-order GPS network are picked up as the data set used in analysis. Second, LS-SVR is performed to model the height anomaly and then to convert GPS height to normal height for practical use. Standard grid-search and particle swarm optimization (PSO) was adopted to tune the hyperparameters. Finally, the results are compared with that of genetic algorithm based back-propagation neural network (GA-BPNN) and conicoid fitting. It is found that the tuned LS-SVR has a better fitting and predictive ability and the normal height derived from GPS height can arrive at centimeter level in a plain region.

LS-SVR normal height GPS height Ga-BPNN conicoid fitting PSO

Wenbin Huang

Zhejiang Water Conservancy and Hydropower College Hangzhou,P.R.China

国际会议

2011 IEEE International Conference on Spatial Data Mining and Geographical Knowledge Services(第一届空间数据挖掘与地理知识服务国际学术会议 ICSDM 2011)

福州

英文

511-514

2011-06-29(万方平台首次上网日期,不代表论文的发表时间)