TY - JOUR
T1 - Automatic optimization of height network configurations for detection of surface deformations
AU - Holst, Christoph
AU - Eling, Christian
AU - Kuhlmann, Heiner
PY - 2013
Y1 - 2013
N2 - Levellings are performed to observe height changes of different epochs at discrete surveying points. A reliable estimation of surface deformations by a bivariate polynomial needs a sufficient configuration of the underlying network. Because the spacial distribution of the surveying points is not homogeneous in the discussed regions, the network configuration has to be optimized. This study proposes an optimization procedure that estimates the optimal number and position of the surveying points considered for a reliable analysis. Furthermore, the already existing observations are accepted or rejected due to the network's geometry. Therefore, two different approaches are combined. First, the sampling theoremfrom time series analysis is used to estimate the number and position of the surveying points. Second, the partial redundancies from statistics take the reliability into account. Applying the optimization procedure to several test regions, the benefit of the optimized network configurations is discussed.
AB - Levellings are performed to observe height changes of different epochs at discrete surveying points. A reliable estimation of surface deformations by a bivariate polynomial needs a sufficient configuration of the underlying network. Because the spacial distribution of the surveying points is not homogeneous in the discussed regions, the network configuration has to be optimized. This study proposes an optimization procedure that estimates the optimal number and position of the surveying points considered for a reliable analysis. Furthermore, the already existing observations are accepted or rejected due to the network's geometry. Therefore, two different approaches are combined. First, the sampling theoremfrom time series analysis is used to estimate the number and position of the surveying points. Second, the partial redundancies from statistics take the reliability into account. Applying the optimization procedure to several test regions, the benefit of the optimized network configurations is discussed.
KW - bivariate polynomial
KW - network optimization
KW - partial redundancies
KW - reliability
KW - sampling theorem
KW - surface deformation
UR - http://www.scopus.com/inward/record.url?scp=84968648033&partnerID=8YFLogxK
U2 - 10.1515/jag-2013-0053
DO - 10.1515/jag-2013-0053
M3 - Article
AN - SCOPUS:84968648033
SN - 1862-9016
VL - 7
SP - 103
EP - 113
JO - Journal of Applied Geodesy
JF - Journal of Applied Geodesy
IS - 2
ER -