| Literature DB >> 35009702 |
Mehmed Batilović1, Radovan Đurović2, Zoran Sušić1,3, Željko Kanović1,3, Zoran Cekić3,4.
Abstract
In this paper, an original modification of the generalised robust estimation of deformation from observation differences (GREDOD) method is presented with the application of two evolutionary optimisation algorithms, the genetic algorithm (GA) and generalised particle swarm optimisation (GPSO), in the procedure of robust estimation of the displacement vector. The iterative reweighted least-squares (IRLS) method is traditionally used to perform robust estimation of the displacement vector, i.e., to determine the optimal datum solution of the displacement vector. In order to overcome the main flaw of the IRLS method, namely, the inability to determine the global optimal datum solution of the displacement vector if displaced points appear in the set of datum network points, the application of the GA and GPSO algorithms, which are powerful global optimisation techniques, is proposed for the robust estimation of the displacement vector. A thorough and comprehensive experimental analysis of the proposed modification of the GREDOD method was conducted based on Monte Carlo simulations with the application of the mean success rate (MSR). A comparative analysis of the traditional approach using IRLS, the proposed modification based on the GA and GPSO algorithms and one recent modification of the iterative weighted similarity transformation (IWST) method based on evolutionary optimisation techniques is also presented. The obtained results confirmed the quality and practical usefulness of the presented modification of the GREDOD method, since it increased the overall efficiency by about 18% and can provide more reliable results for projects dealing with the deformation analysis of engineering facilities and parts of the Earth's crust surface.Entities:
Keywords: Monte Carlo simulations; evolutionary optimisation algorithms; robust M estimation; robust deformation analysis
Mesh:
Year: 2021 PMID: 35009702 PMCID: PMC8749742 DOI: 10.3390/s22010159
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Šelevrenac embankment dam.
Figure 2Geodetic network of Šelevrenac dam.
Figure 3MSRs of GREDOD and IWST methods for variant 1.
Figure 4MSRs of GREDOD and IWST methods for variant 2.
Figure 5MSRs of GREDOD and IWST methods for variant 3.
Figure 6Overall efficiency of GREDOD and IWST methods.
Figure 7FPRs of GREDOD and IWST methods.
Figure A1Empirical distributions of overall absolute true errors for variant 1.
Figure A2Empirical distributions of overall absolute true errors for variant 2.
Figure A3Empirical distributions of overall absolute true errors for variant 3.
Figure 8Arithmetic mean (AM) values and standard deviations (SDs) of overall absolute true errors of the GREDOD and IWST methods for variant 1.
Figure 9Arithmetic mean (AM) values and standard deviations (SDs) of overall absolute true errors of the GREDOD and IWST methods for variant 2.
Figure 10Arithmetic mean (AM) values and standard deviations (SDs) of overall absolute true errors of the GREDOD and IWST methods for variant 3.