INFLUENCE OF THE GEOMETRY LOCATION OF THE COMMON POINTS ON THE RESULTS OF TRANSFORMATION

Main Article Content

A. IVASHNIOVA

Abstract

Two-dimensional transformation is a transformation of a rectangular coordinate system to another. These linear transformations in the plane are the simplest in form and content, however, often are sufficient for solution of the overwhelming number of tasks on the transformation occurring in geodesy. However, despite the breadth of use and apparent clarity of the process of two-dimensional transformation, there are a number of important questions which require further research today. One of such question is the influence of geometry of the common points on the results of the transformation. The article presents the results of numerical experiments, in which the elements of the transformation were obtained for several variants of location of common points. By the received results has been analyzed the behavior of deformation elements of two-dimensional transformation in process of approach to worst geometry.

Article Details

How to Cite
IVASHNIOVA, A. (2016). INFLUENCE OF THE GEOMETRY LOCATION OF THE COMMON POINTS ON THE RESULTS OF TRANSFORMATION. Vestnik of Polotsk State University. Part F. Constructions. Applied Sciences, (8), 143-147. Retrieved from https://journals.psu.by/constructions/article/view/1394
Section
Геодезия и геоэкология

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