Favourability classification for forest species represents a fundamental activity for deriving technological solutions in forestry, as specialists need detailed information about the ecological requirements of forest species from environmental factors: climate, pedological characteristics and morphometric characteristics of the study area. The purpose of the present study was the use of the qualitative data extracted from the ecological records of the Pinus mugo species and the generation of a complex geospatial database for the entire territory of Romania. The results were represented by a collection of thematic maps generated on favourability classes for the Romanian Carpathians, as well as for the major landform subunits which had been the basis for the statistical analysis of the results. The validation of the results was performed by comparing the results obtained through the application of the model which used the frequency points reported in the European Atlas of the Forest Tree Species from Europe, 2016. In order to identify the spatio-temporal dynamics, LANDSAT satellite images from 30 years were used, which enabled the identification of the expansion and the reduction in size of the Pinus mugo area at a zonal level, a process which is dependent on natural factors, like climatic variations, or anthropic factors (overgrazing or works of cleaning the montain pastures).
The accentuated dynamics of the real estate markets of the last 20 years, determined that a large part of the territories in the immediate vicinity of the big urban centers, to change their category of land use, in an accelerated rhythm. Most of the time, the land use changes according to the market requirements, the predominantly agricultural lands being occupied by constructions with residential or industrial functions. Identifying these changes is a difficult task due to the heterogeneity of spatial databases that come from different real estate development projects, so determining and implementing new methods to track land changes are currently highly required. This paper presents a methodologically innovative index-based approach for the rapid mapping of built-up areas, using Landsat-5, Landsat-7, and Landsat-8 satellite imagery. The approach described in this study differs from other conventional methods by the way the analysis was performed and also by the thematic indices used in the processes of built-up area delineation. The method, structured in a complex model, based on Remote Sensing and GIS techniques, can be divided into three distinct phases. The first stage is related to the pre-processing of the remote sensing data. The second stage involves the calculation of the normalized difference vegetation index (NDVI), the modified normalized difference water index (MNDWI), and the bare soil index (BI) correlated with the extraction of all areas not covered by vegetation; respectively, the elimination from the result of all areas covered by water, bare land, or uncultivated arable land. The result of this stage is represented by a distinct thematic layer that contains only built-up areas and other associated territories. The last step of the model is represented by the validation of the results, which was performed based on statistical methods and also by direct comparison with field reality, obtaining a validation coefficient which is generally above 85% for any of the methods used. The validation process shows us that by applying this method, the fast mapping of the built-up areas is significantly enhanced and the model is suitable to be implemented on a larger scale in any practical and theoretical application that aims at the rapid mapping of the built-up areas and their evolutionary modeling.
The access to agricultural fields represents the main factor which favours their spatial distribution and their mechanized exploitation. In addition to this it valorizes the fields by enabling their intensive cultivation, fast harvesting and product distribution to collecting, processing and sales centres, with a main impact on perishable goods. The short access time to perishable crops enables their delivery in large quantities to the market, without major losses, thus their value increases. The present study analyses the accessibility of agricultural lands included in the high class of favourability for agricultural use, based on GIS techniques, with the purpose of economically valorising the territory by identifying the lots with very good accessibility and high favourability determined by rational exploitation. The following analysis is performed in a highly agricultural area, polarised by three agricultural sales centres and characterised by a low density of European, national and county roads (which offer easy access) while there is a high density of village roads and direct roads to agricultural lots and crops. The methodology of study was structured in two interconnected stages: the SWOT analysis of the present situation in what concerns the road quality and the implementation of a GIS spatial analysis accessibility model based on integrated network analysis in order to identify the main sales centres and the allocation of each agricultural lot to a certain sales centre. Using this analysis, certain hypotheses and proposals were made for the economically valid cultivation of the land and its accessibility as well as for the identification of intermediary collecting and primary sales centres.
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