Land Change Detection and Effective Factors on Forest Land Use Changes: Application of Land Change Modeler and Multiple Linear Regression
Reducing forest covered areas and changing it to pasture, agricultural, urban and rural areas is performed every year and this causes great damages in natural resources in a wide range. In order to identify the effective factors on reducing the forest cover area, multiple regression was used from 19...
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Veröffentlicht in: | Journal of applied science & environmental management 2019-01, Vol.22 (8) |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Reducing forest covered areas and changing it to pasture, agricultural,
urban and rural areas is performed every year and this causes great
damages in natural resources in a wide range. In order to identify the
effective factors on reducing the forest cover area, multiple
regression was used from 1995 to 2015 in Mazandaran forests. A Multiple
regressions can link the decline in forest cover (dependent variable)
and its effective factors (independent variable) are well explained. In
this study, Landsat TM data of 1995 and Landsat ETM+ data of 2015 were
analyzed and classified in order to investigate the changes in the
forest area. The images were classified in two classes of forest and
non-forest areas and also forest map with spatial variables of
physiography and human were analyzed by regression equation. Detection
satellite images showed that during the studied period there was found
a reduction of forest areas up to approximately 257331 ha. The results
of regression analysis indicated that the linear combination of income
per capita, rain and temperature with determined coefficient 0.4 as
independent variables were capable of estimating the reduction of
forest area. The results of this study can be used as an efficient tool
to manage and improve forests regarding physiographical and human
characteristics. |
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ISSN: | 1119-8362 |