Change detection in Sal forest in Dehradun Forest Division using remote sensing and geographical information system

被引:0
|
作者
Permeshwar S. Chauhan
Mahesh C. Porwal
Lalit Sharma
Jay Devs.negi
机构
[1] Indian Institute of Remote Sensing (URS),
[2] Forest Research Institute (FRI),undefined
关键词
Remote Sensing; Forest Type; False Colour Composite; Doon Valley; Site Mosaic;
D O I
10.1007/BF03030827
中图分类号
学科分类号
摘要
The review of study site have revealed the change in vegetation cover of Sal Dense to Sal Medium and Sal Open in 6 forest Mosaics owing to biotic and abiotic conditions prevailing in the specific areas. Analysis carried out using thematic map derived from aerial photograph of 1976 and satellite data of IRS 1C LISS III False Colour Composite (FCC) of March 1999 revealed the cause for change in forest density classes. Deforestation, encroachment and agriculture have been identified as the underlying causes, which have affected some specific locations to a marked extent. There has been a progressive and remarkable change among vegetation classes from 1976 to 1999. It is evident from forest type and density map that Sal density has significantly reduced from Sal Dense 65.61 % in 1976 to Sal Dense 11.12% in the year 1999 followed by Sal Open 11.18 % and Sal Medium 18.24 %. The overall change has been estimated to be 42.11% of the total forested area.
引用
收藏
页码:211 / 218
页数:7
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