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FOREST ECOSYSTEM DYNAMICS ASSESSMENT AND PREDICTIVE MODELLING IN EASTERN HIMALAYA

机译:喜马拉雅东部的森林生态系统动力学评估及预测建模

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This study focused on the forest ecosystem dynamics assessment and predictive modelling deforestation and forest cover predicti on in a part of north-eastern India i.e. forest areas along West Bengal, Bhutan, Arunachal Pradesh and Assam border in Eastern Himalaya using temporal satellite imagery of 1975, 1990 and 2009 and predicted forest cover for the period 2028 using Cellular Automata Markov Modedel (CAMM). The exercise highlighted large-scale deforestation in the study area during 1975-1990 as well as 1990-2009 fore st cover vectors. A net loss of 2,334.28 km~2 forest cover was noticed between 1975 and 2009, and with current rate of deforestation, a forest area of 4,563.34 km~2 will be lost by 2028. The annual rate of deforestation worked out to be 0.35 and 0.78% during 1975-1990 and 1990-2009 respectively. Bamboo forest increased by 24.98% between 1975 and 2009 due to opening up of the forests. Forests in Kokrajh ar, Barpeta, Darrang, Sonitpur, and Dhemaji districts in Assam were noticed to be worst-affected while Lower Subansiri, West and Ea st Siang, Dibang Valley, Lohit and Changlang in Arunachal Pradesh were severely affected. Among different forest types, the maximu m loss was seen in case of sal forest (37.97%) between 1975 and 2009 and is expected to deplete further to 60.39% by 2028. The tropical moist deciduous forest was the next category, which decreased from 5,208.11 km~2 to 3,447.28 (33.81%) during same period with further chances of depletion to 2,288.81 km~2 (56.05%) by 2028. It noted progressive loss of forests in the study area between 1975 and 2009 through 1990 and predicted that, unless checked, the area is in for further depletion of the invaluable climax forests in the region, especially sal and moist deciduous forests. The exercise demonstrated high potential of remote sensing and geographic informati on system for forest ecosystem dynamics assessment and the efficacy of CAMM to predict the forest cover change.
机译:这项研究主要集中在森林生态系统动态评估和预测建模毁林和森林覆盖predicti上沿西孟加拉邦,不丹,阿鲁纳恰尔邦和阿萨姆邦接壤的东喜马拉雅使用的1975年时间的卫星图像印度东北部即森林面积的一部分, 1990年和2009年的预测森林覆盖用于使用元胞自动机马尔可夫Modedel(CAMM)的期间2028。演习期间,1975-1990以及1990-2009脱颖而出ST盖载体突出了研究区的大规模毁林。 2,334.28公里〜2森林覆盖的净亏损为发现1975年至2009年间,和毁林目前的速度,约2将由2028年丢失的4,563.34公里,森林面积毁林的年率计算出0.35和0.78 %时分别1975年至1990年和1990-2009年。竹林1975年和2009年间增长了24.98%,由于森林的开放。在Kokrajh森林AR,巴尔佩塔,Darrang,Sonitpur,并在阿萨姆邦德马吉地区被发现是受影响最严重,而下苏班西里县,西和EA ST祥,迪邦山谷,嘉黎和沧浪在阿鲁纳恰尔邦受到严重影响。间不同森林类型,所述maximu米损失被认为在1975年和2009年之间SAL林(37.97%)的情况下,预计由2028进一步耗尽至60.39%的热带潮湿落叶林是下一个类别,它从5,208.11降低千米〜2期间与到2,288.81千米〜2(56.05%)的耗竭的机会进一步同期3,447.28(33.81%)由2028年它指出在1975年和2009年之间的研究区域森林的渐进性丧失,通过1990年的和预测的是,除非检查,该地区是在该区域的宝贵高潮森林的进一步消耗,特别是SAL和潮湿落叶林。遥感和对系统进行森林生态系统动态评估地理informati和CAMM功效的演习展示高电位预测森林覆被变化。

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