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Development and application of Shannon's entropy integrated information value model for landslide susceptibility assessment and zonation in Sikkim Himalayas in India

机译:印度锡金喜马拉雅山滑坡敏感性评估和分区的Shannon熵综合信息价值模型的开发和应用

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The state of Sikkim in India has many steep slopes and has been susceptible to landslides. Since 1968 there have been innumerable losses of lives and properties due to landslides. There is an urgent need for advance assessment of degrees of vulnerability and delineation of the most vulnerable zone for shifting of the population and infrastructure to a safer zone. The identification and formulation of most suitable and acceptable method for such assessment is still nascent and research based. In this study, an attempt has been made to integrate the concept of Shannon's entropy with the information value-based statistical model to evaluate the landslide susceptibility in the study area and assess the improvement made through the integration of Shannon's entropy by comparing the results with the landslide susceptibility determined from the information value-based statistical model alone. Initially, the thematic layers pertaining to all the causative parameters were overlaid with the help of geographical information system that resulted in the formation of 78,256 numbers of polygons for each one of which landslide susceptibility was determined. For each polygon, the total landslide information value (TLIV) was computed as the summation of the landslide information values determined for the individual sub-categories present within the respective polygons. Again for each polygon, the Shannon's entropy value of the individual parameters was multiplied with the summation of the landslide information values of all the sub-categories present within the respective parameters. The product values computed for the different causative parameters were summed up to determine the total landslide information value with entropy (TLIV_e). Finally, the entire study area was categorized into five zones of landslides susceptibility based on the TLIV and TLIV_e, respectively. The prediction accuracy of the landslides determined based on the landslide susceptibility derived from TLIV_e was found to be significantly high (91 %) as compared to that derived from TLIV (85 %) indicating the potential contribution of Shannon's entropy in the improved delineation of the landslide susceptibility zones.
机译:印度锡金州有许多陡峭的山坡,易受滑坡影响。自1968年以来,由于山体滑坡,无数人丧生和财产损失。迫切需要预先评估脆弱程度和最脆弱地区的轮廓,以将人口和基础设施转移到更安全的地区。鉴定和制定最合适和可接受的方法进行此类评估仍是新生和研究基础。在这项研究中,已经尝试将香农熵的概念与基于信息值的统计模型相结合,以评估研究区域的滑坡敏感性,并通过将香农熵与结果进行比较来评估香农熵的改进。仅基于基于信息价值的统计模型即可确定滑坡敏感性。最初,在地理信息系统的帮助下,覆盖了所有导致原因的主题层,从而形成了78256个多边形,每个多边形都被确定为滑坡易感性。对于每个多边形,计算总滑坡信息值(TLIV),作为为各个多边形内存在的各个子类别确定的滑坡信息值的总和。再次对于每个多边形,将各个参数的香农熵值乘以各个参数内存在的所有子类别的滑坡信息值之和。将针对不同原因参数计算出的乘积值相加,以确定具有熵(TLIV_e)的总滑坡信息值。最后,根据TLIV和TLIV_e,将整个研究区域分为五个滑坡敏感性区。与基于TLIV_e的滑坡敏感性(85%)相比,基于TLIV_e的滑坡敏感性所确定的滑坡的预测精度显着较高(91%),这表明香农熵在改善滑坡描述中的潜在作用敏感区。

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