Abstract

An estimation of where forest fragmentation is likely to occur is critically important for improving the integrity of the forest landscape. We prepare a forest fragmentation susceptibility map for the first time by developing an integrated model and identify its causative factors in the forest landscape. Our proposed model is based upon the synergistic use of the earth observation data, forest fragmentation approach, patch forests, causative factors, and the weight-of-evidence (WOE) method in a Geographical Information System (GIS) platform. We evaluate the applicability of the proposed model in the Indian Himalayan region, a region of rich biodiversity and environmental significance in the Indian subcontinent. To obtain a forest fragmentation susceptibility map, we used patch forests as past evidence of completely degraded forests. Subsequently, we used these patch forests in the WOE method to assign the standardized weight value to each class of causative factors tested by the Variance Inflation Factor (VIF) method. Finally, we prepare a forest fragmentation susceptibility map and classify it into five levels: very low, low, medium, high, and very high and test its validity using 30% randomly selected patch forests. Our study reveals that around 40% of the study area is highly susceptible to forest fragmentation. This study identifies that forest fragmentation is more likely to occur if proximity to built-up areas, roads, agricultural lands, and streams is low, whereas it is less likely to occur in higher altitude zones (more than 2000 m a.s.l.). Additionally, forest fragmentation will likely occur in areas mainly facing south, east, southwest, and southeast directions and on very gentle and gentle slopes (less than 25 degrees). This study identifies Himalayan moist temperate and pine forests as being likely to be most affected by forest fragmentation in the future. The results suggest that the study area would experience more forest fragmentation in the future, meaning loss of forest landscape integrity and rich biodiversity in the Indian Himalayan region. Our integrated model achieved a prediction accuracy of 88.7%, indicating good accuracy of the model. This study will be helpful to minimize forest fragmentation and improve the integrity of the forest landscape by implementing forest restoration and reforestation schemes.

Highlights

  • Forests are significant, as they provide goods and services such as fuel, timber, food, bioproducts, greenhouse gas regulation, air, water supply, carbon storage, nutrient cycling, and genetic and species diversity, which are essential to the support of life [1,2]

  • The seven selected causative factors of forest fragmentation are suitable for modeling forest fragmentation susceptibility

  • This study indicates that forest landscape integrity and rich biodiversity can be affected in the Indian Himalayan region

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Summary

Introduction

As they provide goods and services such as fuel, timber, food, bioproducts, greenhouse gas regulation, air, water supply, carbon storage, nutrient cycling, and genetic and species diversity, which are essential to the support of life [1,2]. In the Indian Himalayan region, forests are among the most diverse and dominant land-covers and have been recognized as having vital benefits in socio-economic. The process of forest fragmentation due to human activities such as built-up expansion, agriculture expansion, infrastructure development, illegal logging, and shifting cultivation have been identified as the most dominant causative factors in the Indian Himalayan region [18,19,20,21]. The Indian Himalayan region is prone to different types of natural hazards such as landslides, floods, and forest fires [25]. These natural hazards cause tree mortality and forest fragmentation and may lead to further forest degradation in the future. That is why forest cover has been under pressure from both natural and anthropogenic drivers in the Indian Himalayan region

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