TL;DR
This paper introduces a novel application of the Generalised Synthetic Control method to quantify and predict heterogeneous wildfire effects on vegetation using satellite remote sensing data over two decades in California.
Contribution
It presents a new approach employing GSC for estimating counterfactual vegetation changes due to wildfires, outperforming traditional nearby-region assessments.
Findings
GSC improves prediction accuracy of vegetation indices post-wildfire.
Wildfire effects on vegetation can last over a decade and vary by region.
Regions with lower Burning Index show greater vegetation changes.
Abstract
Wildfires have become one of the biggest natural hazards for environments worldwide. The effects of wildfires are heterogeneous, meaning that the magnitude of their effects depends on many factors such as geographical region, climate and land cover/vegetation type. Yet, which areas are more affected by these events remains unclear. Here we present a novel application of the Generalised Synthetic Control (GSC) method that enables quantification and prediction of vegetation changes due to wildfires through a time-series analysis of in situ and satellite remote sensing data. We apply this method to medium to large wildfires ( 1000 acres) in California throughout a time-span of two decades (1996--2016). The method's ability for estimating counterfactual vegetation characteristics for burned regions is explored in order to quantify abrupt system changes. We find that the GSC method is…
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