Abstract

Wildfires constitute the most important natural disturbance of Mediterranean forests, driving vegetation dynamics. Although Mediterranean species have developed ecological post-fire recovery strategies, the impacts of climate change and changes in fire regimes may endanger their resilience capacity. This study aims at assessing post-fire recovery dynamics at different stages in two large fires that occurred in Mediterranean pine forests (Spain) using temporal segmentation of the Landsat time series (1994–2018). Landsat-based detection of Trends in Disturbance and Recovery (LandTrendr) was used to derive trajectory metrics from Tasseled Cap Wetness (TCW), sensitive to canopy moisture and structure, and Tasseled Cap Angle (TCA), related to vegetation cover gradients. Different groups of post-fire trajectories were identified through K-means clustering of the Recovery Ratios (RR) from fitted trajectories: continuous recovery, continuous recovery with slope changes, continuous recovery stabilized and non-continuous recovery. The influence of pre-fire conditions, fire severity, topographic variables and post-fire climate on recovery rates for each recovery category at successional stages was analyzed through Geographically Weighted Regression (GWR). The modeling results indicated that pine forest recovery rates were highly sensitive to post-fire climate in the mid and long-term and to fire severity in the short-term, but less influenced by topographic conditions (adjusted R-squared ranged from 0.58 to 0.88 and from 0.54 to 0.93 for TCA and TCW, respectively). Recovery estimation was assessed through orthophotos, showing a high accuracy (Dice Coefficient ranged from 0.81 to 0.97 and from 0.74 to 0.96 for TCA and TCW, respectively). This study provides new insights into the post-fire recovery dynamics at successional stages and driving factors. The proposed method could be an approach to model the recovery for the Mediterranean areas and help managers in determining which areas may not be able to recover naturally.

Highlights

  • Wildfires constitute one of the most widespread and important natural disturbances of forest ecosystems, playing a paramount role in the dynamics of the terrestrial system [1]

  • This study aims at assessing post-fire recovery dynamics at different stages in two large fires that occurred in Mediterranean pine forests (Spain) using temporal segmentation of the Landsat time series (1994–2018)

  • Four different categories were identified for Tasseled Cap Angle (TCA) (CR, choivgehrearnadccsutrauccytutrheanwtehre more cdliesarrulyptdeedfionneeds. (CRSC), CRS and NCR) and five for Tasseled Cap Wetness (TCW) (3C.1R. ,CClaRs2si,fiCcaRtSioCn,oCf RPSosCt‐2fiarne dTrCajRecSt)o.rTiehse main characteristics of the categories describing recovery are definFeoduirndTiaffbelree3n.t categories were identified for TCA (CR, CRSC, CRS and NCR) and five for TCW (CR, CR2, CRSC, CRSC2 and CRS)

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Summary

Introduction

Wildfires constitute one of the most widespread and important natural disturbances of forest ecosystems, playing a paramount role in the dynamics of the terrestrial system [1]. Notwithstanding, Mediterranean ecosystems are adapted to fire recurrence as it constitutes the most important natural disturbance, driving vegetation dynamics [6]. Land use changes and the impacts of climate change may affect the dynamics of post-fire ecological succession in the immediate future [3,9]. Large fire (i.e., ≥500 ha) occurrence for the European Mediterranean region does not show a strong increasing trend in the recent decades [5], climate change projections indicate an increase in the frequency and intensity of megafires, as a result of more extended and severe seasonal droughts [10], which will impact ecosystems’ species composition and functioning [3]. Forest management in European Mediterranean countries is challenging due to the vulnerability of natural regrowth capability of these ecosystems [11,12]

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