Hecht Hagar, Krofcheck Dan J, Carril Dennis, Hurteau Matthew D
Spatial Informatics Group Natural Assets Lab, Pleasanton, CA, USA.
Department of Biology, University of New Mexico, Albuquerque, NM, USA.
Sci Rep. 2024 Feb 6;14(1):3073. doi: 10.1038/s41598-024-53359-8.
Historically, fire has been essential in Southwestern US forests. However, a century of fire-exclusion and changing climate created forests which are more susceptible to uncharacteristically severe wildfires. Forest managers use a combination of thinning and prescribed burning to reduce forest density to help mitigate the risk of high-severity fires. These treatments are laborious and expensive, therefore optimizing their impact is crucial. Landscape simulation models can be useful in identifying high risk areas and assessing treatment effects, but uncertainties in these models can limit their utility in decision making. In this study we examined underlying uncertainties in the initial vegetation layer by leveraging a previous study from the Santa Fe fireshed and using new inventory plots from 111 stands to interpolate the initial forest conditions. We found that more inventory plots resulted in a different geographic distribution and wider range of the modelled biomass. This changed the location of areas with high probability of high-severity fires, shifting the optimal location for management. The increased range of biomass variability from using a larger number of plots to interpolate the initial vegetation layer also influenced ecosystem carbon dynamics, resulting in simulated forest conditions that had higher rates of carbon uptake. We conclude that the initial forest layer significantly affects fire and carbon dynamics and is dependent on both number of plots, and sufficient representation of the range of forest types and biomass density.
从历史上看,火灾在美国西南部的森林中至关重要。然而,一个世纪的防火措施以及气候变化造就了更易遭受异常严重野火的森林。森林管理者采用间伐和计划烧除相结合的方法来降低森林密度,以帮助减轻高强度火灾的风险。这些措施既费力又昂贵,因此优化其效果至关重要。景观模拟模型有助于识别高风险区域并评估处理效果,但这些模型中的不确定性会限制其在决策中的效用。在本研究中,我们利用圣达菲流域先前的一项研究,并使用来自111个林分的新清查样地来推断初始森林状况,从而研究初始植被层中的潜在不确定性。我们发现,更多的清查样地导致了不同的地理分布以及更广泛的模拟生物量范围。这改变了高强度火灾高概率发生区域的位置,从而改变了最佳管理位置。使用更多样地来推断初始植被层所导致的生物量变异性范围的增加,也影响了生态系统的碳动态,导致模拟的森林状况具有更高的碳吸收速率。我们得出结论,初始森林层对火灾和碳动态有显著影响,并且取决于样地数量以及森林类型和生物量密度范围的充分代表性。