环境资源管理
业务
土地管理
成本效益
比例(比率)
经济成本
规定烧伤
地形
单位(环理论)
自然资源经济学
机会成本
气候变化
环境规划
风险分析(工程)
土地利用
环境科学
计算机科学
工程类
经济
地理
生态学
土木工程
地图学
新古典经济学
数学教育
数学
林业
生物
操作系统
作者
Erica Marshall,Shona Elliot-Kerr,Sarah McColl-Gausden,Trent D. Penman
标识
DOI:10.1016/j.jenvman.2023.118606
摘要
Land managers around the world are increasingly under pressure to demonstrate that the actions being used to moderate wildfire risk are effective and cost-efficient. However, little research to date has focused on determining cost-efficiency of management actions or identified the factors which increase the costs of performing such actions. Here, we aimed to identify the key drivers of cost for fuel management (prescribed burning, mulching, and slashing), fuel breaks, and suppression using data from the state of Victoria, Australia. We utilise generalised additive models to understand how environmental factors, terrain, location, and management decisions influence the cost of implementing wildfire management efforts. These models show that cost per unit declines as the area treated or the area of the fire increases for all four management approaches. Therefore, preventative, and responsive management actions represent economies of scale that reduce in cost with larger treatments. We also found that there were regional differences in the cost of fuel management and fuel breaks, potentially related to the structure of resourcing treatments in each region and the availability of land on which it is feasible to implement management. Cost of suppression per fire increased with the number of fire fighters and when there were more fires occurring concurrently in the landscape. Identifying the key drivers of cost for preventative and responsive management actions could enable managers to allocate resources to these actions more efficiently in future. Understanding drivers of cost-efficiency could be critical for adapting management to shifts in wildfire risk, particularly given climate change will alter the window in which it is safe to apply some preventative fuel management actions and reduce suppression effectiveness.
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