评估不同变量权重对野火易感性的影响

IF 2.6 2区 农林科学 Q1 FORESTRY
Fatih Sari
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引用次数: 0

摘要

在本研究中,利用各种多标准决策分析技术(AHP、SAW 和 VIKOR)和机器学习算法(MaxEnt 和逻辑回归)绘制了野火易感性图,以揭示模型对野火的响应。本研究建议,在 MCDA 方法中使用机器学习算法生成的自然权重代替人工权重,可以提高易感性地图的可靠性,因为野火与气候、地形和环境变量有着非常密切的关系。利用机器学习算法获得的贡献率(自然权重)被纳入 MCDA 方法,使变量之间的空间关系更加明显。因此,利用 MCDA 方法、MaxEnt 和逻辑回归算法生成了八幅易感性图。相关性分析表明,使用自然权重而不是人工权重提高了 MCDA 方法与机器学习算法之间的相关性。每个相关值平均增加了 10%,使用自然权重时,VIKOR 和逻辑回归之间的相关值从 0.6286 增加到 0.7580,增幅最大。此外,还使用了 1035 个现有野火地点来评估生成地图的可靠性。结果显示,1035 个野火地点的平均风险值使用 AHP 从 6.04 增加到 7.23,使用 SAW 从 0.66 增加到 0.79,使用 VIKOR 方法从 0.35 增加到 0.25。这表明,在 MCDA 方法中使用机器学习算法确定的自然权重时,所绘制的易感性地图的准确性和可靠性大幅提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Assessment of the effects of different variable weights on wildfire susceptibility

Assessment of the effects of different variable weights on wildfire susceptibility

In this study, wildfire susceptibility is mapped using various multi-criteria decision analysis techniques (AHP, SAW and VIKOR) and machine learning algorithms (MaxEnt and logistic regression) to reveal the response of models for wildfires. In this study, it is suggested that using natural weights generated by machine learning algorithms instead of artificial weights in MCDA methods can increase the reliability of susceptibility maps because wildfires have very close relationship with climatic, topographic and environmental variables. The contribution rates (natural weights) were obtained using machine learning algorithms and incorporated into MCDA methods to make the spatial relationships between variables more obvious. As a result, eight susceptibility maps were generated using MCDA methods, MaxEnt and logistic regression algorithms. Correlation analysis showed that using natural weights instead of artificial weights increased the correlation between MCDA methods and machine learning algorithms. Each correlation value increased by 10% on average and the highest increase was determined between VIKOR and logistic regression from 0.6286 to 0.7580 when natural weights were used. In addition, 1035 existing wildfire locations were used to evaluate the reliability of generated maps. The results showed that the average risk values of 1035 wildfire locations increased from 6.04 to 7.23 using AHP, from 0.66 to 0.79 using SAW and from 0.35 to 0.25 using the VIKOR method. This indicates a significant increase in the accuracy and reliability of susceptibility maps produced when natural weights determined by machine learning algorithms are used in MCDA methods.

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来源期刊
CiteScore
5.10
自引率
3.60%
发文量
77
审稿时长
6-16 weeks
期刊介绍: The European Journal of Forest Research focuses on publishing innovative results of empirical or model-oriented studies which contribute to the development of broad principles underlying forest ecosystems, their functions and services. Papers which exclusively report methods, models, techniques or case studies are beyond the scope of the journal, while papers on studies at the molecular or cellular level will be considered where they address the relevance of their results to the understanding of ecosystem structure and function. Papers relating to forest operations and forest engineering will be considered if they are tailored within a forest ecosystem context.
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