Integrating rapid assessment, variable probability sampling, and machine learning to improve accuracy and consistency in mapping local spatial distribution of plant species richness

IF 3 2区 农林科学 Q1 FORESTRY
Forestry Pub Date : 2023-08-14 DOI:10.1093/forestry/cpad041
Bo-Hao Perng, Tzeng Yih Lam, Sheng-Hsin Su, Mohamad Danial Bin Md Sabri, David Burslem, Dairon Cardenas, Álvaro Duque, Sisira Ediriweera, Nimal Gunatilleke, Vojtech Novotny, Michael J O’Brien, Glen Reynolds
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引用次数: 0

Abstract

Abstract Conserving plant diversity is integral to sustainable forest management. This study aims at diversifying tools to map spatial distribution of species richness. We develop a sampling strategy of using rapid assessments by local communities to gather prior information on species richness distribution to drive census cell selection by sampling with covariate designs. An artificial neural network model is built to predict the spatial patterns. Accuracy and consistency of rapid assessment factors, sample selection methods, and sampling intensity of census cells were tested in a simulation study with seven 25–50-ha census plots in the tropics and subtropics. Results showed that identifying more plant individuals in a rapid assessment improved accuracy and consistency, while transect was comparable to or slightly better than nearest-neighbor assessment, but knowing more species had little effects. Results of sampling with covariate designs depended on covariates. The covariate Ifreq, inverse of the frequency of the rapidly assessed species richness strata, was the best choice. List sampling and local pivotal method with Ifreq increased accuracy by 0.7%–1.6% and consistency by 7.6%–12.0% for 5% to 20% sampling intensity. This study recommends a rapid assessment method of selecting 20 individuals at every 20-m interval along a transect. Knowing at least half of the species in a forest that are abundant is sufficient. Local pivotal method is recommended at 5% sampling intensity or less. This study presents a methodology to directly involve local communities in probability-based forest resource assessment to support decision-making in forest management.
整合快速评估、变概率采样和机器学习,提高植物物种丰富度局部空间分布的准确性和一致性
保护植物多样性是森林可持续经营的重要组成部分。本研究旨在提供多样化的工具来绘制物种丰富度的空间分布。我们开发了一种抽样策略,利用当地社区的快速评估来收集物种丰富度分布的先验信息,通过协变量设计的抽样来驱动普查细胞的选择。建立了人工神经网络模型来预测空间格局。通过对热带和亚热带7个25 - 50公顷的普查样地的模拟研究,验证了快速评估因子、样本选择方法和普查单元抽样强度的准确性和一致性。结果表明,在快速评估中识别更多的植物个体提高了准确性和一致性,而样带评估与最近邻居评估相当或略好,但了解更多的物种影响不大。协变量设计的抽样结果依赖于协变量。协变量Ifreq是快速评估物种丰富度的地层频率的倒数,是最佳选择。在5% ~ 20%的采样强度下,Ifreq列表采样和局部枢纽方法的准确率提高了0.7% ~ 1.6%,一致性提高了7.6% ~ 12.0%。本研究推荐沿样带每隔20 m选取20个个体的快速评价方法。了解森林中至少一半的物种就足够了。局部枢纽法建议在5%或更小的采样强度。本研究提出了一种直接让当地社区参与基于概率的森林资源评估的方法,以支持森林管理决策。
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来源期刊
Forestry
Forestry 农林科学-林学
CiteScore
6.70
自引率
7.10%
发文量
47
审稿时长
12-24 weeks
期刊介绍: The journal is inclusive of all subjects, geographical zones and study locations, including trees in urban environments, plantations and natural forests. We welcome papers that consider economic, environmental and social factors and, in particular, studies that take an integrated approach to sustainable management. In considering suitability for publication, attention is given to the originality of contributions and their likely impact on policy and practice, as well as their contribution to the development of knowledge. Special Issues - each year one edition of Forestry will be a Special Issue and will focus on one subject in detail; this will usually be by publication of the proceedings of an international meeting.
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