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

Author:

Perng Bo-Hao1,Lam Tzeng Yih1ORCID,Su Sheng-Hsin2,Md Sabri Mohamad Danial Bin3,Burslem David4,Cardenas Dairon5,Duque Álvaro6,Ediriweera Sisira7,Gunatilleke Nimal8,Novotny Vojtech910,O’Brien Michael J11,Reynolds Glen12

Affiliation:

1. School of Forestry and Resource Conservation, National Taiwan University , Taipei 10617 , Taiwan

2. Fushan Research Center, Taiwan Forestry Research Institute , Yilan 264013 , Taiwan

3. Forestry and Environment Division, Forest Research Institute Malaysia , Kepong, Selangor 52109 , Malaysia

4. The School of Biological Sciences, University of Aberdeen , Aberdeen AB24 3FX , United Kingdom

5. Instituto Amazónico de Investigaciones Científicas SINCHI , Leticia, Amazonas , Colombia

6. Department of Forest Sciences, National University of Colombia , Medellín 050034 , Colombia

7. Faculty of Applied Sciences, Uva Wellassa University , Badulla 90000 , Sri Lanka

8. University of Peradeniya , Peradeniya 20400 , Sri Lanka

9. Biology Centre, Institute of Entomology of the Czech Academy of Sciences , České Budějovice 37005 , Czech Republic

10. Faculty of Sciences, University of South Bohemia , České Budějovice 37011 , Czech Republic

11. Estación Experimental de Zonas Áridas, Consejo Superior de Investigaciones Científicas , Almería 04120 , Spain

12. Danum Valley Field Centre, South East Asia Rainforest Research Partnership (SEARRP) , Lahad Datu, Sabah 91112 , Malaysia

Abstract

AbstractConserving 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.

Funder

National Science and Technology Council

Publisher

Oxford University Press (OUP)

Subject

Forestry

Reference84 articles.

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