TY - JOUR
T1 - Nexus of certain model-based estimators in remote sensing forest inventory
AU - Zheng, Yan
AU - Hou, Zhengyang
AU - Ståhl, Göran
AU - McRoberts, Ronald E.
AU - Zeng, Weisheng
AU - Næsset, Erik
AU - Gobakken, Terje
AU - Li, Bo
AU - Xu, Qing
N1 - Hybrid estimators potentially offer feasible solutions. These estimators are compatible with non-wall-to-wall X selected using probability sampling and are considered as special instances of model-based inference (St\u00E5hl et al., 2016). There are two distinct phases involved in Hybrid estimation. The first phase involves probability sampling of X, while model-based principles are applied to the second phase, and the two phases are independent of each other (St\u00E5hl et al., 2011). However, while Hybrid estimation does support non-wall-to-wall X in the form of RS sample observations, these estimators are design-specific with (1) general properties and connections to the CMB estimator that merit further investigation; and (2) specific impacts of sampling design, RS cluster size, and coverage rate for non-wall-to-wall auxiliary data, that are not yet fully understood. Understanding the nexus of these factors could lead to increased precision and reduced costs in practical applications.This study was supported by the National Social Science Fund of China (No. 22BTJ005); and the Key Project of National Key Research and Development Plan (No. 2023YFF1304002-05). Dr. Qing Xu was also supported by the National Natural Science Foundation of China (No. 32001252); and the International Center for Bamboo and Rattan (Nos. 1632022024; 1632020029; 1632021024).We express our gratitude to Dr. Janne Heiskanen from the University of Helsinki and the Building Biocarbon and Rural Development in West Africa (BIODEV) project for managing and supporting the fieldwork in Burkina Faso.
This study was supported by the National Social Science Fund of China (No. 22BTJ005); and the Key Project of National Key Research and Development Plan (No. 2023YFF1304002-05). Dr. Qing Xu was also supported by the National Natural Science Foundation of China (No. 32001252); and the International Center for Bamboo and Rattan (Nos. 1632022024; 1632020029; 1632021024).
PY - 2024/1
Y1 - 2024/1
N2 - Remote sensing (RS) facilitates forest inventory across a wide range of variables required by the UNFCCC as well as by other agreements and processes. The Conventional model-based (CMB) estimator supports wall-to-wall RS data, while Hybrid estimators support surveys where RS data are available as a sample. However, the connection between these two types of monitoring procedures has been unclear, hindering the reconciliation of wall-to-wall and non-wall-to-wall use of RS data in practical applications and thus potentially impeding cost-efficient deployment of high-end sensing instruments for large area monitoring. Consequently, our objectives are to (1) shed further light on the connections between different types of Hybrid estimators, and between CMB and Hybrid estimators, through mathematical analyses and Monte Carlo simulations; and (2) compare the effects and explore the tradeoffs related to the RS sampling design, coverage rate, and cluster size on estimation precision. Primary findings are threefold: (1) the CMB estimator represents a special case of Hybrid estimators, signifying that wall-to-wall RS data is a particular instance of sample-based RS data; (2) the precision of estimators in forest inventory can be greater for stratified non-wall-to-wall RS data compared to wall-to-wall RS data; (3) otherwise cost-prohibitive sensing, such as LiDAR and UAV, can support large scale monitoring through collecting RS data as a sample. These conclusions may reconcile different perspectives regarding choice of RS instruments, data acquisition, and cost for continuous observations, particularly in the context of surveys aiming at providing data for mitigating climate change.
AB - Remote sensing (RS) facilitates forest inventory across a wide range of variables required by the UNFCCC as well as by other agreements and processes. The Conventional model-based (CMB) estimator supports wall-to-wall RS data, while Hybrid estimators support surveys where RS data are available as a sample. However, the connection between these two types of monitoring procedures has been unclear, hindering the reconciliation of wall-to-wall and non-wall-to-wall use of RS data in practical applications and thus potentially impeding cost-efficient deployment of high-end sensing instruments for large area monitoring. Consequently, our objectives are to (1) shed further light on the connections between different types of Hybrid estimators, and between CMB and Hybrid estimators, through mathematical analyses and Monte Carlo simulations; and (2) compare the effects and explore the tradeoffs related to the RS sampling design, coverage rate, and cluster size on estimation precision. Primary findings are threefold: (1) the CMB estimator represents a special case of Hybrid estimators, signifying that wall-to-wall RS data is a particular instance of sample-based RS data; (2) the precision of estimators in forest inventory can be greater for stratified non-wall-to-wall RS data compared to wall-to-wall RS data; (3) otherwise cost-prohibitive sensing, such as LiDAR and UAV, can support large scale monitoring through collecting RS data as a sample. These conclusions may reconcile different perspectives regarding choice of RS instruments, data acquisition, and cost for continuous observations, particularly in the context of surveys aiming at providing data for mitigating climate change.
KW - Forest inventory
KW - Model-based inference
KW - Non-wall-to-wall
KW - Sample size
KW - Sampling
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U2 - 10.1016/j.fecs.2024.100245
DO - 10.1016/j.fecs.2024.100245
M3 - Article
AN - SCOPUS:85203659349
SN - 2095-6355
VL - 11
JO - Forest Ecosystems
JF - Forest Ecosystems
M1 - 100245
ER -