Abstract

Traditional field surveys are expensive, time-consuming, laborious, and difficult to perform, especially in mountainous and dense forests, which imposes a burden on forest management personnel and researchers. This study focuses on predicting forest growing stock, one of the most significant parameters of a forest resource assessment. First, three schemes were designed—Scheme 1, based on the study samples with mixed tree species; Scheme 2, based on the study samples divided into dominant tree species groups; and Scheme 3, based on the study samples divided by dominant tree species groups—the evaluation factors are fitted by least-squares equations, and the non-significant fitted-factors are removed. Second, an overall evaluation indicator system with 17 factors was established. Third, remote sensing images of Landsat Thematic Mapper, digital elevation model, and the inventory for forest management planning and design were integrated in the same database. Lastly, a backpropagation neural network based on the Levenberg–Marquardt algorithm was used to predict the forest growing stock. The results showed that the group estimation precision exceeded 90%, which is the highest standard of total sampling precision of inventory for forest management planning and design in China. The prediction results for distinguishing dominant tree species were better than for mixed dominant tree species. The results also showed that the performance metrics for prediction could be improved by least-squares equation fitting and significance filtering of the evaluation factors.

Highlights

  • To promote the management and long-term development of forest resources, managers and researchers need to retain the latest information about forest resources and track the spatial changes of forest landscapes [1]

  • The prediction results indicated that the performance metrics for distinguishing dominant tree species were better than for determining mixed dominant tree species, which is similar to most research results [40,41]

  • The total performance metrics indicate that all group absolute percentage error (GAPE) values were lower than 5%, meaning the overall accuracies were over 95%, which exceed the highest standard of total sampling precision (90%) of inventory for forest management planning and design in China

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Summary

Introduction

To promote the management and long-term development of forest resources, managers and researchers need to retain the latest information about forest resources and track the spatial changes of forest landscapes [1]. Traditional ground surveys effectively provide objective and reliable information for monitoring and managing forest resources [2,3]. Traditional ground-based field measurements are expensive, time-consuming, labor-intensive, and hard to implement, in mountainous and forest areas. This lay a burden on forest management personnel and researchers [4,5]. In China, two main types of surveys of large-area forest resources are available: national forest inventory (NFI), which is repeated every five years, and inventory for forest management planning

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