Abstract
Selective logging in the tropics is a major driver of forest degradation by altering forest structure and function, including significant losses of aboveground carbon. In this study, we used a 30-year Landsat time series (1985–2015) to analyze forest degradation and carbon emissions due to selective logging in a Forest Reserve of the Venezuelan Amazon. Our work was conducted in two phases: the first, by means of a direct method we detected the infrastructure related to logging at the sub-pixel level, and for the second, we used an indirect approach using buffer areas applied to the results of the selective logging mapping. Pre- and post-logging forest inventory data, combined with the mapping analysis were used to quantify the effects of logging on aboveground carbon emissions for three different sources: hauling, skidding and tree felling. With an overall precision of 0.943, we demonstrate the potential of this method to efficiently map selective logging and forest degradation with commission and omission errors of +7.6 ± 4.5 (Mean ± SD %) and −7.5% ± 9.1 respectively. Forest degradation due to logging directly affected close to 24,480 ha, or about ~1% of the total area of the Imataca Forest Reserve. On average, with a relatively low harvest intensity of 2.8 ± 1.2 trees ha−1 or 10.5 ± 4.6 m3 ha−1, selective logging was responsible for the emission of 61 ± 21.9 Mg C ha−1. Lack of reduced impact logging guidelines contributed to pervasive effects reflected in a mean reduction of ~35% of the aboveground carbon compared to unlogged stands. This research contributes to further improve our understanding of the relationships between selective logging and forest degradation in tropical managed forests and serves as input for the potential implementation of projects for reducing emissions from deforestation and forest degradation (REDD+).
Highlights
With a relatively high global precision (GP = 0.943) that is within the range recommended by the GOFC-GOLD [46] for the development of forest cover monitoring maps, and slightly higher than that reported in the Brazilian Amazon (0.92) [49], and a high determination coefficient (0.82) that shows a close fit between the model and real proportions of the logging classes [67,74,77], we believe this is a promising and powerful tool to study forest degradation in tropical countries with severe connectivity limitations as the case of Venezuela
Compared to other regions of the Amazon basin and the tropics in general, our research reveals that in the northeastern Venezuelan Amazon, while the overall harvesting intensity has remained low over long periods of time, the disturbances associated to logging were considerably high
Selective logging activities showed rather poor planning and low efficiency, reflected in the fact that, regardless of the metric used, carbon emissions were higher than most studies focusing on similar questions
Summary
More than 400 million hectares (ha) of natural tropical forests have been designated as production forests globally [1,2,3]. About 40% of sawn wood traded annually in tropical regions has an origin in natural forests [4], often under a “selective logging”. One of the main features of selective logging across the tropics has been the insufficient adoption of reduced impact methods with negative environmental effects on forest structure and function [7,8]. Forest degradation is a change process caused by anthropogenic and/or environmental forces that result in alterations within any given forest, negatively affecting the Remote Sens.
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.