Utilization of Remote Sensing Technology for Carbon Offset Identification in Malaysian Forests

H. Omar, Thirupathi Rao Narayanamoorthy, Norsheilla Mohd Johan Chuah, Nur Atikah Abu Bakar, M. A. Misman
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引用次数: 1

Abstract

Rapid growth of Malaysia’s economy recently is often associated with various environmental disturbances, which have been contributing to depletion of forest resources and thus climate change. The need for more spaces for numerous land developments has made the existing forests suffer from deforestation. This chapter presents an overview and demonstrates how remote sensing data is used to map and quantify changes of tropical forests in Malaysia. The analysis dealt with image processing that produce seamless mosaics of optical satellite data over Malaysia, within 15 years period, with 5-year intervals. The challenges were about the production of cloud-free images over a tropical country that always covered by clouds. These datasets were used to identify eligible areas for carbon offset in land use, land use change and forestry (LULUCF) sector in Malaysia. Altogether 580 scenes of Landsat imagery were processed to complete the observation period and came out with a seamless, wall to wall images over Malaysia from year 2005 to 2020. Forests have been identified from the image classification and then classified into three major types, which are dry-inland forest, peat swamp and mangroves. Post-classification change detection technique was used to determine areas that have been undergoing conversions from forests to other land uses. Forest areas were found to have declined from about 19.3 Mil. ha (in 2005) to 18.2 Mil. ha in year 2020. Causes of deforestation have been identified and the amount of carbon dioxide (CO2) that has been emitted due to the deforestation activity has been determined in this study. The total deforested area between years 2005 and 2020 was at 1,087,030 ha with rate of deforestation of about 72,469 ha yr.−1 (or 0.37% yr.−1). This has contributed to the total CO2 emission of 689.26 Mil. Mg CO2, with an annual rate of 45.95 Mil. Mg CO2 yr.−1. The study found that the use of a series satellite images from optical sensors are the most appropriate sensors to be used for monitoring of deforestation over the Malaysia region, although cloud covers are the major issue for optical imagery datasets.
利用遥感技术识别马来西亚森林的碳补偿
马来西亚经济最近的快速增长往往与各种环境干扰有关,这些干扰导致森林资源枯竭,从而导致气候变化。大量的土地开发需要更多的空间,这使得现有的森林遭受砍伐。本章概述并演示了如何使用遥感数据来绘制和量化马来西亚热带森林的变化。该分析涉及的图像处理可以在15年内以5年为间隔产生马来西亚光学卫星数据的无缝拼接。挑战是在一个总是被云覆盖的热带国家拍摄无云图像。这些数据集用于确定马来西亚土地利用、土地利用变化和林业(LULUCF)部门的碳抵消合格地区。在完成观测期间,共处理了580幅陆地卫星图像,并在2005年至2020年期间获得了马来西亚上空无缝的墙对墙图像。从图像分类中识别出森林,并将其分为内陆干林、泥炭沼泽和红树林三大类。使用分类后变化检测技术来确定正在从森林转变为其他土地用途的地区。森林面积从2005年的约1930万公顷减少到2020年的1820万公顷。在这项研究中,已经确定了森林砍伐的原因,并确定了由于森林砍伐活动而排放的二氧化碳(CO2)量。2005年至2020年的森林砍伐总面积为1,087,030公顷,森林砍伐率约为72,469公顷/年(或0.37% /年)。这导致二氧化碳总排放量为689.26 Mil. Mg CO2,年排放量为4595 Mil. Mg CO2 /年。该研究发现,使用来自光学传感器的一系列卫星图像是用于监测马来西亚地区森林砍伐的最合适的传感器,尽管云层覆盖是光学图像数据集的主要问题。
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