Department of Geography, San Diego State University, San Diego, CA, USA.
Department of Geography, University of California, Santa Barbara, CA, USA.
Environ Monit Assess. 2019 Apr 16;191(5):281. doi: 10.1007/s10661-019-7450-z.
Rapid population and economic growth quickly degrade and deplete forest resources in many developing countries, even within protected areas. Monitoring forest cover change is critical for assessing ecosystem changes and targeting conservation efforts. Yet the most biodiverse forests on the planet are also the most difficult to monitor remotely due to their frequent cloud cover. To begin to reconcile this problem, we develop and implement an effective and efficient approach to mapping forest loss in the extremely cloud-prevalent southern Ghana region using dense time series Landsat 7 and 8 images from 1999 to 2018, based on median value temporal compositing of a novel vegetation index called the spectral variability vegetation index (SVVI). Resultant land-cover and land-use maps yielded 90 to 94% mapping accuracies. Our results indicate 625 km of forest loss within the 9800-km total mapping area, including within forest reserves and their environs between circa 2003 and 2018. Within the reserves, reduced forest cover is found near the reserve boundaries compared with their interiors, suggesting a more degraded environment near the edge of the protected areas. A fully protected reserve, Kakum National Park, showed little forest cover change compared with many other less protected reserves (such as a production reserve-Subri River). Anthropogenic activities, such as mining, agriculture, and built area expansion, were the main land-use transitions from forest. The reserves and census districts that are located near large-scale open pit mining indicated the most drastic forest loss. No significant correlation was found between the magnitudes of forest cover change and population density change for reserves and within a 1.5-km buffer surrounding the reserves. While other anthropogenic factors should be explored in relation to deforestation, our qualitative analysis revealed that reserve protection status (management policies) appears to be an important factor. The mapping approach described in this study provided a highly accurate and effective means to monitor land-use changes in forested and cloud-prone regions with great promise for application to improved monitoring of moist tropical and other forests characterized by high cloud cover.
快速的人口增长和经济增长在许多发展中国家迅速破坏和耗尽森林资源,即使在保护区内也是如此。监测森林覆盖变化对于评估生态系统变化和有针对性地开展保护工作至关重要。然而,地球上生物多样性最丰富的森林也是最难进行远程监测的,因为它们经常被云层覆盖。为了解决这个问题,我们开发并实施了一种有效而高效的方法,利用 1999 年至 2018 年密集的时间序列 Landsat 7 和 8 图像,在极其多云的加纳南部地区绘制森林损失图,该方法基于新型植被指数光谱可变性植被指数 (SVVI) 的中值时间合成。生成的土地覆盖和土地利用图的制图精度为 90%至 94%。我们的结果表明,在 9800 公里的总测绘区域内,有 625 公里的森林损失,包括 2003 年至 2018 年期间森林保护区及其周边地区的森林损失。在保护区内,与保护区内部相比,靠近保护区边界的森林覆盖减少,这表明保护区边缘的环境恶化程度更高。与许多其他保护程度较低的保护区(如生产保护区-Subri 河)相比,完全受保护的 Kakum 国家公园的森林覆盖变化较小。采矿、农业和建设用地扩张等人为活动是森林向其他土地利用类型转变的主要原因。位于大型露天采矿附近的保护区和普查区显示出最急剧的森林损失。保护区内和保护区周围 1.5 公里缓冲区的森林覆盖变化幅度与人口密度变化之间没有显著相关性。虽然应该探讨与森林砍伐有关的其他人为因素,但我们的定性分析表明,保护区的保护状况(管理政策)似乎是一个重要因素。本研究中描述的测绘方法为监测森林覆盖和多云地区的土地利用变化提供了一种高度准确和有效的手段,对于改进对高云覆盖的湿润热带和其他森林的监测具有很大的应用前景。