Implementation of stack-based ensemble technique for classification of glaciers in the western Himalayan catchments

IF 3 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Physics and Chemistry of the Earth Pub Date : 2024-09-05 DOI:10.1016/j.pce.2024.103723
Vikrant Shishodia , Vishal Singh , Santosh Gopalkrishnan Thampi
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Abstract

Human activities and climate change are causing Himalayan glaciers to melt erratically and affect runoff patterns, highlighting the need to monitor this vital resource. Imaging debris-covered glaciers is difficult because of the spectral similarity with non-glacier areas within various bands. This study assessed changes in the glacial area with regard to the year 1989 and mapped the area of glaciers in the Satluj River watershed from 2015 to 2019.The entire band range of Landsat imageries (1989–2019) was used to create glacial maps of each year, including glacier classes namely clean ice glaciers (CI), debris glaciers (DG), dirty ice + debris mix (DI + DM), glaciers and periglacial debris (PD), water, and rocks. The layers developed using traditional indices such as the NDSI, NDGI and unsupervised classification methods like K-means and Isodata. AI-powered technologies streamlined the process of mapping glacier borders and accurately assessed changes in glacial area. This work employs traditional machine learning techniques such as Random Forest (RF), Logistic Regression (LR), Support Vector Machine (SVM), Multi-layer Perceptron (MLP), and XGBoost (XGB), as well as a stack-based ensemble hybrid model. The six categorization systems' glacier class areas varied greatly, with accuracy ranging from 72.74% to 94.09%. The stack-based ensemble technique outperformed the other classification algorithms in this investigation. The transition from clean ice to dirty ice and eventually to a debris-covered glacier can also be observed in the basin. Overall, about 40–50% change (reduction) in the glacier area has been noticed.
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在喜马拉雅山西部集水区冰川分类中采用基于堆栈的集合技术
人类活动和气候变化正在导致喜马拉雅冰川不规则融化并影响径流模式,这凸显了监测这一重要资源的必要性。由于碎屑覆盖的冰川在不同波段内与非冰川区域的光谱相似,因此很难对其进行成像。这项研究评估了 1989 年以来冰川面积的变化,并绘制了 Satluj 河流域 2015 年至 2019 年的冰川面积图。研究人员利用 Landsat 成像的整个波段范围(1989-2019 年)绘制了每年的冰川图,包括冰川类别,即清洁冰川(CI)、碎屑冰川(DG)、脏冰+碎屑混合冰川(DI + DM)、冰川和冰川周围碎屑(PD)、水和岩石。这些图层是利用传统指数(如 NDSI、NDGI)以及无监督分类方法(如 K-means 和 Isodata)开发的。人工智能技术简化了绘制冰川边界的过程,并准确评估了冰川面积的变化。这项工作采用了随机森林(RF)、逻辑回归(LR)、支持向量机(SVM)、多层感知器(MLP)和 XGBoost(XGB)等传统机器学习技术,以及基于堆栈的集合混合模型。这六种分类系统的冰川分类面积差异很大,准确率从 72.74% 到 94.09% 不等。在本次调查中,基于堆栈的集合技术优于其他分类算法。在盆地中还可以观察到从清洁冰到脏冰,最终到碎屑覆盖冰川的过渡。总体而言,冰川面积发生了约 40-50% 的变化(减少)。
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来源期刊
Physics and Chemistry of the Earth
Physics and Chemistry of the Earth 地学-地球科学综合
CiteScore
5.40
自引率
2.70%
发文量
176
审稿时长
31.6 weeks
期刊介绍: Physics and Chemistry of the Earth is an international interdisciplinary journal for the rapid publication of collections of refereed communications in separate thematic issues, either stemming from scientific meetings, or, especially compiled for the occasion. There is no restriction on the length of articles published in the journal. Physics and Chemistry of the Earth incorporates the separate Parts A, B and C which existed until the end of 2001. Please note: the Editors are unable to consider submissions that are not invited or linked to a thematic issue. Please do not submit unsolicited papers. The journal covers the following subject areas: -Solid Earth and Geodesy: (geology, geochemistry, tectonophysics, seismology, volcanology, palaeomagnetism and rock magnetism, electromagnetism and potential fields, marine and environmental geosciences as well as geodesy). -Hydrology, Oceans and Atmosphere: (hydrology and water resources research, engineering and management, oceanography and oceanic chemistry, shelf, sea, lake and river sciences, meteorology and atmospheric sciences incl. chemistry as well as climatology and glaciology). -Solar-Terrestrial and Planetary Science: (solar, heliospheric and solar-planetary sciences, geology, geophysics and atmospheric sciences of planets, satellites and small bodies as well as cosmochemistry and exobiology).
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