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Large-Scale, Multi-Temporal Remote Sensing of Palaeo-River Networks: A Case Study from Northwest India and its Implications for the Indus Civilisation

机译:古河网的大规模,多时相遥感:一个来自印度西北部的案例研究及其对印度文明的启示

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Remote sensing has considerable potential to contribute to the identification and reconstruction of lost hydrological systems and networks. Remote sensing-based reconstructions of palaeo-river networks have commonly employed single or limited time-span imagery, which limits their capacity to identify features in complex and varied landscape contexts. This paper presents a seasonal multi-temporal approach to the detection of palaeo-rivers over large areas based on long-term vegetation dynamics and spectral decomposition techniques. Twenty-eight years of Landsat 5 data, a total of 1711 multi-spectral images, have been bulk processed using Google Earth Engine ? Code Editor and cloud computing infrastructure. The use of multi-temporal data has allowed us to overcome seasonal cultivation patterns and long-term visibility issues related to recent crop selection, extensive irrigation and land-use patterns. The application of this approach on the Sutlej-Yamuna interfluve (northwest India), a core area for the Bronze Age Indus Civilisation, has enabled the reconstruction of an unsuspectedly complex palaeo-river network comprising more than 8000 km of palaeo-channels. It has also enabled the definition of the morphology of these relict courses, which provides insights into the environmental conditions in which they operated. These new data will contribute to a better understanding of the settlement distribution and environmental settings in which this, often considered riverine, civilisation operated.
机译:遥感具有巨大的潜力,有助于识别和重建丢失的水文系统和网络。基于遥感的古河网重建通常使用单一或有限的时间跨度图像,这限制了它们在复杂多变的景观环境中识别特征的能力。本文提出了一种基于长期植被动态和光谱分解技术的季节性多时相方法来探测大面积古河。使用Google Earth Engine批量处理了28年的Landsat 5数据,总共1711张多光谱图像。代码编辑器和云计算基础架构。多时相数据的使用使我们能够克服季节性耕作模式以及与近期作物选择,大量灌溉和土地利用模式有关的长期可见性问题。这种方法在印度西北部青铜时代文明的核心地区Sutlej-Yamuna interfluve(印度西北部)上的应用,使人们得以重建一个意想不到的复杂古河网,该网络包括8000多公里的古河道。它还使这些遗迹路线的形态得以定义,从而提供了对其运行环境条件的见识。这些新数据将有助于更好地了解定居点分布和环境设置,在这些定居点和环境设置中,人们通常将其视为河流文明。

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