探索机器学习算法在土地退化检测中的应用的综合调查

Q3 Social Sciences
Gangamma Hediyalad, K. Ashoka, Govardhan Hegade, Pratibha Ganapati Gaonkar, Azizkhan F Pathan, Pratibhaa R Malagatti
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引用次数: 0

摘要

及早可靠地检测土地退化有助于决策者在更脆弱的地区采取严格的行动,制定强有力的规章制度,以实现可持续的土地管理和保护。检测土地退化的目的是利用机器学习技术识别不同地理位置的荒漠化进程,这在全球领域一直是一个具有挑战性的问题。鉴于土地退化检测的重要性,本文对使用机器学习算法检测土地退化进行了详尽的综述。文章首先介绍了印度的土地退化现状,并简要讨论了广泛使用的因素、评估参数和算法概述。随后,介绍了与基于机器学习的土地退化识别相关的优缺点。此外,还提出了一些解决方案,以减少土地退化检测中存在的问题。由于主要目标之一是探索基于机器学习的土地退化检测的未来前景,因此广泛讨论了包括遥感应用、制图、最佳特征和算法等领域。最后,在对现有相关研究进行严格评估的基础上,提出了基于机器学习的荒漠化流程架构。这项技术可以解决土地退化检测中的研究难题和土地退化检测模型开发中的计算困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive survey exploring the application of machine learning algorithms in the detection of land degradation
Early and reliable detection of land degradation helps policymakers to take strict action in more vulnerable areas by making strong rules and regulations in order to achieve sustainable land management and conservation. The detection of land degradation is carried out to identify desertification processes using machine learning techniques in different geographical locations, which are always a challenging issue in the global field. Due to the significance of the detection of land degradation, this article provides an exhaustive review of the detection of land degradation using machine learning algorithms. Initially, the current status of land degradation in India is presented, along with a brief discussion on the overview of widely used factors, evaluation parameters, and algorithms used. Consequently, merits and demerits related to machine learning-based land degradation identification are presented. Additionally, solutions are prescribed in order to reduce existing problems in the detection of land degradation. Since one of the major objectives is to explore the future perspectives of machine learning-based land degradation detection, areas including the application of remote sensing, mapping, optimum features, and algorithms have been broadly discussed. Finally, based on a critical evaluation of existing related studies, the architecture of the machine learning-based desertification process has been proposed. This technology can fulfill the research challenges in the detection of land degradation and computation difficulties in the development of models for the detection of land degradation.
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来源期刊
Journal of Degraded and Mining Lands Management
Journal of Degraded and Mining Lands Management Environmental Science-Nature and Landscape Conservation
CiteScore
1.50
自引率
0.00%
发文量
81
审稿时长
4 weeks
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