Department of Computer Science, College of Computer Science and Information Sciences, AL-Majmaah 11952, Saudi Arabia.
Geographic Information Systems, NIIT University, Neemrana 301705, Rajasthan, India.
Sensors (Basel). 2021 Nov 8;21(21):7416. doi: 10.3390/s21217416.
Studies relating to trends of vegetation, snowfall and temperature in the north-western Himalayan region of India are generally focused on specific areas. Therefore, a proper understanding of regional changes in climate parameters over large time periods is generally absent, which increases the complexity of making appropriate conclusions related to climate change-induced effects in the Himalayan region. This study provides a broad overview of changes in patterns of vegetation, snow covers and temperature in Uttarakhand state of India through bulk processing of remotely sensed Moderate Resolution Imaging Spectroradiometer (MODIS) data, meteorological records and simulated global climate data. Additionally, regression using machine learning algorithms such as Support Vectors and Long Short-term Memory (LSTM) network is carried out to check the possibility of predicting these environmental variables. Results from 17 years of data show an increasing trend of snow-covered areas during pre-monsoon and decreasing vegetation covers during monsoon since 2001. Solar radiation and cloud cover largely control the lapse rate variations. Mean MODIS-derived land surface temperature (LST) observations are in close agreement with global climate data. Future studies focused on climate trends and environmental parameters in Uttarakhand could fairly rely upon the remotely sensed measurements and simulated climate data for the region.
关于印度喜马拉雅山西北部地区植被、降雪和温度趋势的研究通常集中在特定地区。因此,通常缺乏对大时间跨度内区域气候参数变化的正确理解,这增加了在喜马拉雅地区做出与气候变化相关影响相关结论的复杂性。本研究通过对中分辨率成像光谱仪 (MODIS) 数据、气象记录和模拟的全球气候数据的大量处理,提供了印度北阿坎德邦植被、积雪和温度模式变化的广泛概述。此外,还使用支持向量机和长短期记忆 (LSTM) 网络等机器学习算法进行回归,以检查预测这些环境变量的可能性。17 年数据的结果表明,自 2001 年以来,前季风期的积雪面积呈增加趋势,季风期的植被覆盖面积呈减少趋势。太阳辐射和云量在很大程度上控制着气温垂直递减率的变化。MODIS 衍生的平均地表温度 (LST) 观测值与全球气候数据非常吻合。未来对北阿坎德邦气候趋势和环境参数的研究可以依靠该地区的遥感测量和模拟气候数据。