School of Computing, SASTRA Deemed University, Thanjavur, India, 613401.
School of Electrical & Electronics Engineering, SASTRA Deemed University, Thanjavur, India, 613401.
Environ Monit Assess. 2024 Sep 2;196(10):875. doi: 10.1007/s10661-024-13063-6.
Drought is an extended shortage of rainfall resulting in water scarcity and affecting a region's social and economic conditions through environmental deterioration. Its adverse environmental effects can be minimised by timely prediction. Drought detection uses only ground observation stations, but satellite-based supervision scans huge land mass stretches and offers highly effective monitoring. This paper puts forward a novel drought monitoring system using satellite imagery by considering the effects of droughts that devastated agriculture in Thanjavur district, Tamil Nadu, between 2000 and 2022. The proposed method uses Holt Winter Conventional 2D-Long Short-Term Memory (HW-Conv2DLSTM) to forecast meteorological and agricultural droughts. It employs Climate Hazards Group InfraRed Precipitation with Station (CHIRPS) data precipitation index datasets, MODIS 11A1 temperature index, and MODIS 13Q1 vegetation index. It extracts the time series data from satellite images using trend and seasonal patterns and smoothens them using Holt Winter alpha, beta, and gamma parameters. Finally, an effective drought prediction procedure is developed using Conv2D-LSTM to calculate the spatiotemporal correlation amongst drought indices. The HW-Conv2DLSTM offers a better R value of 0.97. It holds promise as an effective computer-assisted strategy to predict droughts and maintain agricultural productivity, which is vital to feed the ever-increasing human population.
干旱是指降雨量长期短缺,导致水资源短缺,并通过环境恶化影响到一个地区的社会和经济条件。通过及时预测,可以将其不利的环境影响降到最低。干旱检测仅使用地面观测站,但基于卫星的监测可以扫描广阔的陆地延伸,并提供高效的监测。本文提出了一种利用卫星图像的新型干旱监测系统,考虑了 2000 年至 2022 年间泰米尔纳德邦坦贾武尔地区农业遭受干旱破坏的影响。所提出的方法使用 Holt Winter 传统二维长短期记忆 (HW-Conv2DLSTM) 来预测气象和农业干旱。它采用气候危害组红外降水与站 (CHIRPS) 数据降水指数数据集、MODIS 11A1 温度指数和 MODIS 13Q1 植被指数。它使用趋势和季节性模式从卫星图像中提取时间序列数据,并使用 Holt Winter alpha、beta 和 gamma 参数对其进行平滑处理。最后,使用 Conv2D-LSTM 开发了一种有效的干旱预测程序,以计算干旱指数之间的时空相关性。HW-Conv2DLSTM 的 R 值为 0.97,表现更好。它有望成为一种有效的计算机辅助策略,用于预测干旱并维持农业生产力,这对于养活不断增长的人口至关重要。