ARTÍCULO
TITULO

Neural-Network Time-Series Analysis of MODIS EVI for Post-Fire Vegetation Regrowth

Christos Vasilakos    
George E. Tsekouras    
Palaiologos Palaiologou and Kostas Kalabokidis    

Resumen

No disponible

 Artículos similares

       
 
Songtao Huang, Jun Shen, Qingquan Lv, Qingguo Zhou and Binbin Yong    
Electricity load forecasting has seen increasing importance recently, especially with the effectiveness of deep learning methods growing. Improving the accuracy of electricity load forecasting is vital for public resources management departments. Traditi... ver más
Revista: Future Internet

 
Edgar Acuna, Roxana Aparicio and Velcy Palomino    
In this paper we investigate the effect of two preprocessing techniques, data imputation and smoothing, in the prediction of blood glucose level in type 1 diabetes patients, using a novel deep learning model called Transformer. We train three models: XGB... ver más

 
Guowei Hua, Shijie Wang, Meng Xiao and Shaohua Hu    
Dam safety is considerably affected by seepage, and uplift pressure is a key indicator of dam seepage. Thus, making accurate predictions of uplift pressure trends can improve dam hazard forecasting. In this study, a convolutional neural network, (CNN)-ga... ver más
Revista: Water

 
Biagio Saya and Carla Faraci    
In the hydraulic construction field, approximated formulations have been widely used for calculating tank volumes. Identifying the proper water reservoir volumes is of crucial importance in order to not only satisfy water demand but also to avoid unneces... ver más
Revista: Water

 
Li He, Shasha Ji, Kunlun Xin, Zewei Chen, Lei Chen, Jun Nan and Chenxi Song    
Hydraulic monitoring data is critical for optimizing drainage system design and predicting system performance, particularly in the establishment of data-driven hydraulic models. However, anomalies in monitoring data, caused by sensor failures and network... ver más
Revista: Water