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QPred:A Lightweight Deep Learning-Based Web Pipeline for Accessible and Scalable Streamflow Forecasting
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作者 Randika K.Makumbura Hasanthi Wijesundara +4 位作者 Hirushan Sajindra Upaka Rathnayake Vikram Kumar Dineshbabu Duraibabu Sumit Sen 《Computers, Materials & Continua》 2026年第5期1082-1100,共19页
Accurate streamflow prediction is essential for flood warning,reservoir operation,irrigation scheduling,hydropower planning,and sustainable water management,yet remains challenging due to the complexity of hydrologica... Accurate streamflow prediction is essential for flood warning,reservoir operation,irrigation scheduling,hydropower planning,and sustainable water management,yet remains challenging due to the complexity of hydrological processes.Although data-driven models often outperform conventional physics-based hydrological modelling approaches,their real-world deployment is limited by cost,infrastructure demands,and the interdisciplinary expertise required.To bridge this gap,this study developed QPred,a regional,lightweight,cost-effective,web-delivered application for daily streamflow forecasting.The study executed an end-to-end workflow,from field data acquisition to accessible web-based deployment for on-demand forecasting.High-resolution rainfall data were recorded with tippingbucket gauges and loggers,while river water depth in the Aglar and Paligaad watersheds was converted to discharge using site-specific rating curves,resulting in a daily dataset of precipitation,river water level and discharge.Four DL architectures were trained,including vanilla Long Short-Term Memory(LSTM),stacked LSTM,bidirectional LSTM,and Gated Recurrent Unit(GRU),and evaluated using Nash-Sutcliffe Efficiency(NSE),Coefficient of Determination(R2),Root-Mean-Square-Error-Standard-Deviation Ratio(RSR),and Percentage Bias(PBIAS)metrics.Performance was watershed-specific,as the vanilla LSTM demonstrated the best generalisation for the Aglar watershed(R2=0.88,NSE=0.82,RMSE=0.12 during validation),while the GRU achieved the highest validation accuracy in Paligaad(R2=0.88,NSE=0.88,RMSE=0.49).All models achieved satisfactory to excellent performance during calibration(R2>0.91,NSE>0.91 for both watersheds),demonstrating strong capability to capture streamflow dynamics.The highest performing models were selected and embedded into the QPred application.QPred was developed as a lightweight web pipeline,utilising Google Colab as the primary execution environment,Flask as the backend inference framework,Google Drive for artefact storage,andNgrok for secureHTTPS tunnelling.Auser-friendly front end utilises range sliders(bounded by observed minima and maxima)to gather inputs and provides discharge data along with metadata,thereby enhancing transparency.This work demonstrates that accurate,context-aware deep learningmodels can be delivered through low-cost,web-based platforms,providing a reproducible and scalable pipeline for hydrological applications in other watersheds and for practitioners. 展开更多
关键词 Deep learning GRU LSTM ngrok sreamflow prediction web-based application
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基于树莓派的独居老人远程智能监控报警系统 被引量:7
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作者 魏镳骅 陈旭 +2 位作者 张皓翔 杨健君 李冬翠 《电子世界》 2017年第8期20-22,共3页
系统运行于微型电脑树莓派上,使用Linux操作系统,配置Open CV计算机视觉库,外接摄像头。通过图像处理技术进行跌倒行为判定,通过自动截取一帧危险图片传输至指定监护人邮箱的方式进行报警提示,通过登录服务器生成的网址来查看监控下的... 系统运行于微型电脑树莓派上,使用Linux操作系统,配置Open CV计算机视觉库,外接摄像头。通过图像处理技术进行跌倒行为判定,通过自动截取一帧危险图片传输至指定监护人邮箱的方式进行报警提示,通过登录服务器生成的网址来查看监控下的实时视频,实现一个可判别室内独居老人跌倒并智能报警的远程监控系统。 展开更多
关键词 树莓派 OPENCV 混合高斯背景建模 Mjpg-streamer ngrok
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