Machine Learning Models for Estimating Actual Transpiration with Limited Data

سال انتشار: 1401
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 54

فایل این مقاله در 19 صفحه با فرمت PDF قابل دریافت می باشد

استخراج به نرم افزارهای پژوهشی:

لینک ثابت به این مقاله:

شناسه ملی سند علمی:

JR_SUER-2-3_006

تاریخ نمایه سازی: 9 آبان 1402

چکیده مقاله:

The present study compared various empirical and data-driven algorithms to predict Actual Evapotranspiration (AET) using various hydro climatic variables. The AET over semi-arid climatic conditions of Hyderabad, Telangana, India, and Waipara (New Zealand) was estimated using different empirical methods-based PET using Budyko and Turc models. Modelled PET from five data-driven algorithms, such as Long short-term memory neural networks (LSTM), Artificial Neural Network (ANN), Gradient Boosting Regressor, Random Forest, and Support Vector Regression were trained to predict AET using meteorological variables. The results show simple empirical-based AET models, Budyko and Turc, can estimate AET very well. The results indicated that ۹۹% accuracy could be achieved with all climatic input, whereas accuracy drops to ۸۶% with limited data. Both LSTM and ANN models based on PET have been noted as the most robust models for estimating AET with minimal climate data. It was observed that the meteorological variables of temperature and solar radiation have more significant contributions than other variables in the estimation of AET. In addition, the effects of the meteorological variables were found to be essential and effective in the estimation of AET. The research findings of the study reveal that under limited data availability, the best input combinations were identified as temperature and wind speed for estimating PET; temperature, wind speed, and precipitation for estimating AET for semi-arid climatology.

کلیدواژه ها:

نویسندگان

Adeeba Ayaz

a Hydroclimatic Research Group, Lab for Spatial Informatics, International Institute of Information Technology Hyderabad (IIITH), India

Sharath Chandra Vannam

Hydroclimatic Research Group, Lab for Spatial Informatics, International Institute of Information Technology Hyderabad (IIITH), India

, Shailesh Kumar Singh

National Institute of Water and Atmospheric Research, Christchurch, New Zealand

Rehana Shaik

Hydroclimatic Research Group, Lab for Spatial Informatics, International Institute of Information Technology Hyderabad (IIITH), India