Department of Civil and Construction Engineering, Swinburne University of Technology, Hawthorn, Melbourne, VIC, 3122, Australia.
Department of Civil Engineering, College of Engineering, Universiti Tenaga Nasional (UNITEN), 43000, Selangor, Malaysia.
Sci Rep. 2022 Jul 30;12(1):13132. doi: 10.1038/s41598-022-17263-3.
Evaporation is the primary aspect causing water loss in the hydrological cycle; therefore, water loss must be precisely measured. Evaporation is an intricate nonlinear process occurring as a result of several climatic aspects. The purpose of this research is to assess the feasibility of using Random Forest (RF) and two deep learning techniques, namely convolutional neural network (CNN), and deep neural network (DNN) to accurately estimate monthly pan evaporation rates. Month-based weather data gathered from four Malaysian weather stations during the 2000-2019 timeframe was used to train and evaluate the models. Several input attributes (predictor variables) were investigated to select the most suitable variables for machine learning models. Every approach was tested with several models, each with a different set of model aspects and input parameter combinations. The formulated ML approaches were benchmarked against two commonly used empirical methods: Stephens & Stewart and Thornthwaite. Model outcomes were assessed using standard statistical measures to determine their effectiveness in predicting evaporation. The results indicated that the three ML models developed in the study performed better than empirical models and could significantly improve the precision of monthly Ep estimates even with the identical input sets. The performance assessment metrics also show that the formulated CNN approach was acceptable for modelling monthly water loss due to evaporation with a higher degree of accuracy than other ML frameworks explored in this study. In addition, the CNN framework outperformed other AI techniques evaluated for the same areas using identical data inputs. The investigation's findings in relation to the various performance criteria show that the proposed CNN model is capable of capturing the highly non-linearity of evaporation and could be regarded as an effective tool to predict evaporation.
蒸发是水文循环中导致水分损失的主要因素;因此,必须精确测量水分损失。蒸发是一个复杂的非线性过程,是由几个气候因素共同作用的结果。本研究旨在评估随机森林(RF)和两种深度学习技术,即卷积神经网络(CNN)和深度神经网络(DNN),用于准确估计月蒸发皿蒸发率的可行性。使用 2000-2019 年期间从马来西亚四个气象站收集的基于月份的天气数据来训练和评估模型。研究了几个输入属性(预测变量),以选择最适合机器学习模型的变量。每种方法都使用多个模型进行了测试,每个模型都有不同的模型方面和输入参数组合。所制定的 ML 方法与两种常用的经验方法(Stephens & Stewart 和 Thornthwaite)进行了基准测试。使用标准统计措施评估模型结果,以确定它们在预测蒸发方面的有效性。结果表明,本研究中开发的三种 ML 模型的性能优于经验模型,即使使用相同的输入集,也可以显著提高月 Ep 估计的精度。性能评估指标还表明,所提出的 CNN 方法适合对由于蒸发导致的月水量损失进行建模,其准确性高于本研究中探索的其他 ML 框架。此外,CNN 框架在使用相同数据输入评估相同区域的其他 AI 技术方面表现出色。与各种性能标准相关的研究结果表明,所提出的 CNN 模型能够捕捉蒸发的高度非线性,可以被视为预测蒸发的有效工具。