基于深度学习方法的高效降雨预测模型

Vishal Kumar Verma, Hima Sagar Janagama, Nagamma Patil
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引用次数: 0

摘要

降雨是地球自然循环的一个重要方面,是农业、供水和水力发电等各种活动所必需的。然而,降雨过多会导致洪水、山体滑坡和其他破坏性后果,而降雨不足则会导致干旱和缺水。因此,准确估计降雨量对于管理和减轻降雨的影响至关重要。在本研究中,数据集收集自NASA Power数据库[22],用于预测印度卡纳塔克邦芒格洛尔的年降雨量。数据收集于2003年1月1日至2023年2月4日,使用NASA POWER API。该研究使用了MLP[15]、LSTM、BiLSTM、CNN四个模型来预测对年降雨量有贡献的日平均降水量。用于预报的输入参数为月最高气温、月最低气温、月最低湿度、月气压和月风速[9]。在训练和测试比例为80:20的情况下,使用预测值的均方误差(MSE)和平均绝对误差(MAE)来衡量模型的性能。CNN(卷积神经网络)模型表现优异,给出了CNN(卷积神经网络)模型的MSE和MAE分别为0.0041和0.0456。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Rainfall Prediction Model Using Deep Learning Method
Rainfall is a crucial aspect of the Earth's natural cycle and it is necessary for various activities such as agriculture, water supply and hydroelectric power generation. However excessive rainfall can lead to floods, landslides and other destructive consequences, while insufficient rainfall can cause droughts and water shortages. Therefore accurate estimation of rainfall is essential to manage and mitigate the impacts of rainfall. In this study, the dataset is collected from the NASA Power database [22] to predict the annual rainfall in Mangalore(Karnataka), India. The data is collected from January 1, 2003 to February 04, 2023 using NASA POWER API. The study used four models MLP[15], LSTM, BiLSTM, CNN to predict the daily average precipitation that contributes to the annual rainfall. The input parameters considered for the prediction are maximum monthly temperature, minimum monthly temperature, humidity, atmospheric pressure and wind speed[9]. The model's performance is measured using mean squared error (MSE) and mean absolute error (MAE) of the predicted values on training and testing ratio 80:20. CNN(Convolutional Neural Network) model outperforms and gives the MSE and MAE for the CNN(Convolutional Neural Network) model are 0.0041 and 0.0456 respectively.
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