用于预测印度季风降雨的 CNN 双向 LSTM 框架

Rajaprasad Svs, Rambabu Mukkamala
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引用次数: 0

摘要

由于降雨预测的复杂性以及水资源规划和管理等方面的持续需求,降雨预测近来已发展成为一项具有重要意义的研究。农业是印度的主要就业来源,也是国内生产总值的主要贡献者,而作物产量则取决于季风季节。降雨预测有助于有关部门进行蓄水和及时放水,以提高作物产量。本研究提出了一种基于深度神经网络(DNN)的混合模型,使用卷积神经网络双向长短期记忆(CNN BiLSTM)组合来预测季风季节的月降雨量。DNN 模型用于分析从 1871 年到 2019 年季风季节在全国收集的月平均降雨量数据。此外,还将混合模型的结果与双向 LSTM(BiLSTM)架构进行了比较。在预测印度降雨量时,发现所提出的混合模型框架比 BiLSTM 更准确。研究结果表明,在水资源管理和相关领域的时间序列分析中,可以成功采用 DNN 框架,以降低相关风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A CNN Bidirectional LSTM framework for predicting monsoon rainfall in India
Rainfall prediction has evolved as a paramount research significance in recent times due to its complexities and ongoing demand such as water resource planning and management. Agriculture is a major source of employment in India, as well as a substantial contributor to gross domestic product, and crop output is dependent on the monsoon season. Rainfall prediction is useful to authorities for water storage and timely release to increase crop productivity. The current study proposes a Deep Neural Network (DNN) based hybrid model using a combination of convolutional neural network bi-directional long short-term memory (CNN BiLSTM) to predict monthly rain fall during monsoon seasons. The DNN models were used to analyze the average monthly rainfall data collected across the country from 1871 to 2019 during the monsoon seasons. Furthermore, the hybrid model's results were compared to the Bidirectional LSTM (BiLSTM) architecture. In predicting rainfall in India, the proposed hybrid model framework has been found to be more accurate than the BiLSTM. The findings of the study suggest that a DNN frame work can be successfully adopted for time series analysis in water resource management and related domains to reduce the associated risks.
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