Hybrid optimized deep recurrent neural network for atmospheric and oceanic parameters prediction by feature fusion and data augmentation model

IF 0.9 4区 数学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Combinatorial Optimization Pub Date : 2024-04-27 DOI:10.1007/s10878-024-01159-1
Sundeep Raj, Sandesh Tripathi, K. C. Tripathi, Rajendra Kumar Bharti
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Abstract

In recent years climate prediction has obtained more attention to mitigate the impact of natural disasters caused by climatic variability. Efficient and effective climate prediction helps palliate negative consequences and allows favourable conditions for managing the resources optimally through proper planning. Due to the environmental, geopolitical and economic consequences, forecasting of atmospheric and oceanic parameters still results in a challenging task. An efficient prediction technique named Sea Lion Autoregressive Deer Hunting Optimization-based Deep Recurrent Neural Network (SLArDHO-based Deep RNN) is developed in this research to predict the oceanic and atmospheric parameters. The extraction of technical indicators makes the devised method create optimal and accurate prediction outcomes by employing the deep learning framework. The classifier uses more training samples and this can be generated by augmenting the data samples using the oversampling method. The atmospheric and the oceanic parameters are considered for the prediction strategy using the Deep RNN classifier. Here, the weights of the Deep RNN classifier are optimally tuned by the SLArDHO algorithm to find the best value based on the fitness function. The devised method obtains minimum mean squared error (MSE), root mean square error (RMSE), mean absolute error (MAE) of 0.020, 0.142, and 0.029 for the All India Rainfall Index (AIRI) dataset.

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通过特征融合和数据增强模型预测大气和海洋参数的混合优化深度递归神经网络
近年来,气候预测受到越来越多的关注,以减轻气候多变性造成的自然灾害的影响。高效和有效的气候预测有助于减轻负面影响,并为通过适当规划优化资源管理创造有利条件。由于环境、地缘政治和经济后果,大气和海洋参数的预测仍然是一项具有挑战性的任务。本研究开发了一种名为基于海狮自回归猎鹿优化的深度循环神经网络(SLArDHO-based Deep RNN)的高效预测技术,用于预测海洋和大气参数。技术指标的提取使得所设计的方法通过采用深度学习框架创造出最佳和准确的预测结果。分类器使用更多的训练样本,这可以通过使用超采样方法增加数据样本来生成。使用深度 RNN 分类器的预测策略考虑了大气和海洋参数。在这里,深度 RNN 分类器的权重通过 SLArDHO 算法进行优化调整,以根据适配函数找到最佳值。对于全印度降雨指数(AIRI)数据集,所设计的方法获得了最小均方误差(MSE)、均方根误差(RMSE)和平均绝对误差(MAE),分别为 0.020、0.142 和 0.029。
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来源期刊
Journal of Combinatorial Optimization
Journal of Combinatorial Optimization 数学-计算机:跨学科应用
CiteScore
2.00
自引率
10.00%
发文量
83
审稿时长
6 months
期刊介绍: The objective of Journal of Combinatorial Optimization is to advance and promote the theory and applications of combinatorial optimization, which is an area of research at the intersection of applied mathematics, computer science, and operations research and which overlaps with many other areas such as computation complexity, computational biology, VLSI design, communication networks, and management science. It includes complexity analysis and algorithm design for combinatorial optimization problems, numerical experiments and problem discovery with applications in science and engineering. The Journal of Combinatorial Optimization publishes refereed papers dealing with all theoretical, computational and applied aspects of combinatorial optimization. It also publishes reviews of appropriate books and special issues of journals.
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