基于一维卷积神经网络的改进PCA洪水预报

Tegil J. John, R. Nagaraj
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引用次数: 0

摘要

由于可用数据的复杂性,预测洪水一直是一项艰巨的任务。机器学习技术已被广泛用于根据降水、湿度、温度、水流速度和水位变量预测洪水。然而,大多数先前的研究都检查了每月的降雨强度,以确定发生洪水的可能性。因此,一个州的日降雨量和月降雨量被用于训练深度学习模型来预测洪水。此外,特征约简方法对于处理大维数据和提高分类精度至关重要。本文利用改进的主成分分析(i-PCA),一种线性无监督统计变换,作为特征约简过程。1D卷积神经网络(CNN)模型基于减少的特征来预测洪水。这些实验基于1901年至2021年喀拉拉邦的日降雨量和月降雨量数据集。定性分析使用精密度、准确度、召回率和F1分数参数进行。实验分析表明,该算法的准确率为94.24%,现有技术的准确率达到86%。原因是所提出的模型使用了改进的PCA来进行特征约简技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of floods using improved PCA with one-dimensional convolutional neural network

Forecasting floods have always been a difficult task due to the complexity of the available data. Machine learning techniques have been widely used to predict floods based on precipitation, humidity, temperature, water velocity, and level variables. However, most prior studies have examined the monthly rainfall intensity to determine the likelihood of flooding. As a result, a state's daily and monthly rainfall intensity has been used to train deep-learning models to predict floods. In addition, feature reduction approaches are critical for dealing with data of a large dimensionality and improving classification accuracy. This article utilizes improved Principal Component Analysis (i-PCA), a linear unsupervised statistical transformation, as a feature reduction procedure. A 1D-Convolutional Neural Network (CNN) model forecasts the flood based on the reduced features. The experiments are based on a dataset of daily and monthly rainfall data collected from 1901 to 2021 for Kerala state. Qualitative analysis is performed using precision, accuracy, recall and F1-score parameters. The experiment analysis proves that the proposed algorithm attained 94.24% accuracy, and existing techniques achieved 86% of accuracy performance. The reason is that the proposed model uses the improved PCA for the feature reduction technique.

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