基于集成的GPS和气象观测综合水汽(IWV)预测模型

IF 1.2 Q4 REMOTE SENSING Journal of Applied Geodesy Pub Date : 2023-09-12 DOI:10.1515/jag-2023-0053
Nirmala Bai Jadala, Miriyala Sridhar, Devanaboyina Venkata Ratnam, Surya Narayana Murthy Tummala
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引用次数: 0

摘要

集成水蒸气(IWV)通过机器学习(ML)策略被广泛感知。在这次调查中,我们利用气象站的IWV时间序列来确定两个纬度的IWV振荡和模式,即VBIT,海德拉巴(印度)和PWVUO站,俄勒冈州(美国)。GPS导出的2014年IWV和气象数据,如压力(P)、温度(T)和相对湿度(RH)数据集,分别取自VBIT站和PWVUO站。使用了优化集成(OE)模型、有理二次高斯过程回归模型(RQ-GPR)、神经网络模型(NN)、三次支持向量机(CSVM)和二次支持向量机(QSVM)五种机器学习算法。GPS反演的IWV数据显示夏季风期变化最大,特别是在7月份。GPS-IWV与优化集成技术的相关分析表明,在两个不同的数据集上,VBIT站的相关系数为(ρ) = 99%, PWVUO站的相关系数为(ρ) = 88%。残差分析也表明,优化后的集合模型变化较小。VBIT站OE性能指标的平均绝对误差(MAE)为0.64 kg/ m2,平均绝对百分比误差(MAPE)为3.80%,均方根误差(RMSE)为0.94 kg/ m2, PWVUO站OE性能指标的MAE = 1.91 kg/ m2, MAPE = 11.76%, RMSE为1.97 kg/ m2。结果表明,与其他模型相比,OE方法表现出更好的性能。
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Ensemble based deep learning model for prediction of integrated water vapor (IWV) using GPS and meteorological observations
Abstract Integrated water vapor (IWV) has been widely perceived through machine learning (ML) strategies. During this investigation, we employed IWV time series from weather stations to determine the oscillations and patterns with IWV across two latitudes namely VBIT, Hyderabad (India) and PWVUO station, Oregon (US). The GPS derived IWV and meteorological data such as pressure ( P ), temperature ( T ) and relative humidity (RH) dataset for the year 2014 has been taken from VBIT station and from PWVUO station for 2020. Five machine learning algorithms namely Optimized Ensemble (OE) model, Rational Quadratic Gaussian Process Regression model (RQ-GPR), Neural Networks model (NN), Cubic Support Vector Machine (CSVM) and Quadratic Support Vector Machine (QSVM) algorithms are used. The GPS derived IWV data revealed the maximum variation during summer monsoon period specifically in the month of July. The correlation analysis between GPS-IWV and optimized ensemble technique showed the highest correlation for the VBIT station with correlation coefficient as ( ρ ) = 99 % and at PWVUO station as ( ρ ) = 88 % for two different datasets. The residual analysis has also showed less variation to the optimized ensemble model. The performance metrics obtained for OE at VBIT station are mean absolute error (MAE) as 0.64 kg/m 2 , mean absolute percentage error (MAPE) as 3.80 % and root mean squared error (RMSE) as 0.94 kg/m 2 and at PWVUO station the values are MAE = 1.91 kg/m 2 , MAPE = 11.76 % and RMSE as 1.97 kg/m 2 , respectively. The results explained that the OE method has shown a better performance compared to the remaining models.
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来源期刊
Journal of Applied Geodesy
Journal of Applied Geodesy REMOTE SENSING-
CiteScore
2.30
自引率
7.10%
发文量
30
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