Abstract

Abstract. Water vapour is an important substituent of the atmosphere but its spatial and temporal distribution is difficult to detect. Global Positioning System (GPS) water vapour tomography, which can sense three-dimensional water vapour distribution, has been developed as a research area in the field of GPS meteorology. In this paper, a new water vapour tomography method based on a genetic algorithm (GA) is proposed to overcome the ill-conditioned problem. The proposed approach does not need to perform matrix inversion, and it does not rely on excessive constraints, a priori information or external data. Experiments in Hong Kong under rainy and rainless conditions using this approach show that there is a serious ill-conditioned problem in the tomographic matrix by grayscale and condition numbers. Numerical results show that the average root mean square error (RMSE) and mean absolute error (MAE) for internal and external accuracy are 1.52∕0.94 and 10.07∕8.44 mm, respectively, with the GAMIT-estimated slant water vapour (SWV) as a reference. Comparative results of water vapour density (WVD) derived from radiosonde data reveal that the tomographic results based on GA with a total RMSE ∕ MAE of 1.43∕1.19 mm are in good agreement with that of radiosonde measurements. In comparison to the traditional least squares method, the GA can achieve a reliable tomographic result with high accuracy without the restrictions mentioned above. Furthermore, the tomographic results in a rainless scenario are better than those of a rainy scenario, and the reasons are discussed in detail in this paper.

Highlights

  • Water vapour is a major component of the atmosphere, and its distribution and dynamics are the main driving force of weather and climate change

  • Since Bevis et al (1992) first envisioned the potential of tomography to be applied in Global Positioning System (GPS) meteorology, water vapour tomography has become a promising method to improve the restitution of the spatio-temporal variations of this parameter (Braun et al, 1999; Nilsson et al, 2004; Song et al, 2006; Perler et al, 2011; Rohm, 2012; Dong and Jin, 2018)

  • To evaluate the performance of water vapour tomography based on a genetic algorithm, slant water vapour of GPS stations for the data of 13 to 19 August and 12 to 18 June 2017 were computed using the tomographic results based on the water vapour tomographic observation equation established in Eq (1)

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Summary

A GPS water vapour tomography method based on a genetic algorithm

Received: 11 March 2019 – Discussion started: 4 April 2019 Revised: 28 December 2019 – Accepted: 6 January 2020 – Published: 31 January 2020

Introduction
Troposphere estimation
Water vapour tomography based on the least squares method
Water vapour tomography based on the genetic algorithm
Experiment description
Analysis of matrix ill condition
Internal accuracy testing
External accuracy testing
Comparison with radiosonde data
Comparison with tomographic results of the least squares method
Analysis of results in different weather conditions
Findings
Conclusions
Full Text
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