Combined IASI-NG and MWS Observations for the Retrieval of Cloud Liquid and Ice Water Path: A Deep Learning Artificial Intelligence Approach

oleh: Pietro Mastro, Guido Masiello, Carmine Serio, Domenico Cimini, Elisabetta Ricciardelli, Francesco Di Paola, Tim Hultberg, Thomas August, Filomena Romano

Format: Article
Diterbitkan: IEEE 2022-01-01

Deskripsi

A neural network (NN) approach is proposed to combine future infrared (IASI-NG) and microwave (MWS) observations to retrieve cloud liquid and ice water path. The methodology is applied to simulated IASI-NG and MWS observations in the period January&#x2013;October 2019. IASI-NG and MWS observations are simulated globally at synoptic hours (00:00, 06:00, 12:00, 18:00 UTC) and on a regular spatial grid (0.125&#x00B0; &#x00D7; 0.125&#x00B0;) from ECMWF 5-generation reanalysis (ERA5). The state-of-the-art &#x03C3;-IASI and RTTOV radiative transfer codes are used to simulate IASI-NG and MWS observations, respectively, from the earth&#x0027;s state vector given by ERA5. A principal component analysis of the simulated IASI-NG observations is performed. Accordingly, a NN is developed to retrieve cloud liquid and ice water path from a combination of 24 MWS channels and 30 IASI-NG PCs. Validation indicates that this combination results in liquid and ice water path retrievals with overall accuracy of 1.85 10<sup>&#x2212;2</sup> kg&#x002F;m<sup>2</sup> and 1.18 10<sup>&#x2212;2</sup> kg&#x002F;m<sup>2</sup>, respectively, and 0.97 correlation with respect to reference values. The root-mean-square error (RMSE) for CLWP results in about 30&#x0025; of the mean value (5.91 10<sup>&#x2212;2</sup> kg&#x002F;m<sup>2</sup>) and 22&#x0025; of the variability (1-sigma). Similarly, the RMSE for CIWP results in about 41&#x0025; of the mean value (2.91 10<sup>&#x2212;2</sup> kg&#x002F;m<sup>2</sup>) and 22&#x0025; of the variability. Two more NN are developed, retrieving cloud liquid and ice water path from microwave observations only (24 MWS channels) and infrared observations only (30 IASI-NG PCs), demonstrating quantitatively the advantage of using the combination of infrared and microwave observations with respect to either one alone.