Abstract

Land surface temperature (LST) is an important variable in the physics of land–surface processes controlling the heat and water fluxes over the interface between the Earth’s surface and the atmosphere. Space-borne remote sensing provides the only feasible way for acquiring high-precision LST at temporal and spatial domain over the entire globe. Passive microwave (PMW) satellite observations have the capability to penetrate through clouds and can provide data under both clear and cloud conditions. Nonetheless, compared with thermal infrared data, PMW data suffer from lower spatial resolution and LST retrieval accuracy. Various methods for estimating LST from PMW satellite observations were proposed in the past few decades. This paper provides an extensive overview of these methods. We first present the theoretical basis for retrieving LST from PMW observations and then review the existing LST retrieval methods. These methods are mainly categorized into four types, i.e., empirical methods, semi-empirical methods, physically-based methods, and neural network methods. Advantages, limitations, and assumptions associated with each method are discussed. Prospects for future development to improve the performance of LST retrieval methods from PMW satellite observations are also recommended.

Highlights

  • Land surface temperature (LST) is an important parameter in the interaction between the Earth’s surface and the atmosphere [1,2,3]

  • This paper provides an overview of various categories of algorithms that were established to estimate LST from Passive microwave (PMW) satellite observations

  • The disadvantage of multi-channel method is that it cannot explain how surface conditions function in the LST retrieval procedure and the improvement of accuracy basically relies on repeated trial and error

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Summary

Introduction

Land surface temperature (LST) is an important parameter in the interaction between the Earth’s surface and the atmosphere [1,2,3]. TIR radiation is influenced by atmospheric water vapor, wind speed, cloud, and rain-fall This disadvantage shall be considered since cloud-covered surface occupies 60% of the surface of the Earth [23]. This paper provides an overview of various categories of algorithms that were established to estimate LST from PMW satellite observations.

Theoretical Background
Bare Soil Surfaces
Vegetated Surfaces
18 May 2012
Difficulties and Problems for LST Retrieval from PMW Satellite Observations
Methods for LST Retrieval from PMW Satellite Observations
Empirical Methods
Single-Channel Regression Method
Multi-Channel Regression Method
Semi-Empirical Methods
Single-Channel Emissivity Method
Dual-Polarization Emissivity Method
Multi-Channel Emissivity Method
Physically-Based Methods
Dual-Channel Physical Method
Multi-Temporal Physical Method
Multi-Channel Physical Method
Neural Network Methods
Validation of PMW-Derived LST
Direct Comparison Method
Empirical methods
Inter-Comparison Method
Physical Meaning of PMW-Derived LST
Establishment of Microwave Spectral Emissivity Library
Simultaneous Retrieval of LST and Soil Moisture from PMW Observations
Merging TIR- and PMW-Derived LST
Findings
Full Text
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