Automated Author Profile

Zhao, Chenchen

Current S-Index

4.6

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

1.5

Average Dataset Index per dataset

Total Datasets

3

Total datasets for this author

Average FAIR Score

78.8%

Average FAIR Score per dataset

Total Citations

2

Total citations to the author's datasets

Total Mentions

0

Total mentions of the author's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

A Consistent and Corrected Nighttime Light dataset (CCNL 1992-2013) from DMSP-OLS data (Version: 1.0)

DMSP-OLS provides the longest observations of NTL information, from 1992 to 2013, an unparalleled dataset for studying historical artificial lights. Version 4 of the DMSP-OLS Nighttime Lights Time Series is widely used ( Image and data processing by NOAA's National Geophysical Data Center. DMSP data collected by US Air Force Weather Agency ). However, it suffers from three main problems: inter-annual inconsistency, saturation, and blooming effect. We used a series of methods to mitigate the impact and improve data quality. After processing, we get consistent and corrected nighttime light dataset (CCNL). The version 1 products span the globe from 75N latitude to 65S. The products are produced in 1000m resolution and are made available in GeoTIFF format. Each year has two scenes. Each GeoTIFF filename has 4 filename fields that are separated by an underscore "_". These fields are followed by a filename extension. The fields are described below using this example filename: CCNL_1992_1_1.0 Field 1: CCNL(Consistent and Corrected Nighttime Light dataset) Field 2: year "1992" Field 3: first scene “1” Field 4: version “1.0”

Authors

  • Zhao, Chenchen ;
  • Cao, Xin ;
  • Chen, Xuehong ;
  • Cui, Xihong
1 Citation0 Mentions77% FAIR2.2 Dataset Index
10.5281/zenodo.40170612020

Code for producing a consistent and corrected nighttime light dataset (CCNL 1992-2013) from DMSP-OLS data

The DMSP-OLS NTL product suffers from three main problems, i.e.inter-annual inconsistency, saturation, and blooming effect which will affect the accuracy of urban extraction and the estimation of the social-economic indexes. To address these problems, we adopted three correction methods to rectify inter-annual inconsistency, saturation, and blooming effects.
The code is written based on the Javascript API provided by the Google Earth Engine platform(https://earthengine.google.com/)

Authors

  • Zhao, Chenchen ;
  • Cao, xin
0 Citations0 Mentions79% FAIR0.3 Dataset Index
10.5281/zenodo.61002852020

Code for producing a consistent and corrected nighttime light dataset (CCNL 1992-2013) from DMSP-OLS data

The DMSP-OLS NTL product suffers from three main problems, i.e.inter-annual inconsistency, saturation, and blooming effect which will affect the accuracy of urban extraction and the estimation of the social-economic indexes. To address these problems, we adopted three correction methods to rectify inter-annual inconsistency, saturation, and blooming effects.
The code is written based on the Javascript API provided by the Google Earth Engine platform(https://earthengine.google.com/)

Authors

  • Zhao, Chenchen ;
  • Cao, xin
1 Citation0 Mentions81% FAIR2.2 Dataset Index
10.5281/zenodo.61002842020