Using NASA’s night light data analyzing poverty index Bangladesh
Abstract
In the never-ending quest to reach Sustainable Development Goal 1 (SDG 1), which
is to end poverty, new and different ways of doing things are needed, especially
in places where collecting data the old way is hard. ”Analysis of Poverty Using
NASA Black Marble NTL Data with the DHS Wealth Index of Bangladesh,” the
title of this study, describes a new way to figure out how poor a country is by
using NASA’s VNP46A4 dataset, which is an important part of the Black Marble
suite. The VNP46A4 dataset gives annual averages from 2017 to 2018 based on NTL
radiance corrected for atmospheric and lunar factors, containing 28 layers of useful
information. Initial analysis using VNP46A4 and DHS data revealed inefficiencies
and accuracy issues. Therefore, we propose a new approach: utilizing datasets for
the year 2022, including OSM, Google Static Maps, and NASA’s VNP46A3, which
provides monthly data that we have merged into yearly aggregates, to achieve higher
accuracy. This method focuses on specific data layers, h26v06 and h27v06, within
the VNP46A4 dataset covering Bangladesh. By integrating the unique nighttime
brightness data of Bangladesh through merging and clipping, and combining it with
other significant datasets, this study aims to present a comprehensive overview of
the country’s socioeconomic status. Using NASA’s nighttime light data intelligently,
this approach seeks to provide policymakers, development agencies, and academics
with a transformative tool, leveraging advanced technology and extensive datasets
to enable informed decisions and targeted assistance for struggling communities.