Short Communication - (2024) Volume 14, Issue 12
Recent Advances in Applied Science Research
Abdalla Elsheikh*
Department Materials Science and Engineering, Northwestern University, Sudan
*Correspondence:
Abdalla Elsheikh,
Department Materials Science and Engineering, Northwestern University,
Sudan,
Email:
Received: 03-Dec-2024, Manuscript No. aasrfc-25-22576 ;
Editor assigned: 05-Dec-2024, Pre QC No. aasrfc-25-22576 (PQ);
Reviewed: 19-Dec-2024, QC No. aasrfc-25-22576 ;
Revised: 24-Dec-2024, Manuscript No. aasrfc-25-22576 (R);
Published:
31-Dec-2024, DOI: 10.36648/0976-8610.15.12.121
Introduction
Recent attention has focused on structural fractures, particularly
in light of the financial crisis, Great Recession, COVID-19
pandemic, and conflict. While structural breaks provide enormous
econometric issues, machine learning offers a sharp tool
for detecting and measuring breaks. The current research proposes
a consistent methodology for evaluating breaks and uses
that framework to test for and quantify precipitation changes
in Mauritania from 1919 to 1997. These tests show a one-third
decrease in mean rainfall beginning around 1970. Because water
is a precious resource in Mauritania, this loss, which has
a negative. Over the last two decades, structural breaks have
received a lot of attention, especially in light of the financial crisis,
the Great Recession, the COVID-19 epidemic, supply-chain
bottlenecks, and the war in Ukraine. From an econometric
standpoint, the empirical presence of structural breaks provides
considerable modelling issues, both in terms of empirical
model selection and statistical inference. Nonetheless, recent
advances in machine learning provide sharp tools for recognizing
and measuring structural breakdowns [1-3].
Description
Empirically, the degree and character of climate change-related
structural fractures are of great interest and debate.
The current paper has two goals. First, it proposes a unified
framework for structural break econometric analysis, based
on the research on indicator saturation techniques and automatic
model selection with machine learning. Second, it uses
those techniques to discover and quantify breaches in the precipitation
pattern inside Mauritania, checking for statistically
and empirically significant alterations and quantifying those
changes. Various econometric methodologies have aided in
the analysis of Mauritanian rainfall data. Our key conclusion is
that, about 1970, Mauritaniaâ??s mean precipitation decreased
by nearly one-third compared to the mean for 1921-1969. An
examination of the Palmer Drought Severity Index supports
this conclusion. Rainfall probability density curves show an increase
in months with little or no rainfall. This decrease in rainfall
is significant since water is a limited resource in Mauritania.
The ability to grow food is critical, and this is dependent on the
availability of water. As previously stated, North Africa has experienced
a rise in aridity since the late 1960s, with the aridity
being more persistent in western regions such as Mauritania.
The driest period occurred in the 1980s, with some enhanced
rainfall in the 1990s, particularly in the easternmost parts of
North Africa, where rainfall was near or just above the longterm
mean in some years [4].
Conclusion
This evidence points to a general decrease in rainfall across
the sample. Statistical comparisons of density are possible in
addition to these graphical comparisons. Such comparisons,
however, are not calculated here since the number of observations
in each subsample is rather small for such nonparametric
comparisons, and because the choice of decadal periods in. It
examines the Palmer Drought Severity Index for Mauritania as
a prelude to and motivation for considering rainfall data and
then describes the underlying rainfall data for Mauritania as
well as the aggregated measure of rainfall to be investigated.
The distributional repercussions are especially critical for the
poorest countries, the majority of which are in Africa. In contrast
to other continentsâ?? overall increases in mean precipitation
due to climate change, some portions of Africa.
Acknowledgement
None.
Conflict Of Interest
None.
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Citation: Elsheikh A (2024) Recent Advances in Applied Science Research. Adv Appl Sci Res. 14:122.
Copyright: © 2024 Elsheikh A. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.