Exploring the Role of Deep Learning in Forecasting for Sustainable Development Goals: A Systematic Literature Review

(1) * Agung Bella Putra Utama Mail (Universitas Negeri Malang, Indonesia)
(2) Aji Prasetya Wibawa Mail (Universitas Negeri Malang, Indonesia)
(3) Anik Nur Handayani Mail (Universitas Negeri Malang, Indonesia)
(4) Mohammad Yasser Chuttur Mail (University of Mauritius, Mauritius)
*corresponding author

Abstract


This paper aims to explore the relationship between deep learning and forecasting within the context of the Sustainable Development Goals (SDGs). The primary objective is to systematically review 38 articles published between 2019 and 2023, following PRISMA guidelines, to understand the current landscape of deep learning forecasting for SDGs. Using data from 2019-2023 allows capturing the latest developments in deep learning forecasting for Sustainable Development Goals (SDGs), while excluding data before 2019 and after 2023 is based on the desire to avoid including potentially less relevant or unpublished research and to maintain focus on the most current and contextually relevant literature. The methodological approach involves analyzing the application of deep learning methods for forecasting within various SDG fields and identifying trends, challenges, and opportunities. The literature review results reveal the popularity of LSTM models, challenges related to data availability, and the interconnected nature of SDGs. Additionally, the study demonstrates that deep learning models enhance forecast accuracy and computational performance, as measured by Mean Absolute Percentage Error (MAPE), Root Mean Square Error (RMSE), and R-squared (R2). The findings underscore the importance of advanced data preparation techniques and the integration of deep learning with SDGs to improve forecasting outcomes. The novelty of this research lies in its comprehensive overview of the current landscape and its valuable insights for researchers, policymakers, and stakeholders interested in advancing sustainable development goals through deep learning forecasting. Finally, the paper suggests future research directions, including exploring the potential of hybrid forecasting models and investigating the impact of emerging technologies on SDG forecasting methodologies. Innovative methods for imputing missing values in deep learning forecasting models could be further explored to enhance predictive accuracy and robustness.

Keywords


Deep Learning; Forecasting; SDGs; Literature Review

   

DOI

https://doi.org/10.31763/ijrcs.v4i1.1328
      

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