Show/Hide Menu
Hide/Show Apps
Logout
Türkçe
Türkçe
Search
Search
Login
Login
OpenMETU
OpenMETU
About
About
Open Science Policy
Open Science Policy
Open Access Guideline
Open Access Guideline
Postgraduate Thesis Guideline
Postgraduate Thesis Guideline
Communities & Collections
Communities & Collections
Help
Help
Frequently Asked Questions
Frequently Asked Questions
Guides
Guides
Thesis submission
Thesis submission
MS without thesis term project submission
MS without thesis term project submission
Publication submission with DOI
Publication submission with DOI
Publication submission
Publication submission
Supporting Information
Supporting Information
General Information
General Information
Copyright, Embargo and License
Copyright, Embargo and License
Contact us
Contact us
A comparative analysis of hyperparameter optimization using LSTM-based deep learning models for urban air quality predictions
Download
A comparative analysis of hyperparameter optimization using LSTM.pdf
Date
2025-12-01
Author
Eren, Beytullah
Erden, Caner
Atalı, Ayşegül
Özdemir, Serkan
Metadata
Show full item record
This work is licensed under a
Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License
.
Item Usage Stats
29
views
19
downloads
Cite This
Air pollution poses significant threats to human health and the environment, necessitating accurate prediction models for effective management and mitigation strategies. This study presents a comprehensive analysis of hyperparameter optimization techniques for Long Short-Term Memory (LSTM) based deep learning models in urban air quality forecasting. We focus on predicting concentrations of four key pollutants: carbon monoxide (CO), nitrogen oxides (NOX), nitrogen dioxide (NO2), and particulate matter (PM10). The study employs and compares three prominent hyperparameter optimization methods: Random Search, Bayesian Optimization, and Hyperband. Using air quality data from Sakarya, Turkey, collected between January 2020 and September 2022, we first addressed missing data through comparative analysis of mean imputation and k-Nearest Neighbors (kNN) imputation methods. Our results demonstrate that kNN imputation generally outperforms mean imputation, except for NOX predictions. The hyperparameter-optimized LSTM models consistently outperformed baseline models across all pollutants. Notably, the Hyperband Search algorithm excelled in NOX prediction, while Bayesian Optimization showed superior performance for other pollutants. Our analysis also revealed temporal trends in pollutant concentrations during the COVID-19 pandemic, including significant reductions in PM10 and CO levels. This study contributes to AI-driven environmental monitoring by comparing hyperparameter optimization techniques in urban air quality modeling. The improved prediction accuracy offered by our optimized models has significant implications for public health protection, environmental policymaking, and smart city initiatives. Our findings underscore the importance of tailored optimization approaches for different pollutants and highlight the potential of advanced machine learning techniques in addressing environmental challenges.
Subject Keywords
Air quality prediction
,
Bayesian Optimization
,
COVID-19
,
Hyperband
,
Hyperparameter optimization
,
LSTM
,
Random Search
URI
https://hdl.handle.net/11511/116457
Journal
Ain Shams Engineering Journal
DOI
https://doi.org/10.1016/j.asej.2025.103786
Collections
Graduate School of Informatics, Article
Citation Formats
IEEE
ACM
APA
CHICAGO
MLA
BibTeX
B. Eren, C. Erden, A. Atalı, and S. Özdemir, “A comparative analysis of hyperparameter optimization using LSTM-based deep learning models for urban air quality predictions,”
Ain Shams Engineering Journal
, vol. 16, no. 12, pp. 0–0, 2025, Accessed: 00, 2025. [Online]. Available: https://hdl.handle.net/11511/116457.