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    <link>https://www.um.edu.mt/library/oar/handle/123456789/143748</link>
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    <pubDate>Sun, 12 Apr 2026 13:57:40 GMT</pubDate>
    <dc:date>2026-04-12T13:57:40Z</dc:date>
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      <title>Modelling indoor household PM2.5 using positive matrix factorization and machine learning algorithms</title>
      <link>https://www.um.edu.mt/library/oar/handle/123456789/144069</link>
      <description>Title: Modelling indoor household PM2.5 using positive matrix factorization and machine learning algorithms
Abstract: People tend to spend most of their time indoors, yet the concentration and composition of &#xD;
indoor fine particulate matter (PM2.5) remain poorly understood in the Maltese Islands, with &#xD;
existing receptor modelling studies focusing solely on ambient air. The first objective of this &#xD;
study was to carry out long-term indoor air sampling of PM2.5 followed by chemical &#xD;
characterisation, in order to identify and quantify the main natural and anthropogenic sources &#xD;
of indoor PM2.5 at an urban background site in Malta using Positive Matrix Factorisation &#xD;
(PMF). The second objective was to explore the use of Machine Learning (ML) algorithms to &#xD;
model and predict indoor PM2.5 concentrations in several households in Malta and Gozo. &#xD;
PMF was used to identify and quantify the major sources of indoor PM2.5. Quartz and PTFE &#xD;
filters were collected and analysed gravimetrically and chemically using ICP-MS, IC, and an &#xD;
OC-EC aerosol analyser to determine concentrations of PM2.5, 18 elements, 5 ions, organic &#xD;
carbon (OC), and elemental carbon (EC). Eight contributing factors were identified, seven &#xD;
outdoor sources and one indoor source, contributing 68% and 26% to indoor PM2.5, &#xD;
respectively. Cooking and e-cigarette use were the main contributors to the indoor factor. &#xD;
Uniquely for Malta, a fireworks factor was isolated indoors, responsible for most of the &#xD;
measured Sb and Ba, raising concerns due to the toxicity of these elements. An RF-SHAP &#xD;
model was integrated with the indoor PMF model to investigate the influence of key drivers on &#xD;
indoor PM2.5 concentrations. An outdoor PMF analysis was also conducted, and a &#xD;
corresponding RF-SHAP model (CV RMSE: 2.79 µg m−3; R²: 0.80) was used to refine the &#xD;
outdoor source contributions. Transboundary contributions (Saharan dust and ammonium &#xD;
sulfate) were higher outdoors (58%) than indoors (33%) due to reduced infiltration when &#xD;
windows are closed. Local anthropogenic sources (Industrial, Fireworks, Traffic, Shipping) &#xD;
contributed more to outdoor PM2.5 (33%) than indoor (25%), with increased indoor infiltration &#xD;
during warmer months coinciding with peak fireworks activity. &#xD;
For the second objective, continuous PM measurements were taken using aerosol &#xD;
spectrometers at seven non-smoking residences. RF and XGBoost models were developed to &#xD;
predict indoor PM2.5 at six-hourly intervals. At sites with low indoor PM generation, &#xD;
predictions were mainly influenced by outdoor PM1 levels. At a site with high indoor &#xD;
emissions, indoor relative humidity was a key predictor, especially during cooking. The RF &#xD;
model performed best overall (RMSE: 30.65 µg m−3; IOA: 0.66).
Description: Ph.D.(Melit.)</description>
      <pubDate>Mon, 01 Jan 2024 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">https://www.um.edu.mt/library/oar/handle/123456789/144069</guid>
      <dc:date>2024-01-01T00:00:00Z</dc:date>
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