Subaerial biofilms (SABs) are microbial communities that form on surfaces exposed to both air and periodic moisture and that can adapt to harsh environmental conditions like UV radiation, and fluctuating temperatures. On the one hand they can protect built surfaces by forming a barrier against environmental stressors, on the other they can also cause deterioration through biological weathering. The balance is complex and depend on a large number of factors. Unfortunately, only a small part of the complex multiscale network of physical, chemical and biological processes is captured by existing mechanistic model; this prompts for the involvement of phenomenological models. In this work we point at the modeling advantages offered by Bayesian Networks (BNs), Causal Networks and Targeted Learning (TL) in the study of the dual role of SABs.

The Dual Role of Subaerial Biofilms Through the Lens of AI: The Case for Causal Networks and Targeted Learning

Goidanich, Sara;Berti, Letizia
2026-01-01

Abstract

Subaerial biofilms (SABs) are microbial communities that form on surfaces exposed to both air and periodic moisture and that can adapt to harsh environmental conditions like UV radiation, and fluctuating temperatures. On the one hand they can protect built surfaces by forming a barrier against environmental stressors, on the other they can also cause deterioration through biological weathering. The balance is complex and depend on a large number of factors. Unfortunately, only a small part of the complex multiscale network of physical, chemical and biological processes is captured by existing mechanistic model; this prompts for the involvement of phenomenological models. In this work we point at the modeling advantages offered by Bayesian Networks (BNs), Causal Networks and Targeted Learning (TL) in the study of the dual role of SABs.
2026
Management of Digital EcoSystems
9783031935978
9783031935985
Subaerial Biofilms
Built Environment
Bioprotection
Bayesian
Networks
Causal Networks
Structural Causal Models
Targeted Learning
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1301905
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