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Artificial intelligence and thermodynamics help solving arson cases.


ABSTRACT: In arson cases, evidence such as DNA or fingerprints is often destroyed. One of the most important evidence modalities left is relating fire accelerants to a suspect. When gasoline is used as accelerant, the aim is to find a strong indication that a gasoline sample from a fire scene is related to a sample of a suspect. Gasoline samples from a fire scene are weathered, which prohibits a straightforward comparison. We combine machine learning, thermodynamic modeling, and quantum mechanics to predict the composition of unweathered gasoline samples starting from weathered ones. Our approach predicts the initial (unweathered) composition of the sixty main components in a weathered gasoline sample, with error bars of ca. 4% when weathered up to 80% w/w. This shows that machine learning is a valuable tool for predicting the initial composition of a weathered gasoline, and thereby relating samples to suspects.

SUBMITTER: Korver S 

PROVIDER: S-EPMC7689476 | biostudies-literature | 2020 Nov

REPOSITORIES: biostudies-literature

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Artificial intelligence and thermodynamics help solving arson cases.

Korver Sander S   Schouten Eva E   Moultos Othonas A OA   Vergeer Peter P   Grutters Michiel M P MMP   Peschier Leo J C LJC   Vlugt Thijs J H TJH   Ramdin Mahinder M  

Scientific reports 20201125 1


In arson cases, evidence such as DNA or fingerprints is often destroyed. One of the most important evidence modalities left is relating fire accelerants to a suspect. When gasoline is used as accelerant, the aim is to find a strong indication that a gasoline sample from a fire scene is related to a sample of a suspect. Gasoline samples from a fire scene are weathered, which prohibits a straightforward comparison. We combine machine learning, thermodynamic modeling, and quantum mechanics to predi  ...[more]

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