| Literature DB >> 33052950 |
Hervé Borrion1, Justin Kurland2, Nick Tilley1, Peng Chen3.
Abstract
This paper uses resilience as a lens through which to analyse disasters and other major threats to patterns of criminal behaviour. A set of indicators and mathematical models are introduced that aim to quantitatively describe changes in crime levels in comparison to what could otherwise be expected, and what might be expected by way of adaptation and subsequent resumption of those patterns. The validity of the proposed resilience assessment tool is demonstrated using commercial theft data from the COVID-19 pandemic period. A 64 per cent reduction in crime was found in the studied city (China) during an 83-day period, before daily crime levels bounced back to higher than expected values. The proposed resilience indicators are recommended as benchmarking instruments for evaluating and comparing the global impact of COVID-19 policies on crime and public safety.Entities:
Mesh:
Year: 2020 PMID: 33052950 PMCID: PMC7556819 DOI: 10.1371/journal.pone.0240077
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Main categories of natural disasters and findings about crime pattern consequences.
| Group | Definition | Type | Crime Went Up | Crime Went Down |
|---|---|---|---|---|
| Events originating from solid earth | Earthquake, Volcano, Mass Movement (dry) | [ | [ | |
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| Events caused by short‐lived/small to meso-scale atmospheric processes (in the spectrum from minutes to days) | Storm (hurricane, typhoons) | [ | [ | |
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| Events caused by deviations in the normal water cycle and/or overflow of bodies of water caused by wind set‐up | Flood, Mass Movement (wet) | [ | [ | |
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| Events caused by long‐lived/meso- to macro-scale processes (in the spectrum from intra‐seasonal to multi‐decadal climate variability) | Extreme Temperature, Drought, Wildfire | [ | [ | |
| Disaster caused by the exposure of living organisms to germs and toxic substances | Epidemic, Insect Infestation, Animal Stampede | [ | ||
| Events caused by extra-terrestrial bodies or phenomena | Meteorites, Asteroids, Solar Flares |
1 DV is the abbreviation for domestic violence.
Main categories of man-made disasters and findings about crime pattern consequences.
| Group | Definition | Type | Crime Went Up | Crime Went Down |
|---|---|---|---|---|
| Events maliciously caused by individuals or groups (incl. offenders, non-states actors and states). | Terrorist attacks, sabotage, arson, riots, threats posed by the presence or actions of armed groups | [ | ||
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| Unforeseen events not maliciously caused by individuals or groups (accidents) and technological failures. | Technological failure, human error | [ | ||
| Events intentionally organised non-malicious individuals or groups for a different purpose. | Sporting event, strike, political rally | [ | [ | |
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Fig 1Resilience triangle adapted from Bruneau et al [48].
Fig 2Crime levels following a disruptive event.
Fig 3Loss in crime performance following a disruptive event (μ1<μ6).
Fig 4Loss in crime performance following a disruptive event (μ1≥μ7).
Fig 5Normalised daily counts of theft in M1-city (1 January 2019–29 April 2020): Actual (YA/max(YA)) and predicted (YF/max(YF)).
Fig 6Resilience difference indicator and corresponding indicators and measures in M1-city (1 January 2020–29 April 2020).