Self-Organized Crowd Dynamics: Research on Earthquake Emergency Response Patterns of Drill-Trained Individuals Based on GIS and Multi-Agent Systems Methodology

Sensors (Basel). 2021 Feb 14;21(4):1353. doi: 10.3390/s21041353.

Abstract

Predicting evacuation patterns is useful in emergency management situations such as an earthquake. To find out how pre-trained individuals interact with one another to achieve their own goal to reach the exit as fast as possible firstly, we investigated urban people's evacuation behavior under earthquake disaster coditions, established crowd response rules in emergencies, and described the drill strategy and exit familiarity quantitatively through a cellular automata model. By setting different exit familiarity ratios, simulation experiments under different strategies were conducted to predict people's reactions before an emergency. The corresponding simulation results indicated that the evacuees' training level could affect a multi-exit zone's evacuation pattern and clearance time. Their exit choice preferences may disrupt the exit options' balance, leading to congestion in some of the exits. Secondly, due to people's rejection of long distances, congestion, and unfamiliar exits, some people would hesitant about the evacuation direction during the evacuation process. This hesitation would also significantly reduce the overall evacuation efficiency. Finally, taking a community in Zhuhai City, China, as an example, put forward the best urban evacuation drill strategy. The quantitative relation between exit familiar level and evacuation efficiency was obtained. The final results showed that the optimized evacuation plan could improve evacuation's overall efficiency through the self-organization effect. These studies may have some impact on predicting crowd behavior during evacuation and designing the evacuation plan.

Keywords: crowd dynamics; drill-trained; evacuation pattern; exit choice; panic effect.

MeSH terms

  • China
  • Crowding
  • Disaster Planning*
  • Earthquakes*
  • Emergencies
  • Geographic Information Systems*
  • Humans