TY - JOUR
T1 - Multi-Objective Optimization Using Evolutionary Cuckoo Search Algorithm for Evacuation Planning
AU - Sicuaio, Tomé
AU - Niyomubyeyi, Olive
AU - Shyndyapin, Andrey
AU - Pilesjö, Petter
AU - Mansourian, A
PY - 2022/2/15
Y1 - 2022/2/15
N2 - Proper emergency evacuation planning is a key to ensuring the safety and efficiency of resources allocation in disaster events. An efficient evacuation plan can save human lives and avoid other effects of disasters. To develop effective evacuation plans, this study proposed a multi-objective optimization model that assigns individuals to emergency shelters through safe evacuation routes during the available periods. The main objective of the proposed model is to minimize the total travel distance of individuals leaving evacuation zones to shelters, minimize the risk on evacuation routes and minimize the overload of shelters. The experimental results show that the Discrete Multi-Objective Cuckoo Search (DMOCS) has better and consistent performance as compared to the standard Multi-Objective Cuckoo Search (MOCS) in most cases in terms of execution time; however, the performance of MOCS is still within acceptable ranges. Metrics and measures such as hypervolume indicator, convergence evaluation and parameter tuning have been applied to evaluate the quality of Pareto front and the performance of the proposed algorithm. The results showed that the DMOCS has better performance than the standard MOCS.
AB - Proper emergency evacuation planning is a key to ensuring the safety and efficiency of resources allocation in disaster events. An efficient evacuation plan can save human lives and avoid other effects of disasters. To develop effective evacuation plans, this study proposed a multi-objective optimization model that assigns individuals to emergency shelters through safe evacuation routes during the available periods. The main objective of the proposed model is to minimize the total travel distance of individuals leaving evacuation zones to shelters, minimize the risk on evacuation routes and minimize the overload of shelters. The experimental results show that the Discrete Multi-Objective Cuckoo Search (DMOCS) has better and consistent performance as compared to the standard Multi-Objective Cuckoo Search (MOCS) in most cases in terms of execution time; however, the performance of MOCS is still within acceptable ranges. Metrics and measures such as hypervolume indicator, convergence evaluation and parameter tuning have been applied to evaluate the quality of Pareto front and the performance of the proposed algorithm. The results showed that the DMOCS has better performance than the standard MOCS.
KW - emergency evacuation planning
KW - emergency evacuation planning; multi-objective optimization
KW - MOCS algorithm
KW - GIS
KW - Operational research
KW - Geospatial Artificial Intelligence (GeoAI)
KW - Artificial Intelligence (AI)
U2 - 10.3390/geomatics2010005
DO - 10.3390/geomatics2010005
M3 - Article
SN - 2673-7418
VL - 2
SP - 53
EP - 75
JO - Geomatics
JF - Geomatics
IS - 1
ER -