A Novel
Swarm Intelligence Algorithm for the Evacuation Routing Optimization Problem
Jin-long Zhu1, Wenhui Li2, Huiying Li2, Qiong
Wu2, and Liang Zhang2
1Department of Computer Science and Technology, ChangChun Normal University, China
2Department of Computer Science and Technology, Jilin University, China
Abstract: This paper presents a novel swam
intelligence optimization algorithm that combines the evolutionary method of Particle
Swarm Optimization (PSO) with the filled function method in order to
solve the evacuation routing optimization problem. In the proposed algorithm,
the whole process is divided into three stages. In the first stage, we make use
of global optimization of filled function to obtain
optimal solution to set destination of all particles. In the second stage, we
make use of the randomicity and rapidity of PSO to simulate the crowd
evacuation. In the third stage, we propose three methods to manage the
competitive behaviors among the particles. This algorithm makes an evacuation
plan using the dynamic way finding of particles from both a macroscopic and a
microscopic perspective simultaneously. There are three types of experimental
scenes to verify the effectiveness and efficiency of the proposed algorithm: a
single room, a 4-room/1-corridor layout, and a multi-room multi-floor building
layout. The simulation examples demonstrate that the proposed algorithm can
greatly improve upon evacuation clear and congestion times. The experimental
results demonstrate that this method takes full advantage of multiple exits to
maximize the evacuation efficiency.
Keywords: PSO, filled function, global optimum,
local optimum.
Received November 17, 2014; accepted September
10, 2015