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Determining Accurate Patrol Routes Using Genetic Algorithm and Ant Colony.

Automatic Control and Computer Sciences(2023)

School of Information Technology

Cited 0|Views4
Abstract
Conventional street patrols by police have exhibited decreasing effectiveness and have become formalistic. However, these patrols play a significant role in preventing and stopping crime. In this study, precise patrol routes are developed using the ant colony shortest route algorithm on the basis of crime hotspots in urban areas (i.e., patrol points). As ant colony optimization can often converge to a local optimum, patrol points are reselected using the K -means algorithm and patrol routes are optimized via a genetic algorithm. As a result, accurate patrol routes are obtained.
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Key words
patrol route,route planning,data analysis,ant colony optimization
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