Variable Goal Approach (VGA) Enhancing Pedestrian Dynamics Modeling
Kanika Jain, Anurag Tripathi, Shankar Prawesh, Indranil Saha Dalal

TL;DR
This paper introduces a Variable Goal Approach (VGA) that improves pedestrian dynamics models by incorporating multiple intermediate goals, enabling more realistic and adaptive simulation of pedestrian movement and decision-making.
Contribution
The novel VGA method integrates human-like decision-making into pedestrian models through variable goals, enhancing realism and performance in complex crowd scenarios.
Findings
VGA produces more realistic pedestrian paths.
VGA closely replicates high-density crowd behaviors.
The approach improves model efficiency and adaptability.
Abstract
Pedestrian dynamics models have provided valuable insights into pedestrian interactions, collision avoidance, and self-organized crowd behavior using mathematical, computational, AI-based, and heuristic approaches. However, existing models often fail to capture fundamental aspects of human decision-making, particularly the tendency to adopt indirect routes by sequentially selecting intermediate goals within the line of sight. In this study, we propose a novel Variable Goal Approach (VGA) that integrates human intelligence into pedestrian dynamics models by introducing multiple intermediate goals, termed variable goals, which guide pedestrians toward their final destination. These variable goals function as an adaptive guidance mechanism, enabling smoother transitions and dynamic navigation. VGA also enhances the efficiency of a model while minimizing interactions and disruptions. By…
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Taxonomy
TopicsEvacuation and Crowd Dynamics
