The ACSAI project operates within the realm of digital transformation, specifically focusing on enhancing crowd simulation technologies used for planning major events and constructing large buildings. The core issue is that traditional planning methods are analog, slow, and prone to errors. Crowd simulation can be a key tool in addressing these problems, but existing simulation tools suffer from long computation times and limited flexibility, hindering their wide-scale adoption.
Our vision is to provide one-click simulation results that allow users to quickly assess and validate any design at a glance. Achieving this vision requires the use of advanced Artificial Intelligence (AI) techniques.
The main objective of ACSAI is to leverage advanced AI techniques,including Convolutional Neural Networks (CNN), to make crowd simulations faster, more realistic, and better integrated into early planning processes. During the course of the project, we realized that additional techniques, such as Reinforcement Learning (RL) and Dynamic Mode Decomposition (DMD), would also be necessary to reach our goal of seamless, real-time simulations.
By improving the efficiency of their crowd simulation software crowd:it, the project aims to enhance the safety, efficiency, and reliability of planning public spaces, events, and transportation hubs. This is especially relevant as urban areas expand, and public transport use is expected to double to meet European Green Deal climate targets.