4.5 Article

Managing crowded museums: Visitors flow measurement, analysis, modeling, and optimization

Journal

JOURNAL OF COMPUTATIONAL SCIENCE
Volume 53, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.jocs.2021.101357

Keywords

IoT; Machine learning; Clustering; Tracking system; Museum simulator; Museum optimization

Funding

  1. Ministry of Cultural Heritage and Activities and Tourism
  2. Galleria Borghese
  3. Istituto per le Applicazioni del Calcolo of National Research Council of Italy
  4. Ministry of University and Research [SCN_00166]
  5. Regional Development Fund of European Union (PON Research and Competitiveness 2007-2013)
  6. project entitled Innovative numerical methods for evolutionary partial differential equations and applications (PRIN Project 2017) [2017KKJP4X]
  7. Talent Scheme (Veni) research programme - Netherlands Organization for Scientific Research (NWO) [16771]

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A comprehensive study was conducted on visitor flow in crowded museums, utilizing Lagrangian field measurements and statistical analyses to create stochastic digital-twins of guest dynamics for comfort-and safety-driven optimizations.
We present an all-around study of the visitors flow in crowded museums: a combination of Lagrangian field measurements and statistical analyses enable us to create stochastic digital-twins of the guest dynamics, unlocking comfort-and safety-driven optimizations. Our case study is the Galleria Borghese museum in Rome (Italy), in which we performed a real-life data acquisition campaign. We specifically employ a Lagrangian IoT-based visitor tracking system based on Raspberry Pi receivers, displaced in fixed positions throughout the museum rooms, and on portable Bluetooth Low Energy beacons handed over to the visitors. Thanks to two algorithms: a sliding window-based statistical analysis and an MLP neural network, we filter the beacons RSSI and accurately reconstruct visitor trajectories at room-scale. Via a clustering analysis, hinged on an original Wasserstein-like trajectory-space metric, we analyze the visitors paths to get behavioral insights, including the most common flow patterns. On these bases, we build the transition matrix describing, in probability, the room-scale visitor flows. Such a matrix is the cornerstone of a stochastic model capable of generating visitor trajectories in silico. We conclude by employing the simulator to enhance the museum fruition while respecting numerous logistic and safety constraints. This is possible thanks to optimized ticketing and new entrance/exit management.

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