Deep Activity Model: A Generative Approach for Human Mobility Pattern Synthesis (2405.17468v2)
Abstract: Human mobility plays a crucial role in transportation, urban planning, and public health. Advances in deep learning and the availability of diverse mobility data have transformed mobility modeling. However, existing deep learning models often focus on spatio-temporal patterns and struggle to capture the semantic interdependencies among activities, while also being limited by specific data sources. These challenges reduce their realism and adaptability. Traditional activity-based models (ABMs) face issues as well, relying on rigid assumptions and requiring extensive data, making them costly and difficult to adapt to new regions, especially those with limited conventional travel data. To address these limitations, we develop a novel generative deep learning approach for human mobility modeling and synthesis that incorporates both activity patterns and location trajectories using open-source data. The model can be fine-tuned with local data, allowing it to adapt to and accurately represent mobility patterns across diverse regions. The model is evaluated on a nationwide dataset of the United States, where it demonstrates superior performance in generating activity-location chains that closely follow ground truth distributions. Further tests using state- or city-specific datasets from California, Washington, and Mexico City confirm its transferability. This innovative approach offers substantial potential to advance mobility modeling research, particularly in generating synthetic human mobility data. This can provide urban planners and policymakers with enhanced tools for simulating mobility in diverse regions and better informing decisions related to transportation, urban development, and public health.
- World Urbanization Prospects: The 2018 Revision, Online Edition. United Nations, 2018.
- Impact of covid-19 behavioral inertia on reopening strategies for new york city transit. International Journal of Transportation Science and Technology, 10(2):197–211, 2021.
- Clare Duffy. Big tech firms ramp up remote working orders to prevent coronavirus spread. https://www.cnn.com/2020/03/10/tech/google-work-from-home-coronavirus/index.html, 2020. Accessed: 2024-05-15.
- The effect of human mobility and control measures on the covid-19 epidemic in china. Science, 368(6490):493–497, 2020.
- Deepurbanmomentum: An online deep-learning system for short-term urban mobility prediction. In Proceedings of the AAAI conference on artificial intelligence, volume 32, 2018.
- An agent-based model simulation of human mobility based on mobile phone data: How commuting relates to congestion. ISPRS International Journal of Geo-Information, 8(7):313, 2019.
- The effect of human mobility and control measures on traffic safety during covid-19 pandemic. PLoS one, 16(3):e0243263, 2021.
- An analytical framework to nowcast well-being using mobile phone data. International Journal of Data Science and Analytics, 2:75–92, 2016.
- Quantifying the presence of air pollutants over a road network in high spatio-temporal resolution. In Climate Change AI, NeurIPS Workshop, 2021.
- Urban energy flux: Spatiotemporal fluctuations of building energy consumption and human mobility-driven prediction. Applied energy, 195:810–818, 2017.
- Activity based travel demand model systems. In Equilibrium and advanced transportation modelling, pages 27–46. Springer, 1998.
- Activity-based disaggregate travel demand model system with activity schedules. Transportation research part a: policy and practice, 35(1):1–28, 2001.
- Design features of activity-based microsimulation models for us metropolitan planning organizations: a summary. In Transportation Research Board Conference Proceedings, volume 2, 2008.
- Connected automated vehicle impacts in southern california part-i: Travel behavior and demand analysis. Transportation research part D: transport and environment, 109:103329, 2022.
- Connected automated vehicle impacts in southern california part-ii: Vmt, emissions, and equity. Transportation research part D: transport and environment, 109:103381, 2022.
- Human mobility models for opportunistic networks. IEEE Communications Magazine, 49(12):157–165, 2011.
- Human mobility: Models and applications. Physics Reports, 734:1–74, 2018.
- Data-driven generation of spatio-temporal routines in human mobility. Data Mining and Knowledge Discovery, 32(3):787–829, 2018.
- Understanding individual human mobility patterns. nature, 453(7196):779–782, 2008.
- Returners and explorers dichotomy in human mobility. Nature communications, 6(1):8166, 2015.
- The purpose of motion: Learning activities from individual mobility networks. In 2014 International conference on data science and advanced analytics (DSAA), pages 312–318. IEEE, 2014.
- Unravelling daily human mobility motifs. Journal of The Royal Society Interface, 10(84):20130246, 2013.
- Characterizing preferred motif choices and distance impacts. Plos one, 14(4):e0215242, 2019.
- Summary of travel trends: 2017 national household travel survey. Technical report, United States. Department of Transportation. Federal Highway Administration, 2018.
- The mobile data challenge: Big data for mobile computing research. In Pervasive computing, 2012.
- Understanding the patterns of car travel. The European Physical Journal Special Topics, 215:61–73, 2013.
- Understanding human mobility from twitter. PloS one, 10(7):e0131469, 2015.
- A survey on deep learning for human mobility. ACM Computing Surveys (CSUR), 55(1):1–44, 2021.
- Simulator of activities, greenhouse emissions, networks, and travel (simagent) in southern california: Design, implementation, preliminary findings, and integration plans. In 2011 IEEE Forum on Integrated and Sustainable Transportation Systems, pages 164–169. IEEE, 2011.
- A household-level activity pattern generation model for the simulator of activities, greenhouse emissions, networks, and travel (simagent) system in southern california. In 91st Annual Meeting of the Transportation Research Board, Washington, DC, 2012.
- Modelling the scaling properties of human mobility. Nature physics, 6(10):818–823, 2010.
- The timegeo modeling framework for urban mobility without travel surveys. Proceedings of the National Academy of Sciences, 113(37):E5370–E5378, 2016.
- Federal Highway Administration. 2022 nextgen national household travel survey core data, 2022.
- National Renewable Energy Laboratory. Transportation Secure Data Center. Accessed Jan. 15, 2019, 2019.
- Transportation Secure Data Center. National renewable energy laboratory, 2017. Accessed Jan. 15, 2017: www.nrel.gov/tsdc.
- New York Metropolitan Transportation Council. 2010-2011 regional household travel survey (rhts), 2012. Retrieved from: https://www.nymtc.org/en-us/DATA-AND-MODELING/Travel-Surveys/2010-11-Travel-Survey.
- NREL. Cleansed data from household travel studies and surveys, 2023. Retrieved from: https://www.nrel.gov/transportation/secure-transportation-data/tsdc-cleansed-household-travel-data.html.
- Puget Sound Regional Council. Puget sound regional council household travel survey. https://www.nrel.gov/transportation/secure-transportation-data/tsdc-2017-puget-sound-travel-study.html, 2017.
- National Institute of Statistics and Geography. Origin-destination survey in households of the metropolitan zone of the valley of mexico. https://en.www.inegi.org.mx/programas/eod/2017/, 2017.
- Attention is all you need. Advances in neural information processing systems, 30, 2017.
- A comprehensive survey on transfer learning. Proceedings of the IEEE, 109(1):43–76, 2020.
- Semantic trajectory data mining with llm-informed poi classification, 2024.
- Federal Highway Administration. National household travel survey. https://nhts.ornl.gov, 2017.
- California Department of Transportation. California household travel survey. https://www.nrel.gov/transportation/secure-transportation-data/tsdc-california-travel-survey.html, 2012.
- Generalized raking procedures in survey sampling. Journal of the American statistical Association, 88(423):1013–1020, 1993.
- Pytorch: An imperative style, high-performance deep learning library. Advances in neural information processing systems, 32, 2019.
- Jesse Roberts. On the computational power of decoder-only transformer language models. arXiv preprint arXiv:2305.17026, 2023.
- Stf-rnn: Space time features-based recurrent neural network for predicting people next location. In 2016 IEEE Symposium Series on Computational Intelligence (SSCI), pages 1–7. IEEE, 2016.
- An lstm based system for prediction of human activities with durations. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 1(4):1–31, 2018.
- Predicting activity and location with multi-task context aware recurrent neural network. In IJCAI, pages 3435–3441, 2018.