Bike network planning in limited urban space (2405.01770v2)
Abstract: The lack of cycling infrastructure in urban environments hinders the adoption of cycling as a viable mode for commuting, despite the evident benefits of (e-)bikes as sustainable, efficient, and health-promoting transportation modes. Bike network planning is a tedious process, relying on heuristic computational methods that frequently overlook the broader implications of introducing new cycling infrastructure, in particular the necessity to repurpose car lanes. In this work, we call for optimizing the trade-off between bike and car networks, effectively pushing for Pareto optimality. This shift in perspective gives rise to a novel linear programming formulation towards optimal bike network allocation. Our experiments, conducted using both real-world and synthetic data, testify the effectiveness and superiority of this optimization approach compared to heuristic methods. In particular, the framework provides stakeholders with a range of lane reallocation scenarios, illustrating potential bike network enhancements and their implications for car infrastructure. Crucially, our approach is adaptable to various bikeability and car accessibility evaluation criteria, making our tool a highly flexible and scalable resource for urban planning. This paper presents an advanced decision-support framework that can significantly aid urban planners in making informed decisions on cycling infrastructure development.
- Modeling sustainable mobility futures using an automated process of road space reallocation in urban street networks: A case study in Zurich. 103rd Annual Meeting of the Transportation Research Board, Washington DC, 2024.
- The E-Bike City as a radical shift toward zero-emission transport: Sustainable? Equitable? Desirable? Journal of Transport Geography, 111, 2023.
- Planning bike lanes based on sharing-bikes’ trajectories. In Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pages 1377–1386, 2017.
- Geoff Boeing. OSMnx: New methods for acquiring, constructing, analyzing, and visualizing complex street networks. Computers, Environment and Urban Systems, 65:126–139, 2017.
- Geoff Boeing. Street network models and indicators for every urban area in the world. Geographical analysis, 54(3):519–535, 2022.
- Ulrik Brandes. On variants of shortest-path betweenness centrality and their generic computation. Social networks, 30(2):136–145, 2008.
- Bikeway networks: A review of effects on cycling. Transport reviews, 36(1):9–27, 2016.
- The space race: A framework to evaluate the potential travel-time impacts of reallocating road space to bicycle facilities. Journal of Transport Geography, 56:110–119, 2016.
- The multi-criteria road network design problem in an urban area. Transportation, 33(6):567–588, 2006.
- Solving linear programs in the current matrix multiplication time. Journal of the ACM (JACM), 68(1):1–39, 2021.
- Optimization framework for bicycle network design. Journal of Transportation engineering, 140(7):04014028, 2014.
- EDGAR/JRC. Distribution of carbon dioxide emissions worldwide in 2022, by sector. Statista, 2022. URL https://www.statista.com/statistics/1129656/global-share-of-co2-emissions-from-fossil-fuel-and-cement/.
- A review of urban transportation network design problems. European Journal of Operational Research, 229(2):281–302, 2013.
- LR Foulds. A multi-commodity flow network design problem. Transportation Research Part B: Methodological, 15(4):273–283, 1981.
- Cycling for transport and public health: A systematic review of the effect of the environment on cycling. The European Journal of Public Health, 21(6):738–743, 2011.
- A meta-heuristic approach for solving the Urban Network Design Problem. European Journal of Operational Research, 201(1):144–157, 2010.
- Network level design for cycling. In Advances in Transport Policy and Planning, volume 10, pages 77–109. Elsevier, 2022.
- Modeling bikeability of urban systems. Geographical analysis, 51(1):73–89, 2019.
- Ontology-based approach for harmonizing metrics in bike network evaluations. In Cycling Research Board Annual Meeting 2023. Book of Abstract, pages 113–116, 2023.
- Traffic flow modelling. Springer, 2019.
- Applications of deep learning in congestion detection, prediction and alleviation: A survey. Transportation Research Part C: Emerging Technologies, 133:103432, 2021.
- A bikeway network design model for urban areas. Transportation, 40:45–68, 2013.
- Urban bike lane planning with bike trajectories: Models, algorithms, and a real-world case study. Manufacturing & Service Operations Management, 24(5):2500–2515, 2022.
- Cycling network projects: A decision-making aid approach. CEUR Workshop Proceedings, 2016.
- Bicycle network design: model and solution algorithm. Transportation Research Procedia, 27:969–976, 2017.
- Route choice modeling for cyclists on urban networks. Transportation Research Part A: Policy and Practice, 173:103723, 2023.
- Bilevel optimization approach to design of network of bike lanes. Transportation research record, 2284(1):21–28, 2012.
- Health impact assessment of cycling network expansions in european cities. Preventive medicine, 109:62–70, 2018.
- Data-driven strategies for optimal bicycle network growth. Royal society open science, 7(12):201130, 2020.
- Health benefits of cycling: A systematic review. Scandinavian journal of medicine & science in sports, 21(4):496–509, 2011.
- A data science framework for planning the growth of bicycle infrastructures. Transportation research part C: emerging technologies, 115:102640, 2020.
- John Parkin. Designing for cycle traffic: International principles and practice. ICE Institution of Civil Engineers Publishing, 2018.
- Design speeds and acceleration characteristics of bicycle traffic for use in planning, design and appraisal. Transport Policy, 17(5):335–341, 2010.
- Societally optimal expansion of bicycle networks. Transportation Research Part B: Methodological, 174:102778, 2023.
- Understanding bikeability: A methodology to assess urban networks. Transportation, 49(3):897–925, 2022.
- The missing link: Bicycle infrastructure networks and ridership in 74 US cities. Transportation, 41:1187–1204, 2014.
- Demand-driven design of bicycle infrastructure networks for improved urban bikeability. Nature Computational Science, pages 1–10, 2022.
- Growing urban bicycle networks. Scientific Reports, 12(1):6765, 2022.
- The impact of green space exposure on satisfaction with active travel trips. Transportation Research Part D: Transport and Environment, 99:103022, 2021.
- Data-driven quality assessment of cycling networks. Frontiers in Future Transportation, 4:1127742, 2023.
- Recommended widths for separated bicycle lanes considering abreast riding and overtaking. Sustainability, 10(9):3127, 2018.
- Norbert Zeh. Connectivity of graphs under edge flips. In Algorithm Theory - SWAT 2004, volume 3111, pages 161–173. Springer Berlin, 2004.