فصلنامه علمی- پژوهشی اطلاعات جغرافیایی « سپهر»

فصلنامه علمی- پژوهشی اطلاعات جغرافیایی « سپهر»

بررسی اثرات کاربری های شهری به صورت منفرد و ترکیبی بر حمل و نقل دوچرخه مبنا به کمک محاسبات مکانی

نوع مقاله : مقاله پژوهشی

نویسندگان
1 دانشجوی کارشناسی ارشد سیستم اطلاعات مکانی، دانشکده مهندسی عمران، دانشگاه صنعتی نوشیروانی بابل، بابل، ایران
2 استادیار گروه مهندسی نقشه‌برداری، دانشکده مهندسی عمران، دانشگاه صنعتی نوشیروانی بابل، بابل، ایران
چکیده
دوچرخه‌سواری به عنوان یکی از ارکان اصلی حمل و نقل فعال، برروی کاهش استفاده از وسایل حمل و نقل موتوری، آلودگی محیطی و صوتی و توسعه شهری تأثیر به سزایی دارد. ترغیب افراد به دوچرخه‌سواری در عصر حاضر بیش از همه وابسته به برنامه‌ریزی شهری و توسعه مسیرهای شهری  است. یکی از ارکان این توسعه، استفاده از داده‌هایی است که افراد به صورت رایگان از مسیر حرکتی خود بر بسترهای متن باز به اشتراک می‌گذارند و در تحلیل‌های مکانی مورد استفاده قرار می‌گیرند. یکی از تحلیل‌های مهم در دوچرخه‌سواری، بررسی مسیر حرکتی افراد و تأثیر کاربری‌ها بر روی آن است، که به کمک آن می‌توان جذابیت مسیرهای مختلف برای عبور افراد را بررسی کرد. این بررسی می‌تواند با استفاده از تحلیل موقعیت نقاط شروع و پایان مسیر افراد به همراه میزان توقف و کاربری‌های موجود در همسایگی این نقاط توقف، انجام گیرد. بنابراین در تحقیق حاضر اطلاعات مسیر حرکت افراد و داده‌های کاربری‌های موردنظر در شهر ساری جمع‌آوری شده تا مورد مطالعه قرار گیرند. در این راستا، نقاط توقف اطلاعات حاصل از بسترهای متن باز پس از آماده‌سازی و صحت سنجی، استخراج شده اند. کوتاه‌ترین مسیر موجود بین نقاط شروع و پایان استخراج و میزان انحراف افراد از کوتاه‌ترین مسیر موجود محاسبه شد. نتایج بدست آمده در تأثیر کاربری‌ها به صورت تکی و ترکیب کاربری‌ها حاکی از آن است که کاربری خدماتی و رفاهی با 22.7% و ترکیب کاربری خدماتی و رفاهی و تجاری با 9.73% بیش‌ترین تأثیر را برروی انحراف افراد از مسیر اصلی داشته‌اند. همچنین رودخانه تجن با 47% ،  بیش‌ترین تأثیر را در انحراف افراد از مسیر داشته است. نتایج حاصل از پژوهش حاضر بینش‌های ارزشمندی در رابطه با چگونگی انتخاب مسیر توسط دوچرخه سواران و تأثیر انواع کاربری‌ها برروی آن را نشان می‌دهد. طراحان و مسئولین شهری با استفاده از این نتایج می‌توانند در جهت پویایی شهر قدم بردارند.
کلیدواژه‌ها

موضوعات


عنوان مقاله English

Investigating individual and mixed of urban land use on bicycle transportation using spatial computing

نویسندگان English

Yousef Esmaeili 1
Hamid Motieyan 2
1 M.Sc. Student of GIS, Department of geomatics, Faculty of civil engineering, Babol Noshirvani University of Technology, Babol, Iran
2 Assistant professor, Department of geomatics, Faculty of civil engineering, Babol Noshirvani University of Technology, Babol, Iran
چکیده English

Extended Abstract
Introduction:
Cities are experiencing a surge in non-motorized transportation like bicycles and scooters. This trend offers environmental advantages that are crucial for sustainable urban development. Bicycles, in particular, are attracting new riders due to their sustainability, affordability, and positive health impacts. However, encouraging cycling heavily relies on suitable cycling infrastructure. Understanding why people choose specific routes and how the built environment influences these choices is key to advancing urban planning. Advancements in technologies like volunteered geographic information systems (GIS) and GPS have made it possible to continuously track individuals' locations and share them openly. These sequential location data points, over time, form trajectories, which can be analyzed to reveal patterns and assess the role of the urban environment in shaping cycling behavior.
Extensive research has explored the role of the urban environment in influencing pedestrian and cycling route choices, informing strategies for promoting active travel in cities. However, these studies often overlook the impact of user demographics and trip purposes. This article presents a novel approach by investigating the individual and combined effects of intended uses on cyclists' route selection. Our aim is to identify which trip purposes contribute to longer cycling distances.
Materials and Methods:
Sari, a densely populated city in Mazandaran province, was chosen as the study area. Mazandaran's central location and attractive natural features, including good weather, religious sites, historical landmarks, and natural sights, contribute to Sari's strong data availability. We leveraged WikiLock, an open-source platform where users can record their movement paths with their mobile phones. This platform offers valuable data with 15-second time resolution, capturing each individual's date, time, and location. Additionally, OpenStreetMaps (OSM) data provided information about existing users within Sari.
Our analysis delves deeper into users' movement paths by identifying their stopping points along the route. We achieve this by examining consecutive recorded positions with a specific time interval. If two consecutive positions remain the same, indicating a lack of movement for at least 90 seconds, we classify this as a "stop point." These stops likely signify the user pausing their journey to visit a point of interest, potentially revealing their preferred locations within the city. Furthermore, we don't simply identify stopping points; we also analyze the users associated with these stops. This allows us to understand if specific user profiles are more likely to deviate from a direct route. To quantify the extent of route deviations, we employ the Dijkstra algorithm. This algorithm calculates the shortest possible path between a user's starting and ending points. By comparing this shortest path with the user's actual route, we can calculate the percentage deviation. This deviation percentage helps us understand the reasons behind the user's extended journey. By analyzing patterns in deviations and their association with stopping points, we can gain valuable insights into the factors that influence cyclists' route choices within the urban environment.
Results and Discussion:
To analyze the types of locations influencing cyclists' route choices, we defined a 300-meter radius around each identified stop point. This allowed us to examine existing land uses within this area and assess their potential role in causing cyclists to pause their journeys. Our findings revealed that the service and welfare category had the most significant individual impact on user stops. This category encompasses like restaurants, cafes, cinemas, and other amenities. Among these, cafes were identified as the most frequent reason for cyclists to deviate from their routes. These results suggest that cyclists may be more likely to make unplanned stops for refreshment breaks compared to other service and welfare options. Further analysis explored the impact of combined land uses. Here, the service and welfare category maintained its dominance. Cyclists with combined trip purposes that included service and welfare needs exhibited the highest percentage deviation from the shortest path. This suggests that when cyclists have a combination of errands or destinations within the service and welfare category, they are more likely to deviate from the most direct route. Interestingly, our analysis also revealed a significant influence of the Tejen River. This natural feature affected 47% of the data points, suggesting that cyclists frequently adjust their routes in response to the Tejen River's presence. This deviation could be due to factors like using bridges or designated cycling paths along the river or avoiding specific areas due to safety concerns or terrain.
Conclusion:
This study delves into the connection between cycling routes and land uses within Sari city. The goal is to equip urban planners with valuable insights for designing more efficient and cyclist-friendly infrastructure. The research reveals that cyclists often opt for longer routes to access areas with commercial, service, and amenity destinations. Interestingly, educational areas saw the least cycling activity. Based on these findings, urban planners should prioritize creating dedicated cycling paths near service and amenity locations. Additionally, incorporating green spaces and recreational facilities along these paths could further incentivize cycling within the city.

کلیدواژه‌ها English

Cycling
Detour
Mixed land use
Trajectory
Stop point
1- Bagheri, B., & Shaykh-Baygloo, R. (2021). Spatial analysis of urban smart growth and its effects on housing price: The case of Isfahan, Iran. Sustainable Cities and Society, 68, 102769.
2- Bhandal, J., & Noonan, R. J. (2022). Motivations, perceptions and experiences of cycling for transport: A photovoice study. Journal of Transport & Health, 25, 101341.
3- Bi, H., Li, A., Zhu, H., & Ye, Z. (2023). Bicycle safety outside the crosswalks: Investigating cyclists’ risky street-crossing behavior and its relationship with built environment. Journal of transport geography, 108, 103551.
4- Bretones, A., & Marquet, O. (2022). Sociopsychological factors associated with the adoption and usage of electric micromobility. A literature review. Transport policy, 127, 230-249.
5- Castro, P. S., Zhang, D., & Li, S. (2012). Urban traffic modelling and prediction using large scale taxi GPS traces. International Conference on Pervasive Computing,
6- Chung, J., Namkung, O. S., Ko, J., & Yao, E. (2024). Cycling distance and detour extent: Comparative analysis of private and public bikes using city-level bicycle trajectory data. Cities, 151, 105134.
7- Codina i Lara, O. (2021). Built Environment Bikeability as a Predictor of Cycling Frequency: Lessons from Barcelona.
8- Cole-Hunter, T., Donaire-Gonzalez, D., Curto, A., Ambros, A., Valentín, A., Garcia-Aymerich, J., Martínez, D., Braun, L. M., Mendez, M., & Jerrett, M. (2015). Objective correlates and determinants of bicycle commuting propensity in an urban environment. Transportation Research Part D: Transport and Environment, 40, 132-143.
9- Cubells, J., Miralles-Guasch, C., & Marquet, O. (2023). E-scooter and bike-share route choice and detours: modelling the influence of built environment and sociodemographic factors. Journal of transport geography, 111, 103664.
10- Desjardins, E., Higgins, C. D., Scott, D. M., Apatu, E., & Paez, A. (2021). Using environmental audits and photo-journeys to compare objective attributes and bicyclists’ perceptions of bicycle routes. Journal of Transport & Health, 22, 101092.
11- Felipe-Falgas, P., Madrid-Lopez, C., & Marquet, O. (2022). Assessing environmental performance of micromobility using lca and self-reported modal change: The case of shared e-bikes, e-scooters, and e-mopeds in barcelona. Sustainability, 14(7), 4139.
12- Hu, Y., Shao, C., Wang, S., Sun, H., Sun, P., & Chu, Z. (2023). Evaluating Bicycling Environments with Trajectory Data on Shared Bikes: A Case Study of Beijing. Journal of Advanced Transportation, 2023(1), 2560780.
13- Iran’s, (2016). Population and Housing Census Results, (www.amar.org.ir) [In Persian]
14- Jalili, M., Hakimpour, F., & Van der Spek, S. C. (2018). Extraction of usage patterns for land-use types by pedestrian trajectory analysis. Web and Wireless Geographical Information Systems: 16th International Symposium, W2GIS 2018, A Coruña, Spain, May 21–22, 2018, Proceedings 16,
15- Javaid, A. (2013). Understanding Dijkstra’s algorithm. Available at SSRN 2340905.
Jung, M. C., Wang, T., Kang, M., Dyson, K., Dawwas, E. B., & Alberti, M. (2024). Urban landscape affects scaling of transportation carbon emissions across geographic scales. Sustainable Cities and Society, 113, 105656.
16- Kwan, M.-P., & Neutens, T. (2014). Space-time research in GIScience. International Journal of Geographical Information Science, 28(5), 851-854.
17- Luan, S., Li, M., Li, X., & Ma, X. (2020). Effects of built environment on bicycle wrong Way riding behavior: A data-driven approach. Accident Analysis & Prevention, 144, 105613.
18- Millonig, A., & Gartner, G. (2011). Identifying motion and interest patterns of shoppers for developing personalised wayfinding tools. Journal of Location Based Services, 5(1), 3-21.
19- Motieyan, H., Kaviari, F., & Mostofi, N. (2022). Quantifying walking capability: a novel aggregated index based on spatial perspective and analyses. Papers in Regional Science, 101(2), 483-504.
20- Park, Y., & Akar, G. (2019). Why do bicyclists take detours? A multilevel regression model using smartphone GPS data. Journal of transport geography, 74, 191-200.
21- Pekdemir, M. I., Altintasi, O., & Ozen, M. (2024). Assessing the Impact of Public Transportation, Bicycle Infrastructure, and Land Use Parameters on a Small-Scale Bike-Sharing System: A Case Study of Izmir, Türkiye. Sustainable Cities and Society, 101, 105085.
22- Pucher, J., & Buehler, R. (2017). Cycling towards a more sustainable transport future. Transport reviews, 37(6), 689-694.
23- Sallis, J. F., Frank, L. D., Saelens, B. E., & Kraft, M. K. (2004). Active transportation and physical activity: opportunities for collaboration on transportation and public health research. Transportation research part A: policy and practice, 38(4), 249-268.
24- Scott, D. M., Lu, W., & Brown, M. J. (2021). Route choice of bike share users: Leveraging GPS data to derive choice sets. Journal of transport geography, 90, 102903.
25- Shakeri, M., Alimohammadi, A., Sadeginiaraki, A., & Alesheikh, A. (2014). Design of a System using SDI and VGI Integration for Road Transportation. Quarterly Journal of Transportation Engineering, 6(1), 83-98. [In Persian]Sharif, M., Alesheikh, A. A., & Tashayo, B. (2019). CaFIRST: A context-aware hybrid fuzzy inference system for the similarity measure of multivariate trajectories. Journal of Intelligent & Fuzzy Systems, 36(6), 5383-5395.
26- Spaccapietra, S., Parent, C., Damiani, M. L., de Macedo, J. A., Porto, F., & Vangenot, C. (2008). A conceptual view on trajectories. Data & knowledge engineering, 65(1), 126-146.
27- Ta, N., Zhao, Y., & Chai, Y. (2016). Built environment, peak hours and route choice efficiency: An investigation of commuting efficiency using GPS data. Journal of transport geography, 57, 161-170.
28- Teymourian, F., Alesheikh, A. A., Alimohammadi Sarab, A., & Sadeghi Niaraki, A. (2014). Developing a System for Measuring Transportation Performance and Information Distribution of Urban Bus using Volunteer Geographic Information (VGI). Quarterly Journal of Transportation Engineering, 6(2), 225-236. [In Persian]
29- Van der Spek, S. (2010). Tracking tourists in historic city centres. In Information and Communication Technologies in Tourism 2010 (pp. 185-196). Springer.
30- Ye, L., Mandpe, S., & Meyer, P. B. (2005). What is “smart growth?”—Really? Journal of Planning Literature, 19(3), 301-315.
31- Zheng, X., Zhong, T., & Liu, M. (2009). Modeling crowd evacuation of a building based on seven methodological approaches. Building and environment, 44(3), 437-445.