Showing 3,181 - 3,200 results of 7,246 for search '"Urbanism"', query time: 0.07s Refine Results
  1. 3181
  2. 3182
  3. 3183
  4. 3184
  5. 3185

    Atmospheric Pollutants Assessment during the COVID-19 Lockdown Using Remote Sensing and Ground-based Measurements in Buenos Aires, Argentina by Natacha S. Represa, Lara S. Della Ceca, Gabriela Abril, María F. García Ferreyra, Carlos M. Scavuzzo

    Published 2020-11-01
    “…Abstract The COVID-19 outbreak measures of lockdown have generated exceptional urban behavior conditions allowing the analysis of a unique scenario. …”
    Get full text
    Article
  6. 3186

    Residential and socio-economic difference in protein intake of children aged 6-35 months in Indonesia: The national individual food consumption survey 2014 by Mauludyani Anna V. R., Suparmi Suparmi, Wibowo Yulianti

    Published 2025-01-01
    “…Our findings revealed that protein intake increased with children’s age in both urban and rural, ranging from 14.9 to 42.5 g/d in urban areas and 12.6 to 40.3 g/d in rural areas. …”
    Get full text
    Article
  7. 3187

    Influence of Regional Pollution Outflow on Particle Number Concentration and Particle Size in Airshed of Guangzhou, South China by Hing Cho Cheung, Chengyu Nie, Mintao Huang, Tingting Yang, Hao Wang, Celine Siu Lan Lee, Chenglei Pei, Jun Zhao, Baoling Liang

    Published 2022-06-01
    “…Average particle number concentration (PNC) was 6.3 × 103 cm–3 and 9.7 × 103 cm–3, respectively, at urban and suburban sites, indicating the severe particulate matter (PM) pollution. …”
    Get full text
    Article
  8. 3188

    Codesigning More-than-Human Ecosystems with Social and Environmental Systems: The Gamification of NetWall and BioDiveIn by Marie Davidová, María Claudia Valverde Rojas, Hanane Behnam

    Published 2025-01-01
    “…This study explores the integration of gamification into social and environmental systems to enhance urban biodiversity and foster the co-creation of ecosystems. …”
    Get full text
    Article
  9. 3189

    Selecting Southeastern Coastal Plain Tree Species for Wind Resistance by Mary L. Duryea, Eliana Kampf

    Published 2007-11-01
    “…Duryea and Eliana Kampf, is part of the Urban Forest Hurricane Recovery Program series. It presents the research and methodology that lead to lists of relative wind resistance for coastal plain tree species. …”
    Get full text
    Article
  10. 3190

    Selecting Southeastern Coastal Plain Tree Species for Wind Resistance by Mary L. Duryea, Eliana Kampf

    Published 2007-11-01
    “…Duryea and Eliana Kampf, is part of the Urban Forest Hurricane Recovery Program series. It presents the research and methodology that lead to lists of relative wind resistance for coastal plain tree species. …”
    Get full text
    Article
  11. 3191

    Les nuits de Shanghaï by Wenbo Hu, Luc Gwiazdzinski, Wanggen Wan

    Published 2016-12-01
    “…Using a social network known as SINA micro-blog, the “Facebook”, on which Chinese people share their personal experiences and lives, we analyse the way in which they participate in urban nocturnal activities from spatial and temporal dimensions. …”
    Get full text
    Article
  12. 3192
  13. 3193
  14. 3194
  15. 3195

    An Easy-to-Use Method for Assessing Nitrate Contamination Susceptibility in Groundwater by Daniela Ducci

    Published 2018-01-01
    “…For this reason the land use map was reclassified on the basis of the crop requirements in terms of fertilizers to obtain the Agricultural Potential Nitrate Contamination (APNC) map. The urban source considers leakages from the sewage network and, consequently, it depends on the anthropogenic pressure, expressed by the population density, particularly concentrated in the urbanized areas (Urban Potential Nitrate Contamination (UPNC) map). …”
    Get full text
    Article
  16. 3196

    Vegetation Activity Trend and Its Relationship with Climate Change in the Three Gorges Area, China by Guifeng Han, Yongchuan Yang, Shuiyu Yan

    Published 2013-01-01
    “…However, in the Chongqing major area (CMA) and its surrounding areas and Fuling, Yichang, and part of Wanzhou, vegetation activity shows a decreasing trend as a result of urban expansion. The NDVI has two fluctuation troughs in 2004 and 2006. …”
    Get full text
    Article
  17. 3197

    The Integration of Multimodal Networks: The Generalized Modal Split and Collaborative Optimization of Transportation Hubs by Yifei Cai, Jun Chen, Da Lei, Jiang Yu

    Published 2022-01-01
    “…This paper develops a bilevel multimodal network design problem based on the collaborative optimization of urban transportation hubs. The upper-level problem is formulated as a mixed-integer nonlinear program to achieve a modal shift from congested subnetworks to underutilized subnetworks to realize a balanced use of the entire network. …”
    Get full text
    Article
  18. 3198

    Analyzing the Relationship Between City and its influence From Economic Dimension(Case study of Jiroft city) by sedighe mosazade, gholam reza miri, mahmodreza anvari

    Published 2022-12-01
    “…Also, considering the role of these relations in the process of development and development of urban and rural centers, in addition to the importance of studying the types of these relationships, the recognition of its socio-cultural, socio-cultural and spatial effects on urban and rural development in the context of sustainable development of rural and urban areas It is very important. …”
    Get full text
    Article
  19. 3199

    The spatial relationship and influence mechanism of traditional villages and intangible cultural heritage: a case study of the upper reaches of the Yellow River Basin by Qianming Xue, Yuehao Huang

    Published 2025-02-01
    “…In contrast, ICH shows a “sparse south, dense center, and sparse north” distribution, with a lower degree of imbalance at the provincial level. (2) Although there is generally a high degree of spatial alignment between TVs and ICH, but at the provincial (or autonomous region) level, three types of regional displacements have been identified: high positive displacement, low positive displacement, and high negative displacement. (3) Factors such as altitude, river systems, temperature conditions, regional economy, accessibility, population density, urbanization rate, cultural characteristics, and funding policies significantly influence the spatial distribution of TVs and ICH. urbanization rate has a common influence and explanatory power on the spatial distribution of both TVsand ICH in the YRB, with altitude, financial policies, cultural history, and other factors having secondary influence and explanatory power.These factors are crucial in determining the pathways for their integrated development.…”
    Get full text
    Article
  20. 3200