7 results on '"Guan, ChengHe"'
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2. Urban infrastructure design principles for connected and autonomous vehicles: a case study of Oxford, UK.
- Author
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Liu, Huazhen, Yang, Miao, Guan, ChengHe, Chen, Yi Samuel, Keith, Michael, You, Meizi, and Menendez, Monica
- Subjects
URBAN planning ,AUTONOMOUS vehicles ,CITIES & towns ,URBANIZATION ,INFRASTRUCTURE funds - Abstract
Connected and Autonomous Vehicles (CAVs) are reshaping urban systems, demanding substantial computational support. While existing research emphasizes the significance of establishing physical and virtual infrastructure to facilitate CAV integration, a comprehensive framework for designing CAV-related infrastructure principles remains largely absent. This paper introduces a holistic framework that addresses gaps in current literature by presenting principles for the design of CAV-related infrastructure. We identify diverse urban infrastructure types crucial for CAVs, each characterized by intricate considerations. Deriving from existing literature, we introduce five principles to guide investments in physical infrastructure, complemented by four principles specific to virtual infrastructure. These principles are expected to evolve with CAV development and associated technology advancements. Furthermore, we exemplify the application of these principles through a case study in Oxford, UK. In doing so, we assess urban conditions, identify representative streets, and craft CAV-related urban infrastructure tailored to distinct street characteristics. This framework stands as a valuable reference for cities worldwide as they prepare for the increasing adoption of CAVs. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
3. Spatial distribution of high-rise buildings and its relationship to public transit development in Shanghai.
- Author
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Guan, ChengHe
- Subjects
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PUBLIC transit , *SKYSCRAPERS , *URBAN planning , *LAND use , *RAILROAD station design & construction ,DEVELOPED countries - Abstract
The relationship between dense urban development, often represented by high-rise buildings, and its location vis-à-vis metro stations reflects the connection between transportation infrastructure and land use intensity. Existing literature on high-rise buildings has focused either on developed countries or on cities where urban and public transit developments have occurred in an uncoordinated manner. This paper examines the following questions: What is the spatial proximity and spatial correlation between high-rise buildings and metro stations in different stages of development in various parts of the city? What were some of the factors that resulted in the observed patterns? The results suggest that buildings constructed after 2000 and buildings within the urban core/Shanghai Proper districts had a greater spatial proximity to the metro stations. However, the spatial correlation, measured by the number of high-rise buildings within a 500-m buffer from the nearest metro stations and the time-distance to these stations, is stronger in the outer districts than in the urban core. These differences can be accounted for by Shanghai's stages of urban development, the existence of metro infrastructure when high-rise development was undertaken, and the city's land use policies. This case study sheds light on the relationship between high-density developments and metro systems in other large cities in China and other developing countries where rapid urban development coincides with the establishment of a comprehensive public transit system. • Investigate the relationship between high-density development and its location vis-à-vis metro stations. • Understand the different spatial distribution patterns of high-rise buildings between suburban districts and urban core. • Application of the spatial proximity and spatial correlation measures between high-rise buildings and metro transit. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
4. Does local planning of fast-growing medium-sized towns lead to higher urban intensity or to sprawl? Cases from Zhejiang Province.
- Author
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Guan, ChengHe, Wang, Yuanzhao, Keith, Michael, Li, Ying, and Cao, Guangzhong
- Subjects
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URBAN planning , *URBAN growth , *URBAN density , *CITIES & towns , *GEOSPATIAL data , *SPATIAL arrangement - Abstract
Previous studies have frequently taken urban density as a surrogate for economic efficiency and applied composite scores such as urban intensity to assess the existing physical forms of towns. However, measures of intensity might nuance crude calculations of density while considering how such measures relate to future plans and the process of transformations. This paper used open source geospatial data and regulatory detailed planning to measure urban intensity of the existing and the planned. Spatial analytical techniques were applied to compute accessibility to destinations, building density, compactness of development, and diversity of land use function of sixteen specialty towns in China. The results showed that the regulatory detailed planning of these cases might not improve town planning measured by intensity in terms of spatial arrangement in the time horizon of 15–20 years. We found that well-integrated monocentric forms with the finer street network could potentially provide a more suitable spatial distribution for mid-sized towns measured by urban intensity, no matter whether the urban form is linear or center-spreading. Moreover, the comparison between the existing and the planned implies that the poly-centric urban form for mid-sized towns in China could end up with a lower score of urban intensity. We outline a framework of urban intensity measures that include analytical consideration of what is there now, planned to what is forthcoming, and conceptual in terms of time and space. • Differentiating urban intensity from density • Using urban block as the spatial unit of study is more accurate than a synthetic spatial grid. • Comparing existing and planned conditions of medium-sized towns • Evaluation and intervention of town planning policies [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
5. The impacts of the built environment on the incidence rate of COVID-19: A case study of King County, Washington.
- Author
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Liu, Chao, Liu, Zerun, and Guan, ChengHe
- Subjects
COVID-19 pandemic ,BUILT environment ,URBAN density ,SUSTAINABLE urban development ,OPEN spaces ,PEARSON correlation (Statistics) - Abstract
• Focus on the impacts of built environment on incidence rate of COVID-19 in metropolitan area. • Multiple linear regression and geographically weighted regression models are built at the ZIP code scale. • Socioeconomic indicators are the primary factors influencing COVID-19. • Built environment density is positively associated with incidence rates. • Increased open space is conducive to reducing incidence rates and overcrowded households leads to an increase in incidence rates. With COVID-19 prevalent worldwide, current studies have focused on the factors influencing the epidemic. In particular, the built environment deserves immediate attention to produce place-specific strategies to prevent the further spread of coronavirus. This research assessed the impact of the built environment on the incidence rate in King County, US and explored methods of researching infectious diseases in urban areas. Using principal component analysis and the Pearson correlation coefficient to process the data, we built multiple linear regression and geographically weighted regression models at the ZIP code scale. Results indicated that although socioeconomic indicators were the primary factors influencing COVID-19, the built environment affected COVID-19 cases from different aspects. Built environment density was positively associated with incidence rates. Specifically, increased open space was conducive to reducing incidence rates. Within each community, overcrowded households led to an increase in incidence rates. This study confirmed previous research into the importance of socioeconomic variables and extended the discussion on spatial and temporal variation in the impacts of urban density on the spread of COVID, effectively guiding sustainable urban development. [Display omitted] [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
6. Seasonal variations of park visitor volume and park service area in Tokyo: A mixed-method approach combining big data and field observations.
- Author
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Guan, ChengHe, Song, Jihoon, Keith, Michael, Zhang, Bo, Akiyama, Yuki, Da, Liangjun, Shibasaki, Ryosuke, and Sato, Taisei
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PARK use ,URBAN parks ,BIG data ,REMOTE-sensing images ,URBAN planning ,IMAGE analysis - Abstract
• Notable seasonal variations of park visitor volume and PSA existed in the six medium-sized urban parks in Tokyo. • However, the degree of variation also differed from park to park. • Spatial characteristics of parks were closely interlinked to seasonal cultural events and to visitor perceptions. • Consequently, the links extend to seasonal fluctuations of the park visit patterns. • This study deepens our understanding of seasonal variation of PSA, combining big data analyses and field observations. Urban green and open space are important components of achieving the goal of planning sustainable cities, by offering health benefits to urban dwellers and providing socio-economic and environmental benefits to society. Recent literature studied the usage of urban parks, however, few has addressed seasonal fluctuations of park visitor volume, let alone seasonal variations of home-park travel distances and park service areas. This paper not only empirically shows the seasonal variations of park visits but also examines links between the park visit patterns and spatial characteristics of the case parks. Applying spatial analysis methods to location data of over 1 million anonymous mobile phone samples collected from January to December 2011, we analyzed the seasonal variations in six medium-sized urban parks, of which size falls under the category of 'district parks,' in central Tokyo. We also conducted content analysis of a Japanese place review website to understand visitor perceptions of the case parks. On the other hand, park spatial characteristics data were collected and summarized through various ways including field observation and satellite image analysis. The results show that (1) while notable seasonal variations of park visitor volume and park service area existed in all case parks, the degree of variation also differed from park to park; (2) spatial characteristics of parks were closely interlinked to seasonal cultural events, to visitor perceptions, and consequently to seasonal fluctuations of the park visit patterns. Lessons learned from the policy perspective include highly diverse user groups visit these medium-sized urban parks than what the typical guidelines assume, and seasonal patterns of their visits considerably vary from park to park, interacting with spatial characteristics of the parks. Hence, the urban park planning process should consider specific and detailed characteristics of parks and allocate resources to respond to dynamic park visit patterns beyond generic guidelines. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
7. Analyzing the Spatiotemporal Uncertainty in Urbanization Predictions.
- Author
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Gómez, Jairo Alejandro, Guan, ChengHe, Tripathy, Pratyush, Duque, Juan Carlos, Passos, Santiago, Keith, Michael, Liu, Jialin, and Myint, Soe
- Subjects
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URBAN planning , *REMOTE sensing , *CITIES & towns , *GEOGRAPHIC information systems , *UNCERTAINTY , *URBAN growth - Abstract
With the availability of computational resources, geographical information systems, and remote sensing data, urban growth modeling has become a viable tool for predicting urbanization of cities and towns, regions, and nations around the world. This information allows policy makers, urban planners, environmental and civil organizations to make investments, design infrastructure, extend public utility networks, plan housing solutions, and mitigate adverse environmental impacts. Despite its importance, urban growth models often discard the spatiotemporal uncertainties in their prediction estimates. In this paper, we analyzed the uncertainty in the urban land predictions by comparing the outcomes of two different growth models, one based on a widely applied cellular automata model known as the SLEUTH CA and the other one based on a previously published machine learning framework. We selected these two models because they are complementary, the first is based on human knowledge and pre-defined and understandable policies while the second is more data-driven and might be less influenced by any a priori knowledge or bias. To test our methodology, we chose the cities of Jiaxing and Lishui in China because they are representative of new town planning policies and have different characteristics in terms of land extension, geographical conditions, growth rates, and economic drivers. We focused on the spatiotemporal uncertainty, understood as the inherent doubt in the predictions of where and when will a piece of land become urban, using the concepts of certainty area in space and certainty area in time. The proposed analyses in this paper aim to contribute to better urban planning exercises, and they can be extended to other cities worldwide. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
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