Javascript must be enabled to continue!
Analysing trends of computational urban science and data science approaches for sustainable development
View through CrossRef
AbstractUrban computing with a data science approaches can play a pivotal role in understaning and analyzing the potential of these methods for strategic, short-term, and sustainable planning. The recent development in urban areas have progressed towards the data-driven smart sustainable approaches to resolve the complexities around urban areas. The urban system faces severe challenges and these are complicated to capture, predict, resolve and deliver. The current study advances an unconventional decision-support framework to integrate the complexities of science, urban sustainability theories, and data science, with a data-intensive science to incorporate grassroots initiatives for a top-down policies. This work will influence the urban data analytics to optimize the designs and solutions to enhance sustainability, efficiency, resilience, equity, and quality of life. This work emphasizes the significant trends of data-driven and model-driven decision support systems. This will help to address and create an optimal solution for multifaceted challenges of an urban setup within the analytical framework. The analytical investigations includes the research about land use prediction, environmental monitoring, transportation modelling, and social equity analysis. The fusion of urban computing, intelligence, and sustainability science is expected to resolve and contribute in shaping resilient, equitable, and future environmentally sensible eco-cities. It examines the emerging trends in the domain of computational urban science and data science approaches for sustainable development being utilized to address urban challenges including resource management, environmental impact, and social equity. The analysis of recent improvements and case studies highlights the potential of data-driven insights with computational models for promoting resilient sustainable urban environments, towards more effective and informed policy-making. Thus, this work explores the integration of computational urban science and data science methodologies to advance sustainable development.
Springer Science and Business Media LLC
Title: Analysing trends of computational urban science and data science approaches for sustainable development
Description:
AbstractUrban computing with a data science approaches can play a pivotal role in understaning and analyzing the potential of these methods for strategic, short-term, and sustainable planning.
The recent development in urban areas have progressed towards the data-driven smart sustainable approaches to resolve the complexities around urban areas.
The urban system faces severe challenges and these are complicated to capture, predict, resolve and deliver.
The current study advances an unconventional decision-support framework to integrate the complexities of science, urban sustainability theories, and data science, with a data-intensive science to incorporate grassroots initiatives for a top-down policies.
This work will influence the urban data analytics to optimize the designs and solutions to enhance sustainability, efficiency, resilience, equity, and quality of life.
This work emphasizes the significant trends of data-driven and model-driven decision support systems.
This will help to address and create an optimal solution for multifaceted challenges of an urban setup within the analytical framework.
The analytical investigations includes the research about land use prediction, environmental monitoring, transportation modelling, and social equity analysis.
The fusion of urban computing, intelligence, and sustainability science is expected to resolve and contribute in shaping resilient, equitable, and future environmentally sensible eco-cities.
It examines the emerging trends in the domain of computational urban science and data science approaches for sustainable development being utilized to address urban challenges including resource management, environmental impact, and social equity.
The analysis of recent improvements and case studies highlights the potential of data-driven insights with computational models for promoting resilient sustainable urban environments, towards more effective and informed policy-making.
Thus, this work explores the integration of computational urban science and data science methodologies to advance sustainable development.
Related Results
Cash‐based approaches in humanitarian emergencies: a systematic review
Cash‐based approaches in humanitarian emergencies: a systematic review
This Campbell systematic review examines the effectiveness, efficiency and implementation of cash transfers in humanitarian settings. The review summarises evidence from five studi...
Temporal Variation of Ecological Factors Affecting Bird Species Richness in Urban and Peri-Urban Forests in a Changing Environment: A Case Study from Milan (Northern Italy)
Temporal Variation of Ecological Factors Affecting Bird Species Richness in Urban and Peri-Urban Forests in a Changing Environment: A Case Study from Milan (Northern Italy)
Urban and peri-urban forests determine different habitat services for biodiversity according to their characteristics. In this study, we relate ecological characteristics of urban ...
Urban Agriculture: Exploring Its Potential, Challenges, and Socio-Economic Impacts
Urban Agriculture: Exploring Its Potential, Challenges, and Socio-Economic Impacts
Urban agriculture, the practice of growing and cultivating food within urban and peri-urban areas, has garnered increasing attention in recent years due to its potential to address...
Computational urban science needs to go beyond computational
Computational urban science needs to go beyond computational
AbstractIn this paper, I advocate for a radical expansion of computational urban science to encompass a multidisciplinary, human-centered approach, addressing the inadequacies of t...
Synergetic Urban Landscape Planning in Rotterdam
Synergetic Urban Landscape Planning in Rotterdam
In this PhD research, the major environmental challenges of our time, such as climate change, sustainable energy transition and scarcity of resources, are approached from a spatial...
Urban living environment assessment index system based on psychological security
Urban living environment assessment index system based on psychological security
With the development of urbanization and the continuous development, construction and renewal of the city, the living environment of human beings has also undergone tremendous chan...
URBAN WATER MANAGEMENT: A REVIEW OF SUSTAINABLE PRACTICES IN THE USA
URBAN WATER MANAGEMENT: A REVIEW OF SUSTAINABLE PRACTICES IN THE USA
This comprehensive review explores the landscape of Urban Water Management in the United States, focusing on sustainable practices aimed at addressing the challenges posed by rapid...

