The Application of Innovation and Catapult Research Techniques to Future Smart Cities Assessment Framework

W. Wey, C. Ching
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引用次数: 4

Abstract

For the past few years, the concept of urban sustainability and smart city has been viewed as a crucial way to solve the problem regarding urbanization, and the global city thus ranks it as a future development goal. With the implementation of the above strategies, the construction of relevant city assessment tools is essential. However, the assessment framework of urban sustainability focuses on the aspect of environment and society, while smart city puts emphasis on economic and social indicators. Therefore, integrating the two concepts as “Smart Sustainable City” and constructing a related evaluation model would be more comprehensive. Moreover, the development of “Big Data” theory allows city planners to interpret and apply large amounts of data collected from various sources. Under this opportunity, the result of analyzing the actual big data to forecast the variance ratio of each indicator can be used as the objective basis to construct the model, which can increase the accuracy of the city assessment. Based on the big data analysis, this paper will construct an assessment framework of smart sustainable city in line with the future situation, and further conduct the model validation through city evaluation. First, this paper reviews the concepts and assessment framework of sustainable development and smart city in order to sum up the appropriate indicators to construct the model, and applies “Fuzzy Delphi Technique (FDT)” to select the indicators which are considered important regarding the smart sustainable city. In addition, “Data Mining” and “Analytic Network Process (ANP)” are used to predict the future variance ratio of smart sustainable city indicators and to apply the variance ratio regarding the future scenario to determine their weights. Finally, this paper will conduct an empirical analysis by assessing the smart sustainable level of cities, hoping to validate the model and propose related suggestions to promote the idea exchange of urban development.
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创新和弹射研究技术在未来智慧城市评估框架中的应用
在过去的几年里,城市可持续发展和智慧城市的概念被视为解决城市化问题的关键途径,因此全球城市将其列为未来的发展目标。随着上述战略的实施,相关城市评估工具的构建至关重要。然而,城市可持续性的评估框架侧重于环境和社会方面,而智慧城市则侧重于经济和社会指标。因此,将这两个概念整合为“智慧可持续城市”并构建相应的评价模型将会更加全面。此外,“大数据”理论的发展使城市规划者能够解释和应用从各种来源收集的大量数据。在此机会下,分析实际大数据预测各指标方差比的结果可作为构建模型的客观依据,提高城市评价的准确性。本文将在大数据分析的基础上,构建符合未来形势的智慧可持续城市评估框架,并通过城市评价进一步对模型进行验证。首先,本文回顾了可持续发展和智慧城市的概念和评价框架,总结了适合构建模型的指标,并运用模糊德尔菲法(FDT)选择了可持续智慧城市中认为重要的指标。此外,利用“数据挖掘”和“分析网络过程(ANP)”预测未来智慧可持续城市指标的方差比,并将方差比应用于未来场景,确定其权重。最后,本文将通过评估城市的智慧可持续水平进行实证分析,希望对模型进行验证,并提出相关建议,促进城市发展的思想交流。
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