%ARamaswami, Anu [Humphrey School of Public Affairs University of Minnesota Twin Cities MN USA]%ARamaswami, Anu [Humphrey School of Public Affairs; University of Minnesota; Twin Cities MN USA]%AJiang, Daqian [Humphrey School of Public Affairs; University of Minnesota; Twin Cities MN USA]%AJiang, Daqian [Humphrey School of Public Affairs University of Minnesota Twin Cities MN USA]%ATong, Kangkang [Humphrey School of Public Affairs University of Minnesota Twin Cities MN USA]%ATong, Kangkang [Humphrey School of Public Affairs; University of Minnesota; Twin Cities MN USA]%AZhao, Jerry [Humphrey School of Public Affairs University of Minnesota Twin Cities MN USA]%AZhao, Jerry [Humphrey School of Public Affairs; University of Minnesota; Twin Cities MN USA]%BJournal Name: Journal of Industrial Ecology; Journal Volume: 22; Journal Issue: 2; Related Information: CHORUS Timestamp: 2023-09-24 11:39:23 %D2017%IWiley-Blackwell %JJournal Name: Journal of Industrial Ecology; Journal Volume: 22; Journal Issue: 2; Related Information: CHORUS Timestamp: 2023-09-24 11:39:23 %K %MOSTI ID: 10035248 %PMedium: X %TImpact of the Economic Structure of Cities on Urban Scaling Factors: Implications for Urban Material and Energy Flows in China %XSummary

We explore the population‐scaling and gross domestic product (GDP)‐scaling relationships of material and energy flow (MEF) parameters in different city types based on economic structure. Using migration‐corrected population data, we classify 233 Chinese city propers (Shiqu) as “highly industrial” (share of secondary GDP exceeds 63.9%), “highly commercial” (share of tertiary GDP exceeds 52.6%), and “mixed‐economy” (the remaining cities). We find that, first, the GDP population‐scaling factors differ in the different city types. Highly commercial and mixed‐economy cities exhibit superlinear GDP population‐scaling factors greater than 1, whereas highly industrial cities are sublinear. Second, GDP scaling better correlates with city‐wide MEF parameters in Chinese cities; these scaling relationships also show differences by city typology. Third, highly commercial cities are significantly different from others in demonstrating greater average per capita household income creation relative to per capita GDP. Further, highly industrial cities show an apparent cap in population. This also translates to lower densities in highly industrial cities compared to other types, showing a size effect on urban population density. Finally, a multiple variable regression of total household electricity showed significant and positive correlation with population, income effect, and urban form effect. With such multivariate modeling, the apparent superlinearity of household electricity use with respect to population is no longer observed. Our study enhances understanding of MEFs associated with Chinese cities and provides new insights into the patterns of scaling observed in different city types by economic structure. Results recommend dual scaling by GDP and by population for MEF parameters and suggest caution in applying universal scaling factors to all cities in a country.

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