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Title Spatial clustering of waste reuse in a circular economy: A spatial autocorrelation analysis on locations of waste reuse in the Netherlands using global and local Moran's I
ID_Doc 28726
Authors Tsui, TY; Derumigny, A; Peck, D; van Timmeren, A; Wandl, A
Title Spatial clustering of waste reuse in a circular economy: A spatial autocorrelation analysis on locations of waste reuse in the Netherlands using global and local Moran's I
Year 2022
Published
DOI 10.3389/fbuil.2022.954642
Abstract In recent years, implementing a circular economy in cities has been considered by policy makers as a potential solution for achieving sustainability. Existing literature on circular cities is mainly focused on two perspectives: urban governance and urban metabolism. Both these perspectives, to some extent, miss an understanding of space. A spatial perspective is important because circular activities, such as the recycling, reuse, or storage of materials, require space and have a location. It is therefore useful to understand where circular activities are located, and how they are affected by their location and surrounding geography. This study therefore aims to understand the existing state of waste reuse activities in the Netherlands from a spatial perspective, by analyzing the degree, scale, and locations of spatial clusters of waste reuse. This was done by measuring the spatial autocorrelation of waste reuse locations using global and local Moran's I, with waste reuse data from the national waste registry of the Netherlands. The analysis was done for 10 material types: minerals, plastic, wood and paper, fertilizer, food, machinery and electronics, metal, mixed construction materials, glass, and textile. It was found that all materials except for glass and textiles formed spatial clusters. By varying the grid cell sizes used for data aggregation, it was found that different materials had different 'best fir cell sizes where spatial clustering was the strongest. The best fit cell size is similar to 7 km for materials associated with construction and agricultural industries, and similar to 20-25 km for plastic and metals.The best fit cell sizes indicate the average distance of companies from each other within clusters, and suggest a suitable spatial resolution at which the material can be understood. Hotspot maps were also produced for each material to show where reuse activities are most spatially concentrated.
Author Keywords spatial clustering analysis; circular economy; urban metabolism; waste data; circular cities; Moran's I autocorrelation; hotspot analysis
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Emerging Sources Citation Index (ESCI)
EID WOS:000874024900001
WoS Category Construction & Building Technology; Engineering, Civil
Research Area Construction & Building Technology; Engineering
PDF https://www.frontiersin.org/articles/10.3389/fbuil.2022.954642/pdf
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