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Waste production classification and analysis: a PCA-induced methodology

机译:废物生产分类和分析:PCA诱导的方法

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Knowledge of waste composition and production is a requirement to build an efficient waste management scenario. Analysis of this data at a detailed level of observation (regional or communal) is useful to create adapted local scenarios, thus optimizing the overall waste management. However, working at a detailed level of observation multiplies the number of scenarios to build. In this article, we use Principal Components Analysis (PCA) to identify similarities between local administrative areas. By grouping administrative areas based on their waste production, this analysis is an efficient way to reduce the number of local waste management scenarios to define and it also favors cooperation among similar administrative areas. To illustrate our methodology, we focus on the specific case of Reunion Island, which is composed of 24 municipalities. The PCA analysis enabled to identify 5 groups of municipalities, thus reducing the number of required scenarios to build drastically.
机译:垃圾组成和生产知识是建立高效的废物管理情景的要求。在详细观察(区域或公共)的详细观察水平(区域或公共)的分析是有用的,可创建适应的本地方案,从而优化整体废物管理。但是,在详细的观察水平上工作乘以构建的场景的数量。在本文中,我们使用主成分分析(PCA)来识别当地行政区域之间的相似性。通过基于废物生产进行分组的行政区域,这种分析是减少定义当地废物管理情景的数量的有效方法,也有利于在类似的行政区域之间进行合作。为了说明我们的方法,我们专注于汇川岛的具体情况,由24个市政组成。 PCA分析使识别5组城市,从而减少了急剧构建所需方案的数量。

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