Solid waste generation indicators, per capita, in Amazonian countries

被引:0
作者
Carlos Armando Reyes Flores
Alan Cavalcanti da Cunha
Helenilza Ferreira Albuquerque Cunha
机构
[1] Federal University of Amapá,Post
[2] Federal University of Amapá,Graduate Program in Tropical Biodiversity (PPGBIO)
[3] Federal University of Amapá,Post
[4] Federal University of Amapá,Graduate Program in Environmental Sciences (PPGCA)
来源
Environmental Science and Pollution Research | 2022年 / 29卷
关键词
Municipal solid waste; Waste management; Final disposal; Socioeconomic indicators; Regional development; Statistical analysis;
D O I
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中图分类号
学科分类号
摘要
Countries participating in the Amazon Cooperation Treaty Organization have few options for the environmentally appropriate final disposal of municipal solid waste. Thus, sustainable practices aimed at reducing the negative effects of such a disposal on the environment are complex and hard to accomplish, since solid waste generation per capita proportionally increases as populations grow (≈ 2.7% > world average), mainly in countries inserted in Amazon Cooperation Treaty Organization. Thus, demographic, socioeconomic, management, and ecological factors represented by 18 independent variables were statistically analyzed to explain waste per capita variation in Amazonian countries and sub-regions. Multiple Kruskal–Wallis tests were applied; 13 of them recorded significant results (p < 0.05). Subsequently, simple and multivariate regression analyses were carried out by taking into consideration waste per capita and significant variables. Simple regression results recorded for variables “IAC” and “Gini index” were significant (RIAC2 = 60.09%, RGini2 = 30.83%), with emphasis on “Amazon biome” (DF = 33, p < 0.01, RBiome2 = 5.34%). Multivariate models resulted in wide explainability variation, depending on the number and type of available variable (54.47% ≤ Raj2 ≤ 70.83%), with emphasis on “IAC,” “Ptot,” “Purb,” “Wton,” “Lon,” Area, “HDI,” “Gini,” and “SDG11” (p < 0.01). In conclusion, waste per capita estimation models can present variations and geographical interdependencies due to different variables and factors that reflect the current public policies and municipal solid waste management practices.
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页码:33138 / 33151
页数:13
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