1. Predictive modelling as a tool for effective municipal waste management policy at different territorial levels
- Author
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Radovan Šomplák, Martin Rosecký, Gabriela Bulková, Josef Bednář, Jan Slavík, and Jiří Kalina
- Subjects
Generalized linear model ,Environmental Engineering ,Municipal solid waste ,media_common.quotation_subject ,0208 environmental biotechnology ,Public policy ,02 engineering and technology ,010501 environmental sciences ,Management, Monitoring, Policy and Law ,Solid Waste ,01 natural sciences ,12. Responsible consumption ,Waste Management ,11. Sustainability ,Linear regression ,Humans ,Recycling ,Quality (business) ,Cities ,Waste Management and Disposal ,Czech Republic ,0105 earth and related environmental sciences ,media_common ,Circular economy ,1. No poverty ,General Medicine ,Environmental economics ,Refuse Disposal ,020801 environmental engineering ,Policy ,13. Climate action ,Data quality ,Business ,Predictive modelling - Abstract
Nowadays, the European municipal waste management policy based on the circular economy paradigm demands the closing of material and financial loops at all territorial levels of public administration. The effective planning of treatment capacities (especially sorting plants, recycling, and energy recovery facilities) and municipal waste management policy requires an accurate prognosis of municipal waste generation, and therefore, the knowledge of behavioral, socio-economic, and demographic factors influencing the waste management (and recycling) behavior of households, and other municipal waste producers. To enable public bodies at different territorial levels to undertake an effective action resulting in circular economy we evaluated various factors influencing the generation of municipal waste fractions at regional, micro-regional and municipal level in the Czech Republic. Principal components were used as input for traditional models (multivariable linear regression, generalized linear model) as well as tree-based machine learning models (regression trees, random forest, gradient boosted regression trees). Study results suggest that the linear regression model usually offers a good trade-off between model accuracy and interpretability. When the most important goal of the prediction is supposed to be accuracy, the random forest is generally the best choice. The quality of developed models depends mostly on the chosen territorial level and municipal waste fraction. The performance of these models deteriorates significantly for lower territorial levels because of worse data quality and bigger variability. Only the age structure seems to be important across territorial levels and municipal waste fractions. Nevertheless, also other factors are of high significance in explaining the generation of municipal waste fractions at different territorial levels (e.g. number of economic subjects, expenditures, population density and the level of education). Therefore, there is not one single effective public policy dealing with circular economy strategy that fits all territorial levels. Public representatives should focus on policies effective at specific territorial level. However, performance of the models is poor for lower territorial levels (municipality and micro-regions). Thus, results for municipalities and micro-regions are weak and should be treated as such.
- Published
- 2021
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