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Advisor(s)
Abstract(s)
This work develops an artificial neural network (ANN) model using genetic algorithms to estimate the
annual amount (kg/inhabitant/year) of separately-collected household packaging waste. The ANN model
comprises one input layer, one hidden layer with seven neurons and one output layer. Ten variables
affecting the amount of separately-collected packaging waste were identified and used in the ANN
model. These variables are related to the level of education of the population, the size and level of urbanisation of the municipality, social aspects related to poverty and economic power and factors intrinsic
to the waste collection service. A comparison between ANN and regression models for the estimation of
packaging waste is also carried out. The performance of the proposed ANN model for a data set of 42
municipalities located in the centre of Portugal, measured by the R2
, is 0.98. This value is 34% higher than
the best regression model applied to the same data set (R2 ¼ 0.73), indicating that ANN has a significantly
higher explanatory power than traditional regression techniques. Another advantage is that ANN is not
as sensitive to outliers as regression. However, ANN is more complex, has a higher number of variables,
and the model development and interpretation of the results are more difficult. Nevertheless, the higher
performance of ANN makes it a valuable tool in the definition of strategies to increase recycling and
achieve circular economy goals.
Description
Keywords
Municipal solid waste ANN Genetic algorithm Regression model Urban waste Recycling