TY - JOUR
T1 - Forecasting e-waste recovery scale driven by seasonal data characteristics
T2 - A decomposition-ensemble approach
AU - Mohsin, A. K.M.
AU - Hongzhen, Lei
AU - Masum Iqbal, Mohammed
AU - Salim, Zahir Rayhan
AU - Hossain, Alamgir
AU - Al Kafy, Abdullah
N1 - Publisher Copyright:
© The Author(s) 2021.
PY - 2022/7
Y1 - 2022/7
N2 - Forecasting the scale of e-waste recycling is the basis for the government to formulate the development plan of circular economy and relevant subsidy policies and enterprises to evaluate resource recovery and optimise production capacity. In this article, the CH-X12 /STL-X framework for e-waste recycling scale prediction is proposed based on the idea of ‘decomposition-integration’, considering that the seasonal data characteristics of quarterly e-waste recycling scale data may lead to large forecasting errors and inconsistent forecasting results of a traditional single model. First, the seasonal data characteristics of the time series of e-waste recovery scale are identified based on Canova–Hansen (CH) test, and then the time series suitable for seasonal decomposition is extracted with X12 or seasonal-trend decomposition procedure based on loess (STL) model for seasonal components. Then, the Holt–Winters model was used to predict the seasonal component, and the support vector regression (SVR) model was used to predict the other components. Finally, the linear sum of the prediction results of each component is used to obtain the final prediction result. The empirical results show that the proposed CH-X12/STL-X forecasting framework can better meet the modelling requirements for time-series forecasting driven by different seasonal data characteristics and has better and more stable forecasting performance than traditional single models (Holt–Winters model, seasonal autoregressive integrated moving average model and SVR model).
AB - Forecasting the scale of e-waste recycling is the basis for the government to formulate the development plan of circular economy and relevant subsidy policies and enterprises to evaluate resource recovery and optimise production capacity. In this article, the CH-X12 /STL-X framework for e-waste recycling scale prediction is proposed based on the idea of ‘decomposition-integration’, considering that the seasonal data characteristics of quarterly e-waste recycling scale data may lead to large forecasting errors and inconsistent forecasting results of a traditional single model. First, the seasonal data characteristics of the time series of e-waste recovery scale are identified based on Canova–Hansen (CH) test, and then the time series suitable for seasonal decomposition is extracted with X12 or seasonal-trend decomposition procedure based on loess (STL) model for seasonal components. Then, the Holt–Winters model was used to predict the seasonal component, and the support vector regression (SVR) model was used to predict the other components. Finally, the linear sum of the prediction results of each component is used to obtain the final prediction result. The empirical results show that the proposed CH-X12/STL-X forecasting framework can better meet the modelling requirements for time-series forecasting driven by different seasonal data characteristics and has better and more stable forecasting performance than traditional single models (Holt–Winters model, seasonal autoregressive integrated moving average model and SVR model).
KW - data trait-driven modelling
KW - decomposition-integration
KW - E-waste
KW - integrated forecasting
KW - seasonal decomposition
KW - Time Factors
KW - Recycling
KW - Seasons
KW - Electronic Waste
KW - Forecasting
UR - http://www.scopus.com/inward/record.url?scp=85120625746&partnerID=8YFLogxK
U2 - 10.1177/0734242X211061443
DO - 10.1177/0734242X211061443
M3 - Article
C2 - 34823396
AN - SCOPUS:85120625746
SN - 0734-242X
VL - 40
SP - 870
EP - 881
JO - Waste Management and Research
JF - Waste Management and Research
IS - 7
ER -