Mohsin Akm, Hongzhen Lei, Masum Iqbal Mohammed, Salim Zahir Rayhan, Hossain Alamgir, Al Kafy Abdullah
International Business School, Shaanxi Normal University, Xi'an, China.
Faculty of Business and Entrepreneurship, Daffodil International University, Dhaka, Bangladesh.
Waste Manag Res. 2022 Jul;40(7):870-881. doi: 10.1177/0734242X211061443. Epub 2021 Nov 25.
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).
预测电子垃圾回收规模是政府制定循环经济发展规划及相关补贴政策以及企业评估资源回收和优化生产能力的基础。在本文中,基于“分解 - 整合”的理念,考虑到季度电子垃圾回收规模数据的季节性数据特征可能导致传统单一模型的预测误差较大且预测结果不一致,提出了用于电子垃圾回收规模预测的CH - X12 / STL - X框架。首先,基于卡诺瓦 - 汉森(CH)检验识别电子垃圾回收规模时间序列的季节性数据特征,然后使用X12或基于黄土的季节性趋势分解程序(STL)模型提取适合季节性分解的时间序列以获取季节性成分。接着,使用霍尔特 - 温特斯模型预测季节性成分,使用支持向量回归(SVR)模型预测其他成分。最后,将各成分的预测结果进行线性求和以获得最终预测结果。实证结果表明,所提出的CH - X12 / STL - X预测框架能够更好地满足不同季节性数据特征驱动的时间序列预测的建模要求,并且比传统单一模型(霍尔特 - 温特斯模型、季节性自回归积分滑动平均模型和SVR模型)具有更好、更稳定的预测性能。