Tab2vox: CNN-Based Multivariate Multilevel Demand Forecasting Framework by Tabular-To-Voxel Image Conversion

被引:3
作者
Lee, Euna [1 ,2 ]
Nam, Myungwoo [1 ]
Lee, Hongchul [1 ]
机构
[1] Korea Univ, Sch Ind & Management Engn, Seoul 02841, South Korea
[2] Korea Inst Def Anal, Ctr Def Resource Management, Seoul 02455, South Korea
关键词
demand forecasting; spare parts; neural architecture search (NAS); differentiable architecture search (DARTS); 3D CNN; tabular to image conversion;
D O I
10.3390/su141811745
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Since demand is influenced by a wide variety of causes, it is necessary to decompose the explanatory variables into different levels, extract their relationships effectively, and reflect them in the forecast. In particular, this contextual information can be very useful in demand forecasting with large demand volatility or intermittent demand patterns. Convolutional neural networks (CNNs) have been successfully used in many fields where important information in data is represented by images. CNNs are powerful because they accept samples as images and use adjacent voxel sets to integrate multi-dimensional important information and learn important features. On the other hand, although the demand-forecasting model has been improved, the input data is still limited in its tabular form and is not suitable for CNN modeling. In this study, we propose a Tab2vox neural architecture search (NAS) model as a method to convert a high-dimensional tabular sample into a well-formed 3D voxel image and use it in a 3D CNN network. For each image representation, the 3D CNN forecasting model proposed from the Tab2vox framework showed superior performance, compared to the existing time series and machine learning techniques using tabular data, and the latest image transformation studies.
引用
收藏
页数:20
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