Qualitative phase space reconstruction analysis of supply-chain inventor time series

Authors

  • Chenxi Shao University of Science and Technology of China
  • Lizhong Wang University of Science and Technology of China
  • Lipeng Xiao University of Science and Technology of China
  • Jinliang Wu University of Science and Technology of China

Keywords:

data mining, phase space, qualitative forecasting, quantitative forecasting, supply chain management

Abstract

The economy systems are usually too complex to be analysed, but some advanced methods have been developed in order to do so, such as system dynamics modelling, multi-agent modelling, complex adaptive system modelling and qualitative modelling. In this paper, we considered a supply-chain (SC) system including several kinds of products. Using historic suppliers' demand data, we firstly applied the phase space analysis method and then used qualitative analysis to improve the complex system's performance. Quantitative methods can forecast the quantitative SC demands, but they cannot indicate the qualitative aspects of SC, so when we apply quantitative methods to a SC system we get only numerous data of demand. By contrast, qualitative methods can show the qualitative change and trend of the SC demand. We therefore used qualitative methods to improve the quantitative forecasting results. Comparing the quantitative only method and the combined method used in this paper, we found that the combined method is far more accurate. Not only is the inventory cost lower, but the forecasting accuracy is also better.

Author Biography

  • Chenxi Shao, University of Science and Technology of China
    Computer Science Department, University of Science and Technology of China, Hefei, Anhui, 230027, China

Published

2010-11-19

Issue

Section

Research Articles

How to Cite

Shao, C., Wang, L., Xiao, L., & Wu, J. (2010). Qualitative phase space reconstruction analysis of supply-chain inventor time series. South African Journal of Science, 106(11/12), 7 pages. https://sajs.co.za/article/view/10097
Views
  • Abstract 145
  • PDF (673 KB) 110
  • HTML 82
  • XML 60
  • Figure 3 0
  • Figure 1 1
  • Figure 2 0
  • Figure 4 0
  • Figure 5 0
  • Figure 6 0
  • Figure 7 0