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FORECAST DEMAND FOR AUTOMOBILES
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作者 Ying Zi 《China's Foreign Trade》 1996年第7期16-16,共1页
China’s demand for automobiles fallsinto three types:trucks,buses andcars.According to statistics fromdepartment concerned,China’s demand andquantity in the next 15 years is as follows: 1. The demand for trucks will... China’s demand for automobiles fallsinto three types:trucks,buses andcars.According to statistics fromdepartment concerned,China’s demand andquantity in the next 15 years is as follows: 1. The demand for trucks will growsteadily,in line with the growth of the nationaleconomy.The development of 展开更多
关键词 FORECAST demand FOR automobileS WILL LINE
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A Study on an Extensive Hierarchical Model for Demand Forecasting of Automobile Components
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作者 Cisse Sory Ibrahima Jianwu Xue Thierno Gueye 《Journal of Management Science & Engineering Research》 2021年第2期40-48,共9页
Demand forecasting and big data analytics in supply chain management are gaining interest.This is attributed to the wide range of big data analytics in supply chain management,in addition to demand forecasting,and beh... Demand forecasting and big data analytics in supply chain management are gaining interest.This is attributed to the wide range of big data analytics in supply chain management,in addition to demand forecasting,and behavioral analysis.In this article,we studied the application of big data analytics forecasting in supply chain demand forecasting in the automotive parts industry to propose classifications of these applications,identify gaps,and provide ideas for future research.Algorithms will then be classified and then applied in supply chain management such as neural networks,k-nearest neighbors,time series forecasting,clustering,regression analysis,support vector regression and support vector machines.An extensive hierarchical model for short-term auto parts demand assess-ment was employed to avoid the shortcomings of the earlier models and to close the gap that regarded mainly a single time series.The concept of extensive relevance assessment was proposed,and subsequently methods to reflect the relevance of automotive demand factors were discussed.Using a wide range of skills,the factors and co-factors are expressed in the form of a correlation characteristic matrix to ensure the degree of influence of each factor on the demand for automotive components.Then,it is compared with the existing data and predicted the short-term historical data.The result proved the predictive error is less than 6%,which supports the validity of the prediction method.This research offers the basis for the macroeconomic regulation of the government and the production of auto parts manufacturers. 展开更多
关键词 demand forecasting Supply chain management automobile components ALGORITHM Continuous time model demand forecasting Supply chain management automobile components Algorithm Continuous time model
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