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Logistics Demand Forecast in Shandong Province Based on Grey Forecast
This paper takes the logistics demand in Shandong Province as the research object, selects the freight turnover volume as the key indicator. After collecting and sorting out the logistics data in recent years, it analyzes and builds models by using the grey prediction model to clarify its development trend and obtain the prediction results, which show that the freight turnover volume gradually increases in the future and the logistics demand presents a growing trend. This research has important guiding significance for the logistics planning and resource allocation in Shandong Province, and is conducive to the relevant departments to reasonably arrange resources and improve logistics efficiency.
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Supporting Agencies
- Funding: This research received no external funding.