| Literature DB >> 35463274 |
Dan He1.
Abstract
How to realize the intelligence of logistics distribution is a hot research topic at present. How to reasonably allocate vehicles, optimize driving routes and travel time, deliver goods to customers on time at the lowest cost, and realize efficient and low-cost operation of the logistics distribution system has always been a problem in academia and industry for many years. Logistics enterprises face problems such as low efficiency of logistics operation, lack of scientific rationality of logistics resource planning, and lack of overall optimization of logistics management operation mode. These are severe tests that steel companies must accept. Under the background of logistics supply chain, the integrated service platform of logistics supply chain has become an urgent research topic. This study takes a steel enterprise as the main research background. On this basis, the two core modules of warehousing and distribution in the logistics business of iron and steel enterprises are qualitatively analyzed, the concept of business process reengineering is proposed, and the logistics supply chain of iron and steel enterprises is established. The concept of comprehensive service platform is realized through RFID technology. In addition, this study conducts a comprehensive analysis and research on the logistics distribution path optimization and vehicle scheduling problem, designs and implements a logistics vehicle scheduling management system, and then adopts the multiobjective method to solve the logistics distribution path planning problem, SMEs. Genetic algorithm and a simulation decision-making subsystem suitable for this problem are designed, which can better solve the problem of route optimization and vehicle scheduling in small-scale distribution.Entities:
Mesh:
Substances:
Year: 2022 PMID: 35463274 PMCID: PMC9023198 DOI: 10.1155/2022/9955726
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1The role of the logistics system.
Figure 2Different cost on supply chain.
The information of test datasets.
| Dataset | # car | # load of cars | Warehouse window | Time of service |
|---|---|---|---|---|
| RC200 | 30 | 1000 | (0, 1000) | 20 |
| C300 | 30 | 800 | (0, 3590) | 100 |
| R601 | 30 | 300 | (0, 300) | 17 |
Figure 3The relation curve between the traffic and transportation cost.