Publicado en 3C Empresa – Volume 12, Issue 1 (Ed. 51)
Autores
Xiaoshan Yang
Weiwei Guan
Resumen
Abstract
The growing data age is reflected in all aspects of today's society. In the field of logistics, especially when the road conditions in urban areas are complex, how to select the optimal distribution path and reduce the distribution time is a problem worthy of attention. Aiming at the problems faced by traditional algorithms in solving the distribution of logistics vehicles in urban areas, however, the method based on regional chain technology can better solve the path optimization problem. A deep reinforcement learning algorithm based on attention mechanism and LSTM model is designed and applied to the distribution path planning of logistics vehicles. The distribution optimization path of logistics vehicles is obtained through sample training experiments, Thus, it provides a new idea for the optimization of logistics distribution path.
Artículo
Palabras clave
Keywords
Regional chain technology; Logistics distribution route; Optimization; Attention mechanism; LSTM modelArticulos relacionados
- The Influence of Using Sustainable Materials on Paving Cost of AL-Kut-Maysan Highway Using Cost-Benefit Analysis
- Reducing the costs of sustainable development in industrial companies (an applied study)
- Use the Value Chain Analysis to Improve the Quality of Health Service
- Metal Oxide Coating On Biodegradable Magnesium Alloys
- Upgrading The Environmental Properties Of Kirkuk Kerosene Using Glacial Acetic Acid
- Experimental And Theoretical Investigation Of Single Slope Solar Still Coupled With Etc With Stainless-Steel Reflector With Central V-Groove
- An Experimental Study On Friction Stir Welding Of Aluminum-Magnesium Alloys For Improved Mechanical Properties Of Tailor Welded Blanks
- Water – food and energy nexus systems: analysis integrated policy making tool
- Forecasting Performance In Iraqi Stock Exchange For The Oil Price Throw The GM (1,2) Model And The Impacts On Economic Growth
- Antibacterial activity of some plants extracts against proteus mirabilis bacteria