Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.12394/17078
Title: Optimization of the Warehouse Logistics System, through the Application of Lean Warehouse and Machine Learning Algorithms
Other Titles: Optimización del Sistema logístico de almacenes, mediante la aplicación de algoritmos Lean Warehouse y Machine Learning
Authors: Ponce Alcocer, Andrea Isabel
Orcon Gomez, Diego Kensey
Gonzalo Lujan, Karla Veronica
Vilchez Baca, Herbert Antonio
metadata.dc.contributor.advisor: Vílchez Baca, Herbert Antonio
Keywords: Almacén lean
Lean warehouse
Aprendizaje automático
Machine learning
Optimización logística
Logistics optimization
Algoritmos
Algorithms
Pronóstico
Forecasting
Agrupamiento
Clustering
Publisher: Universidad Continental
Issue Date: 2025
metadata.dc.date.available: 25-Apr-2025
Citation: Ponce, A., Orcon, D., Gonzalo, K. & Vilchez, H. (2025). Optimization of the Warehouse Logistics System, through the Application of Lean Warehouse and Machine Learning Algorithms [Tesis de licenciatura, Universidad Continental]. Repositorio Institucional Continental. https://repositorio.continental.edu.pe/handle/20.500.12394/17078
metadata.dc.identifier.doi: https://doi.org/10.1007/978-3-031-70981-4_57
Abstract: Abstract. In 2022, the alcoholic beverage market in Peru experienced Growth due to the reduction of COVID-19 pandemic restrictions is pro- jected to reach pre-pandemic demand levels by 2026. In this context, logistics efficiency becomes crucial for profitability and customer satis- faction. This study proposes the combination of Lean Warehouse and Machine Learning algorithms to optimize the warehouse logistics sys- tem, it covers the preliminary analysis, implementation, and analysis of results, various Lean Warehouse techniques were applied, such as 5S, SLP, FEFO, and multicriteria ABC analysis, at the same time, Ma- chine Learning algorithms were applied, such as forecasting (SARIMA- LSTM), which allowed accurate forecasts of future demand and favored the distribution of the warehouse, as well as clustering (K-means) for the optimal grouping of products according to their expiration date. Key Performance Indicators (KPIs) were also introduced to gauge the success and efficiency of the logistics system. The results of the research showed substantial improvements in logistics efficiency, such as a reduc- tion in processing time per order guide by 103 minutes and an increase in process flow by 32.56%. These improvements benefited the company in terms of costs and efficiency, with a reduction in lost sales of S/34,386.75. Organizational adaptation and continuous management are essential to maintain and improve results over time. Keywords: Lean Warehouse · Machine Learning · Logistics optimiza- tion.
metadata.dc.relation: https://link.springer.com/chapter/10.1007/978-3-031-70981-4_57
Extension: p. 1-21
metadata.dc.rights.accessRights: Acceso restringido
metadata.dc.source: Universidad Continental
Repositorio Institucional - Continental
Appears in Collections:Tesis

Files in This Item:
File Description SizeFormat 
IV_FIN_108_103_Autorización_2025.pdf
  Restricted Access
Autorización138.78 kBAdobe PDFView/Open Request a copy
Informe_Turnitin.pdf
  Restricted Access
Informe de Turnitin3.15 MBAdobe PDFView/Open Request a copy
IV_FIN_108_103_Ponce_Orcon_Gonzalo_Vilchez_2025.pdfResumen613.47 kBAdobe PDF
View/Open


This item is licensed under a Creative Commons License Creative Commons