TY - GEN
T1 - Forecasting and inventory model with Vertex (IA) to increase textile demand fulfillment
AU - Magallanes-Rodriguez, Alejandro Ruben
AU - Arias-Verde, Piero Alexander
AU - Maradiegue-Tuesta, Fernando
AU - Pinzon-Hoyos, Fabiola
N1 - Publisher Copyright:
© 2024 Copyright held by the owner/author(s).
PY - 2025/4/28
Y1 - 2025/4/28
N2 - Textile companies require engineering models that allow them to improve demand planning to reduce inventory breakage. The textile sector represents 8% of the participation of the manufacturing sector, which represents 12.5% of GDP, with the demand for textile garments standing out. Likewise, the article contributes to companies dedicated to the textile sector by implementing engineering and technology tools that improve logistics processes to avoid the risk of inventory breakage and non-compliance with textile demand. The research work was developed in a textile factory incorporating standardized work, forecast model, inventory model and Vertex Artificial Intelligence to achieve the reduction of root causes (non-compliance with the dispatch of raw materials, errors in the registration of inventory and its low levels of inputs). The results of the diagnosis were obtained by the implementation of qualitative (VSM) and quantitative tools (Control limit) of which 53%, 21% and 26% represented. This is expected to demonstrate the viability of engineering tools complemented by predictive technologies to improve the company’s logistics process. The proposed model will be validated by the systematic review of the literature of cases related to inventory and predictive tools supported by AI with the aim of being referenced in the expected goals such as the increase in stock.
AB - Textile companies require engineering models that allow them to improve demand planning to reduce inventory breakage. The textile sector represents 8% of the participation of the manufacturing sector, which represents 12.5% of GDP, with the demand for textile garments standing out. Likewise, the article contributes to companies dedicated to the textile sector by implementing engineering and technology tools that improve logistics processes to avoid the risk of inventory breakage and non-compliance with textile demand. The research work was developed in a textile factory incorporating standardized work, forecast model, inventory model and Vertex Artificial Intelligence to achieve the reduction of root causes (non-compliance with the dispatch of raw materials, errors in the registration of inventory and its low levels of inputs). The results of the diagnosis were obtained by the implementation of qualitative (VSM) and quantitative tools (Control limit) of which 53%, 21% and 26% represented. This is expected to demonstrate the viability of engineering tools complemented by predictive technologies to improve the company’s logistics process. The proposed model will be validated by the systematic review of the literature of cases related to inventory and predictive tools supported by AI with the aim of being referenced in the expected goals such as the increase in stock.
KW - Demand-fullfilment
KW - Forecast Model
KW - Inventory Model
KW - Vertex (AI)
UR - https://www.scopus.com/pages/publications/105008288745
U2 - 10.1145/3716097.3716119
DO - 10.1145/3716097.3716119
M3 - Contribución a la conferencia
AN - SCOPUS:105008288745
T3 - ICIBE 2024 - 10th International Conference on Industrial and Business Engineering
SP - 216
EP - 222
BT - ICIBE 2024 - 10th International Conference on Industrial and Business Engineering
PB - Association for Computing Machinery, Inc
T2 - 10th International Conference on Industrial and Business Engineering, ICIBE 2024
Y2 - 20 December 2024 through 22 December 2024
ER -