Optimizing Filling Shed Reconfiguration through K-Means Clustering with Silhouette, Association Rule Mining, and Artificial Neural Network
Abstract
Fuel oil is an essential resource in Indonesia, widely used in various sectors, including
industry, transportation, and personal consumption. The company operates numerous
branches, including integrated terminals throughout Indonesia, and is responsible for receiving
products from refineries, storing them, and delivering them to consumers. The current system's
inefficiencies obstruct the company's capacity to meet increasing demands, which could result
in customer dissatisfaction and revenue loss. This study aims to propose a reconfiguration of
the filling shed by segmenting, finding patterns and relationships between each transaction,
and forecasting. The clustering result, by using 19 days of historical data, formed ten clusters,
the association rules formed 248 rules, and the ANN showthat the model has an effective
predicting ability. These results will be used to propose a reconfiguration that helps to
overcome the bottleneck dealt with by the company.
Collections
- Industrial Engineering [2835]
