ENHANCING THE EFFICIENCY OF COCONUT WAREHOUSE INVENTORY MANAGEMENT THROUGH PREDICTIVE ANALYSIS (CASE STUDY: BANIO LAHEWA)
Inventory management plays a pivotal role in the coconut farming business, directly influencing sales and income. An essential component of this management is warehousing, which not only affect revenue but also involves suppliers in the coconut storage process. Warehousing management and techn...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/79710 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Inventory management plays a pivotal role in the coconut farming business, directly
influencing sales and income. An essential component of this management is
warehousing, which not only affect revenue but also involves suppliers in the coconut
storage process. Warehousing management and technology are two elements that can
help companies operate more effectively and efficiently. This research focuses on
efforts to improve warehouse management efficiency in the agricultural sector,
particularly at Banio Lahewa, a company that operates as a coconut supplier in a small
village with limited resources. Currently, the company still records data manually and
lacks a real-time system to monitor demand patterns, stock rotation, and restocking
frequency in the warehouse. This situation is caused by uncertainty about the products
entering the warehouse, leading to the company's focus being more limited to daily
operational issues rather than future planning.
To address this challenge, this research uses future event prediction methods,
specifically forecasting by applying two neural network models: the Feed Forward
Neural Network and the Long Short Term Memory. The implementation of this system
is expected to provide new insights to the company, enabling them to be more adaptive
in efficiently managing warehouse systems. With an understanding of patterns and
predictions of future events, it is expected that the company can be more prepared and
responsive to changes in customer demand and able to expand products more quickly.
The results of this research are expected to make a positive contribution to the
company, helping them optimize warehouse management and become more adaptive
to market dynamics.
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