The Optimisation of Stock Management: Design of an AI-Driven Inventory System

Penulis

  • Cendra Devayana Putra Surabaya State University
  • Ardhini Warih Utami
  • I Kadek Dwi
  • Riza Akhsani Setyo Prayoga
  • Rizky Basatha
  • Muhammad Sonhaji Akbar Universitas Negeri Surabaya

DOI:

https://doi.org/10.30700/sisfotenika.v15i2.543

Kata Kunci:

Makanan Beku, Pemikiran Desain, Diagram Kasus Penggunaan

Abstrak

The frozen food industry has witnessed remarkable growth in recent years, driven by increasing urbanization and the demand for convenient, ready-to-eat meals. Despite this upward trend, many businesses in the sector struggle with inefficient stock management, particularly in forecasting daily demand due to fluctuating consumer behavior and unpredictable external factors. This study proposes an end-to-end artificial intelligence-based stock forecasting system aimed at optimizing inventory management for frozen food businesses. By adopting the Design Thinking approach, this research places users—both consumers and internal stakeholders—at the center of the problem-solving process to uncover key operational pain points. The study explores recent technological advancements, including augmented reality, RFID, and blockchain, and integrates them into a practical framework tailored to small and medium enterprises (SMEs). Through qualitative analysis and system prototyping, the research identifies essential features for an intelligent stock management system and demonstrates how a user-centric approach can drive innovation and improve business performance. The findings offer valuable insights into the development of adaptive, data-driven solutions in the rapidly evolving frozen food sector.  

Diterbitkan

2025-07-23

Cara Mengutip

Putra, C. D., Utami, A. W., Dwi, I. K., Prayoga, R. A. S., Basatha, R., & Muhammad Sonhaji Akbar. (2025). The Optimisation of Stock Management: Design of an AI-Driven Inventory System. SISFOTENIKA, 15(2), 126–135. https://doi.org/10.30700/sisfotenika.v15i2.543

Terbitan

Bagian

Article

Artikel Serupa

1 2 > >> 

Anda juga bisa Mulai pencarian similarity tingkat lanjut untuk artikel ini.

Artikel paling banyak dibaca berdasarkan penulis yang sama