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IJAT Vol.20 No.1 pp. 38-46
doi: 10.20965/ijat.2026.p0038
(2026)

Research Paper:

Shipment Forecasting for Yellowtail Aquaculture Using Monte Carlo Simulation: A Scenario Analysis on the Utilization of Hatchery-Produced Juveniles

Yuki Kimura*,† and Tomomi Nonaka** ORCID Icon

*Graduate School of Creative Science and Engineering, Waseda University
3-4-1 Okubo, Shinjuku-ku, Tokyo 169-8555, Japan

Corresponding author

**School of Creative Science and Engineering, Waseda University
Tokyo, Japan

Received:
July 29, 2025
Accepted:
November 10, 2025
Published:
January 5, 2026
Keywords:
production management, Monte Carlo simulation, scenario analysis, food, sustainability
Abstract

In Japan’s key yellowtail (buri) aquaculture industry, the increasing exports are contrasted with the production instability caused by declining producers and a reliance on wild juveniles with long, unpredictable lead times. This study addresses these challenges by proposing a production management approach that utilizes hatchery-produced juveniles with controllable, twice-yearly spawning schedules (spring and autumn) to improve the efficiency and predictability. A Monte Carlo simulation using probability distributions determined by the Anderson–Darling test was employed to analyze the shipment patterns and revenue under three pricing scenarios: high-seasonal, moderate, and size-differentiated. The results demonstrate that an increase in the number of spawning seasons distributes shipments more uniformly. This results in a stable year-round supply. The approach can significantly increase the annual revenue, particularly in the high-seasonal price scenario. Conversely, although the differentiated pricing model marginally reduces the total revenue, it significantly mitigates seasonal sales fluctuations. Thus, it provides enhanced stability for producers. To conclude, this study shows that utilizing hatchery-produced juveniles enhances the economic resilience and operational sustainability. This shift toward a more controlled and efficient system aligns with the core sustainability principles. The methodology also provides an adaptable model for other aquaculture sectors. Future work should incorporate the market demand and environmental variables to develop more comprehensive decision-making tools.

Cite this article as:
Y. Kimura and T. Nonaka, “Shipment Forecasting for Yellowtail Aquaculture Using Monte Carlo Simulation: A Scenario Analysis on the Utilization of Hatchery-Produced Juveniles,” Int. J. Automation Technol., Vol.20 No.1, pp. 38-46, 2026.
Data files:
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Last updated on Jan. 04, 2026