Long-term quantification of fish behavior is essential for aquatic ecology, wildlife telemetry, and the development of biomechanical monitoring devices and test-platform technologies. However, the observation duration required to obtain reliable behavioral and kinematic metrics remains unclear, and few tools exist to physically reproduce natural swimming motion for controlled experimentation. We address these challenges by developing a generalizable framework that models behavioral reliability (Spearman–Brown reliability index) as a function of observation duration and derives metric-specific monitoring thresholds. Using juvenile white sturgeon as a case study, we demonstrate that the minimum duration needed for reliable estimates varies substantially across kinematic features: to exceed a reliability of 0.8, total distance traveled requires 12 days, average curvature (mm −1 ) 15 days, tail-beat frequency (Hz) 8 days, and average speed (body length/s) 17 days. We further bridge digital analysis and physical testing by developing a hardware-in-the-loop simulator that reconstructs machine-learning-derived swimming kinematics with high fidelity (correlation coefficient 0.98–0.99, RMSE 1.22–1.27 mm over a 5-min segment). This platform enables realistic, repeatable motion stimuli for evaluating aquatic sensing technologies and bio-integrated devices under controlled conditions. Together, these contributions provide a scalable approach for designing long-term behavioral studies and a data-driven connection between ecological observation and robotic experimentation. • Spearman–Brown framework maps pilot data to required monitoring duration. • Reliability ≥0.8 requires 8–17 days, depending on the kinematic metric. • 63-day continuous video enabled long-term sturgeon kinematics quantification. • HIL bench replays ML-derived swimming ( r = 0.98–0.99; RMSE ≤1.27 mm). • Enables repeatable, realistic motion tests for aquatic sensors and bio-devices.
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Sungjoo Hwang
Huidong Li
Jill M. Janak
Ecological Informatics
University of Michigan
Pacific Northwest National Laboratory
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Hwang et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69df2c77e4eeef8a2a6b1970 — DOI: https://doi.org/10.1016/j.ecoinf.2026.103760