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    Optimized Reduction in Draft Tube Pressure Pulsation for a Francis Turbine by J. Lu, R. Tao

    Published 2024-11-01
    “…Therefore, based on the genetic algorithm (GA) and pulsation tracking network (PTN), this article optimizes the draft tube pressure pulsation (DTPP) problem of the Francis turbine and finds that the DTPP is mainly dominated by rotation frequencies (fn) of 0.2, 0.4, 0.6, and 0.8. …”
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    Large language models for PHM: a review of optimization techniques and applications by Tingyi Yu, Junya Tang, Qingyun Yu, Li Li, Ying Liu, Raul Poler

    Published 2025-08-01
    “…This review provides a timely resource for researchers, engineers, and decision-makers navigating the transformative potential of language models in industry 4.0 environments.…”
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    Optimizing Plant Oil-Derived Lubricants: A Sustainable Alternative to Petroleum-Based Lubricants Using Integer Programming by Lutfu S. Sua, Figen Balo

    Published 2025-06-01
    “…An integer programming model was then employed to optimize the selection process. The integer programming method extends previous research by providing a structured, computationally efficient approach that ensures a single optimal solution rather than a ranked list of potential candidates. …”
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    Optimizing Energy and Cost Performance in Residential Buildings: A Multi-Objective Approach Applied to the City of Patras, Greece by Dionyssis Makris, Anastasia Antzoulatou, Alexandros Romaios, Sonia Malefaki, John A. Paravantis, Athanassios Giannadakis, Giouli Mihalakakou

    Published 2025-06-01
    “…A parametric analysis across four optimization scenarios was conducted by systematically varying the key algorithmic hyperparameters—population size, mutation rate, and number of generations—to assess their impact on convergence behavior, Pareto front resolution, and solution diversity. …”
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