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    This study introduces an improved clustering method (HC-PE) for reducing complex dynamical system models. The novel approach effectively minimizes errors, offering a robust alternative for model order reduction.

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    Area of Science:

    • Engineering
    • Control Systems
    • Computational Mathematics

    Background:

    • High-order dynamical systems pose challenges in analysis and control.
    • Existing model order reduction techniques often lack efficiency or robustness.
    • Accurate reduced-order models are crucial for simulation and real-time applications.

    Purpose of the Study:

    • To introduce and evaluate an improved clustering-based method for dynamical system model order reduction.
    • To enhance the accuracy and robustness of reduced-order models.
    • To compare the proposed method against existing techniques using various system orders and types.

    Main Methods:

    • Development of Agglomerative Hierarchical Clustering based on Performance Evaluation (HC-PE).
    • Clustering system poles in a hierarchical dendrogram to determine reduced-order denominator.
    • Utilizing Mean-Squared Error (MSE) for pole placement refinement.
    • Calculating reduced model numerator coefficients via Padé Approximation (PA) or Genetic Algorithm (GA).

    Main Results:

    • HC-PE demonstrated superior performance with minimum MSEs across single-input single-output (SISO) and multi-input multi-output (MIMO) systems.
    • The method successfully reduced models up to 48th order.
    • Robustness was confirmed through disturbance and parameter variation tests on a triple-link inverted pendulum model.

    Conclusions:

    • HC-PE offers an effective and robust approach for model order reduction.
    • Both PA and GA are viable options for numerator calculation, with PA showing a slight performance edge.
    • The proposed HC-PE method provides an attractive alternative to current model order reduction techniques.