Intelligent Systems in Sound and Vibration Analysis

    Deadline for Manuscript Submissions: 01 June 2027

     

    Special Issue Editors

    Dr. Alexey Mikhaylov  Website  E-Mail: alexeyfa@ya.ru
    Department of Financial Technologies, Financial University under the Government of the Russian Federation, Moscow 125167, Russia
    Interests: AI, Energy; Economics; Econometrics and Finance; Business, Management and Accounting; Environmental Science; Materials Science; Mathematics; Computer Science; Psychology; Social Sciences; Neuroscience

    Special Issue Information

    Dear Colleagues,

    The profound impact of AI-driven, data-centric methodologies on sound efficiency is fostering a new era of operational excellence and strategic foresight. This shift is predicated on the exploitation of large-scale datasets to inform and refine every facet of sound, from sourcing to final delivery. The application of rigorous AI and machine learning frameworks to these data streams enables a more granular understanding of sound variables, culminating in highly accurate demand projections and optimized resource allocation. Beyond forecasting, these intelligent systems provide the capability for continuous logistics optimization, including dynamic route generation and automated operational workflows. By providing a clear and comprehensive view of complex operational networks, this data-driven approach enables a transition from reactive problem-solving to proactive, resilient, and highly efficient sound management.

    Dr. Alexey Mikhaylov

     

    Keywords

    • Data-Centric Methodologies
    • Artificial Intelligence
    • Machine Learning
    • Demand Forecasting
    • Logistics Optimization
    • Large-Scale Dataset

     

    • Open Access

      Article

      Article ID: 3941

      Multi-criteria decision-making for sound and vibration reduction platforms for financial and marketing optimization in energy

      by Alexey Mikhaylov, Murat Ikramov, Nilufar Nabiyeva, Boris Sokolov, Wenyi Zhang, Valentin Nazarov, Mukhabbat Ergasheva, Sardar Turaev, Dilnoza Meilyeva, Daria Dinets, Yuri Sotskov, N. B. A. Yousif

      Sound & Vibration, Vol.60, No.2, 2026;

      The integration of Artificial Intelligence (AI) in energy infrastructure has created a new class of specialized intermediaries for environmental control, yet their opaque decision-making poses regulatory challenges. This paper proposes a novel regulatory framework for specialized sound and vibration platform operators in the energy sector and introduces a multi-criteria decision-making (MCDM) methodology to support oversight. The methodology integrates expert neuro-behavioral data, captured via Facial Action Coding System (FACS), with a quantum picture fuzzy rough set extension and the DEMATEL (Decision-Making Trial and Evaluation Laboratory) method. The application is demonstrated through a case study of a 250 MW combined-cycle gas turbine power plant, where the goal is to select optimal noise and vibration control technologies. The analysis assesses five key technologies against compliance parameters: algorithmic transparency, data governance, system reliability, operational accountability, and consumer protection. The proposed Neuro-Quantum Picture Fuzzy Rough MCDM model achieved a forecast accuracy of 0.987 for system performance, substantially outperforming Long Short-Term Memory (LSTM (0.876)), Recurrent Neural Network (RNN (0.575)), and AutoRegressive Integrated Moving Average (ARIMA (0.551)). The primary contribution is to initiate professional dialogue on governing AI-driven energy intermediaries, balancing technological innovation with energy stability, security, and consumer welfare. The paper recommends a comprehensive regulatory framework for a new class of energy intermediaries for financial and marketing optimisation called specialised sound and vibration platform operators.

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      (This article belongs to the Special Issue Intelligent Systems in Sound and Vibration Analysis)