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NCD-Pred: Forecasting Multichannel Shipboard Electrical Power Demand Using Neighborhood-Constrained VMD

Author

Listed:
  • Paolo Fazzini

    (Institute of Marine Engineering (INM), National Research Council (CNR), 90153 Palermo, Italy)

  • Giuseppe La Tona

    (Institute of Marine Engineering (INM), National Research Council (CNR), 90153 Palermo, Italy)

  • Marco Montuori

    (Institute of Complex Systems (ISC), National Research Council (CNR), 00185 Rome, Italy)

  • Matteo Diez

    (Institute of Marine Engineering (INM), National Research Council (CNR), 00128 Rome, Italy)

  • Maria Carmela Di Piazza

    (Institute of Marine Engineering (INM), National Research Council (CNR), 90153 Palermo, Italy)

Abstract

This paper introduces Neighborhood-Constrained Decomposition-based Prediction (NCD-Pred), the first system to leverage Neighborhood-Constrained Variational Mode Decomposition (NCVMD) for multichannel forecasting by integrating time series decomposition and neural networks. NCD-Pred leverages NCVMD to decompose a multichannel signal into simpler, band-limited components—referred to as intrinsic mode functions or simply modes —by prioritizing the most informative channel (the main channel) over less informative ones (the auxiliary channels) and bringing their central frequencies into alignment up to a tunable extent. This frequency synchronization provides a framework for cooperative mode forecasting, where predictions of signal components are recombined to produce the original signal prediction. For mode-level forecasting, Long Short-Term Memory (LSTM) networks are utilized. NCD-Pred’s performance is evaluated against similarly designed mode-level forecasting systems using a multichannel dataset with weak cross-correlation, representing power load on a large vessel. The results show that NCD-Pred outperforms benchmark methods, demonstrating its practical utility in real signal processing scenarios.

Suggested Citation

  • Paolo Fazzini & Giuseppe La Tona & Marco Montuori & Matteo Diez & Maria Carmela Di Piazza, 2025. "NCD-Pred: Forecasting Multichannel Shipboard Electrical Power Demand Using Neighborhood-Constrained VMD," Forecasting, MDPI, vol. 7(3), pages 1-19, August.
  • Handle: RePEc:gam:jforec:v:7:y:2025:i:3:p:44-:d:1723720
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    References listed on IDEAS

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    1. Sourav Chatterjee, 2021. "A New Coefficient of Correlation," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 116(536), pages 2009-2022, October.
    2. Wang, Zicheng & Gao, Ruobin & Wang, Piao & Chen, Huayou, 2023. "A new perspective on air quality index time series forecasting: A ternary interval decomposition ensemble learning paradigm," Technological Forecasting and Social Change, Elsevier, vol. 191(C).
    3. Hyunyong Lee & Jinkwang Lee & Gilltae Roh & Sangick Lee & Choungho Choung & Hokeun Kang, 2024. "Comparative Life Cycle Assessments and Economic Analyses of Alternative Marine Fuels: Insights for Practical Strategies," Sustainability, MDPI, vol. 16(5), pages 1-33, March.
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