Journal ArticleOpen Access
MCDFN: supply chain demand forecasting via an explainable multi-channel data fusion network model
Authors
Author Affiliations
Khulna University of Engineering and Technology, Okinawa Institute of Science and Technology Graduate University, Hamad bin Khalifa University
Published InEvolutionary Intelligence
Year2025
Citations38
Abstract
Abstract Accurate demand forecasting is vital for optimizing supply chain management and enhancing organizational resilience. Traditional forecasting methods, relying on simple arithmetic, often fail to capture complex patterns caused by seasonal variability and special events. Although deep learning techniques have advanced, the lack of interpretable models hampers understanding and explaining predictions. We introduce the Multi-Channel Data Fusion Network (MCDFN), a novel hybrid deep learning architecture integrating multiple data modalities for superior demand forecasting. MCDFN utilizes Convolutional Neural Networks (CNNs), Long Short-Term Memory networks (LSTMs), and Gated Recurrent Units (GRUs) to extract spatial and temporal features from time series data. Comparative benchmarking against seven other deep-learning models validates MCDFN’s efficacy, showing it outperforms its counterparts across key metrics with a mean…
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