Book chapter
Development of a Decision Support System for Freight Forecasting
João P. Martins (João P. Martins); Filipe R. Ramos (Ramos, F.R.); Maria Teresa Pereira (Pereira, M.T.); Marisa Oliveira (Oliveira, M.J.); Fernanda Amélia Ferreira (Ferreira, F.A.);
Book Title
Innovations in Industrial Engineering IV
Year (definitive publication)
2025
Language
English
Country
Switzerland
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Abstract
The transportation of goods is critical to supply chains, directly influencing efficiency, cost management, and competitiveness. Accurate freight cost forecasting is essential for decision-making, enabling businesses to allocate resources effectively, reduce financial uncertainties, and ensure timely deliveries. This study, conducted in the After-Sales department of a global company, aimed to analyse freight costs per shipment and develop a predictive system based on predefined parameters. Historical data were examined using analytical techniques and time series metrics to identify suitable forecasting methodologies. Specific algorithms, including classical methodologies (exponential smoothing models) and hybrid deep learning models (BJ-DNN model), were tested to evaluate predictive accuracy. Results showed prediction errors ranging from 17% to 56% for exponential smoothing models and from 5% to 27% for BJ-DNN models, demonstrating the superior performance of hybrid approaches. These findings emphasize the potential of predictive models to enhance freight cost forecasting, minimizing error margins and optimizing resource allocation. This research provides a foundation for refining these methodologies, contributing to improved freight cost management and operational efficiency.
Acknowledgements
This work is partially financed by national funds through FCT – Fundação para a Ciência e a Tecnologia under the project UIDB/00006/2020. DOI: 10.54499/UIDB/00006/2020.
Keywords
Logistics,Process Modelling,Forecasting,Exponential Smoothing,Deep Learning,BJ-DNN model,Prediction Error
Funding Records
Funding Reference Funding Entity
UID/00006/2025 FCT – Fundação para a Ciência e a Tecnologia
UIDB/50022/2020 FCT – Fundação para a Ciência e a Tecnologia
UIDB/00006/2020 FCT – Fundação para a Ciência e a Tecnologia