# Traffic Forecasting for Industrial Internet Gateway Based on Multi-Scale Dependency Integration

**Authors:** Tingyu Ma, Jiaqi Liu, Panfeng Xu, Yan Song

PMC · DOI: 10.3390/s26030795 · Sensors (Basel, Switzerland) · 2026-01-25

## TL;DR

This paper introduces a new framework for predicting industrial internet traffic by combining decomposition and interaction modeling to improve accuracy and efficiency on resource-limited gateways.

## Contribution

The novel DOA-MSDI-CrossLinear framework addresses traffic forecasting by explicitly decomposing and modeling multi-scale dependencies in IIoT data.

## Key findings

- The proposed framework achieves high prediction accuracy on real industrial IoT datasets.
- The MDM and DDI modules effectively capture complex temporal and channel dependencies.
- The DOA algorithm optimizes hyperparameters efficiently for non-convex industrial forecasting tasks.

## Abstract

Industrial gateways serve as critical data aggregation points within the Industrial Internet of Things (IIoT), enabling seamless data interoperability that empowers enterprises to extract value from equipment data more efficiently. However, their role exposes a fundamental trade-off between computational efficiency and prediction accuracy—a contradiction yet to be fully resolved by existing approaches. The rapid proliferation of IoT devices has led to a corresponding surge in network traffic, posing significant challenges for traffic forecasting methods, while deep learning models like Transformers and GNNs demonstrate high accuracy in traffic prediction, their substantial computational and memory demands hinder effective deployment on resource-constrained industrial gateways, while simple linear models offer relative simplicity, they struggle to effectively capture the complex characteristics of IIoT traffic—which often exhibits high nonlinearity, significant burstiness, and a wide distribution of time scales. The inherent time-varying nature of traffic data further complicates achieving high prediction accuracy. To address these interrelated challenges, we propose the lightweight and theoretically grounded DOA-MSDI-CrossLinear framework, redefining traffic forecasting as a hierarchical decomposition–interaction problem. Unlike existing approaches that simply combine components, we recognize that industrial traffic inherently exhibits scale-dependent temporal correlations requiring explicit decomposition prior to interaction modeling. The Multi-Scale Decomposable Mixing (MDM) module implements this concept through adaptive sequence decomposition, while the Dual Dependency Interaction (DDI) module simultaneously captures dependencies across time and channels. Ultimately, decomposed patterns are fed into an enhanced CrossLinear model to predict flow values for specific future time periods. The Dream Optimization Algorithm (DOA) provides bio-inspired hyperparameter tuning that balances exploration and exploitation—particularly suited for the non-convex optimization scenarios typical in industrial forecasting tasks. Extensive experiments on real industrial IoT datasets thoroughly validate the effectiveness of this approach.

## Full text

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## Figures

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## References

68 references — full list in the complete paper: https://tomesphere.com/paper/PMC12899578/full.md

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Source: https://tomesphere.com/paper/PMC12899578