Accurate traffic forecasting plays a vital role in intelligent transportation systems, enabling applications such as congestion control, route planning, and urban mobility optimization. However, traffic forecasting remains challenging due to two key factors: (1) complex spatial dependencies arising from dynamic interactions between road segments and traffic sensors across the network, and (2) the coexistence of multi-scale periodic patterns (e.g., daily and weekly periodic patterns driven by human routines) with irregular fluctuations caused by unpredictable events (e.g., accidents, weather, or construction). To tackle these challenges, we propose HyperD (Hybrid Periodic Decoupling), a novel framework that decouples traffic data into periodic and residual components. The periodic component is handled by the Hybrid Periodic Representation Module, which extracts fine-grained daily and weekly patterns using learnable periodic embeddings and spatial-temporal attention. The residual component, which captures non-periodic, high-frequency fluctuations, is modeled by the Frequency-Aware Residual Representation Module, leveraging complex-valued MLP in frequency domain. To enforce semantic separation between the two components, we further introduce a Dual-View Alignment Loss, which aligns low-frequency information with the periodic branch and high-frequency information with the residual branch. Extensive experiments on four real-world traffic datasets demonstrate that HyperD achieves state-of-the-art prediction accuracy, while offering superior robustness under disturbances and improved computational efficiency compared to existing methods.
翻译:精准的交通预测在智能交通系统中发挥着至关重要的作用,支持拥堵控制、路径规划和城市出行优化等应用。然而,交通预测仍面临两大关键挑战:(1) 由道路路段与交通传感器间动态交互产生的复杂空间依赖性;(2) 多尺度周期性模式(如由人类日常活动驱动的日周期和周周期模式)与不可预测事件(如事故、天气或施工)引发的非规则波动共存。为应对这些挑战,我们提出HyperD(混合周期性解耦)——一种将交通数据解耦为周期性与残差分量的新型框架。周期性分量由混合周期性表征模块处理,该模块通过可学习的周期性嵌入和时空注意力机制提取细粒度的日周期与周周期模式。残差分量用于捕捉非周期性高频波动,由频域感知残差表征模块通过频域中的复值多层感知机进行建模。为强化两个分量间的语义分离,我们进一步引入双视角对齐损失函数,将低频信息对齐至周期性分支,高频信息对齐至残差分支。在四个真实交通数据集上的大量实验表明,HyperD在实现最先进预测精度的同时,相较于现有方法,在干扰条件下具有更强的鲁棒性,并提升了计算效率。