This paper proposes a structure-aware driven scheduling graph modeling method to improve the accuracy and representation capability of anomaly identification in scheduling behaviors of complex systems. The method first designs a structure-guided scheduling graph construction mechanism that integrates task execution stages, resource node states, and scheduling path information to build dynamically evolving scheduling behavior graphs, enhancing the model's ability to capture global scheduling relationships. On this basis, a multi-scale graph semantic aggregation module is introduced to achieve semantic consistency modeling of scheduling features through local adjacency semantic integration and global topology alignment, thereby strengthening the model's capability to capture abnormal features in complex scenarios such as multi-task concurrency, resource competition, and stage transitions. Experiments are conducted on a real scheduling dataset with multiple scheduling disturbance paths set to simulate different types of anomalies, including structural shifts, resource changes, and task delays. The proposed model demonstrates significant performance advantages across multiple metrics, showing a sensitive response to structural disturbances and semantic shifts. Further visualization analysis reveals that, under the combined effect of structure guidance and semantic aggregation, the scheduling behavior graph exhibits stronger anomaly separability and pattern representation, validating the effectiveness and adaptability of the method in scheduling anomaly detection tasks.
翻译:本文提出一种结构感知驱动的调度图建模方法,以提高复杂系统调度行为中异常识别的准确性与表征能力。该方法首先设计一种结构引导的调度图构建机制,通过融合任务执行阶段、资源节点状态与调度路径信息,构建动态演化的调度行为图,增强模型对全局调度关系的捕捉能力。在此基础上,引入多尺度图语义聚合模块,通过局部邻域语义整合与全局拓扑对齐实现调度特征的语义一致性建模,从而强化模型在多任务并发、资源竞争及阶段转换等复杂场景下对异常特征的捕获能力。实验在真实调度数据集上进行,通过设置多种调度扰动路径以模拟结构偏移、资源变动及任务延迟等不同类型的异常。所提模型在多项指标上均表现出显著性能优势,对结构扰动与语义偏移展现出灵敏的响应特性。进一步的可视化分析表明,在结构引导与语义聚合的共同作用下,调度行为图呈现出更强的异常可分性与模式表征力,验证了该方法在调度异常检测任务中的有效性与适应性。