Rapid electrification and decarbonization are increasing the complexity of distribution grid (DG) operation and planning, necessitating advanced computational analyses to ensure reliability and resilience. These analyses depend on disparate workflows comprising complex models, function calls, and data pipelines that require substantial expert knowledge and remain difficult to automate. Workforce and budget constraints further limit utilities' ability to apply such analyses at scale. To address this gap, we build an agentic system PowerChain, which is capable of autonomously performing complex grid analyses. Existing agentic AI systems are typically developed in a bottom-up manner with customized context for predefined analysis tasks; therefore, they do not generalize to tasks that the agent has never seen. In comparison, to generalize to unseen DG analysis tasks, PowerChain dynamically generates structured context by leveraging supervisory signals from self-contained power systems tools (e.g., GridLAB-D) and an optimized set of expert-annotated and verified reasoning trajectories. For complex DG tasks defined in natural language, empirical results on real utility data demonstrate that PowerChain achieves up to a 144/% improvement in performance over baselines.
翻译:快速电气化与脱碳进程正不断加剧配电网运行与规划的复杂性,这要求通过先进的计算分析来保障其可靠性与韧性。此类分析依赖于由复杂模型、函数调用及数据管道构成的异构工作流,需要大量专业知识且难以实现自动化。人力与预算的约束进一步限制了电力公司规模化实施此类分析的能力。为应对这一挑战,我们构建了智能体系统PowerChain,该系统能够自主执行复杂的电网分析。现有智能体人工智能系统通常以自底向上的方式开发,针对预定义分析任务定制上下文,因此无法泛化至智能体未曾接触的任务。相比之下,为实现对未知配电网分析任务的泛化,PowerChain通过利用自完备电力系统工具(如GridLAB-D)的监督信号,以及一组经专家标注与验证的优化推理轨迹,动态生成结构化上下文。针对自然语言定义的复杂配电网任务,在真实电力数据上的实证结果表明,PowerChain相较于基线方法实现了最高达144%的性能提升。