We develop a new methodology to select scenarios of DER adoption most critical for distribution grids. Anticipating risks of future voltage and line flow violations due to additional PV adopters is central for utility investment planning but continues to rely on deterministic or ad hoc scenario selection. We propose a highly efficient search framework based on multi-objective Bayesian Optimization. We treat underlying grid stress metrics as computationally expensive black-box functions, approximated via Gaussian Process surrogates and design an acquisition function based on probability of scenarios being Pareto-critical across a collection of line- and bus-based violation objectives. Our approach provides a statistical guarantee and offers an order of magnitude speed-up relative to a conservative exhaustive search. Case studies on realistic feeders with 200-400 buses demonstrate the effectiveness and accuracy of our approach.
翻译:本文提出了一种新方法,用于筛选对配电网最具关键性的分布式能源接纳场景。预测因新增光伏接入导致的未来电压与线路潮流越限风险是电力公司投资规划的核心任务,但目前仍依赖于确定性或临时性的场景选择策略。我们构建了一个基于多目标贝叶斯优化的高效搜索框架:将电网基础应力指标视为计算代价高昂的黑箱函数,通过高斯过程代理模型进行近似,并设计了一种基于场景帕累托关键性概率的采集函数,该函数综合考量了线路与节点层面的多重越限目标。该方法具备统计理论保证,相较于保守的穷举搜索实现了数量级的速度提升。在包含200-400个节点的实际馈线系统上的案例研究表明,所提方法兼具高效性与精确性。