TY - EJOU AU - Hang, Weichang AU - Jiang, Yu AU - Zhou, Yizhou AU - Xuan, Youlin AU - Huang, Haiquan AU - Chang, Jiawei AU - Chen, Ping TI - Electricity and Carbon Coordinated Scheduling of Low-Carbon Parks: A Double-Layer Distributionally Robust Optimization Approach T2 - Energy Engineering PY - VL - IS - SN - 1546-0118 AB - The transition toward low-carbon energy systems requires scheduling strategies that coordinate power dispatch with explicit carbon accountability in integrated parks. To address the limited coupling among carbon tracing, differentiated demand response, and uncertainty-aware scheduling in existing studies, this paper proposes an electricity-carbon coordinated scheduling method for low-carbon parks based on carbon emission flow (CEF) and double-layer distributionally robust optimization (DRO). First, a park-oriented CEF model is established to quantify nodal carbon potential and to trace carbon responsibility from generation to load, including the carbon transfer effect of energy storage. Second, a priority-aware demand response mechanism combining hierarchical time-of-use pricing and stepped incentive compensation is constructed so that different user categories respond according to scheduling priority and carbon-reduction value. Third, a double-layer DRO framework is formulated, where the upper layer optimizes grid purchase, gas-turbine output, and carbon trading with carbon-potential feedback, and the lower layer coordinates load adjustment and energy storage under photovoltaic uncertainty. Case studies on an improved IEEE 33-node system show that the proposed method improves robustness under renewable uncertainty, significantly enhances the transfer capability of high-priority industrial loads, and yields lower expected and worst-case testing costs than benchmark uncertainty-handling strategies. These results verify the method’s advantage in simultaneously improving economic performance, carbon management transparency, and operational reliability. KW - Low-carbon park; carbon emission flow; demand response; distributionally robust optimization DO - 10.32604/ee.2026.081648