Against the backdrop of high penetration of renewable energy,the carbon emission characteristics of integrated energy systems (IES) are difficult to accurately characterize due to their strong uncertainty,posing a severe challenge to achieving the “dual carbon” goals.To address the challenge of probabilistic carbon flow analysis for high-dimensional complex systems,a stochastic response surface method based on orthogonal Latin hypercube sampling (OLHS-SRSM) is proposed,which is then employed to drive a two-stage low-carbon economic dispatch for IES.In the pre-dispatch stage,OLHS-SRSM efficiently assesses the probabilistic characteristics of node carbon intensity (NCI) under source-load uncertainties by improving the uniformity and orthogonality of sampling points,generating the initial unit output schedule and significantly enhancing computational accuracy and efficiency in high-dimensional scenarios.In the re-dispatch stage,under the constraints of fixed carbon quotas and tiered carbon pricing,the model introduces a carbon emission responsibility allocation mechanism based on the Shapley value method and couples it with low-carbon demand response (LCDR),achieving dynamic correction of NCI and synergistic source-load emission reduction.Case studies on an E39-G20-H6 system incorporating electricity-gas-heat-hydrogen networks in a provincial region demonstrate that:compared to traditional Monte Carlo simulation,the proposed OLHS-SRSM method improves solving efficiency by approximately 72.52% while ensuring an error of less than 2%,effectively overcoming the "curse of dimensionality"; compared to single-stage or other benchmark scenarios,the proposed two-stage strategy,guided by tiered carbon pricing signals and dynamic NCI,can further reduce total system carbon emissions without compromising economic efficiency.These results verify that the proposed model possesses sound low-carbon regulation capability and engineering application potential in environments with high renewable energy penetration.
Guoqiang SUN,Shuang CHEN,Zhinong WEI,Sheng CHEN.Multi-period integrated natural gas and electric power system probabilistic optimal power flow incorporating power-to-gas units[J].Journal of Modern Power Systems and Clean Energy,2017(03).