建设可持续的未来:高渗透性电网工程的三阶段风险管理模式

Energies Pub Date : 2024-07-12 DOI:10.3390/en17143439
Weijie Wu, Dongwei Li, Hui Sun, Yixin Li, Yining Zhang, Mingrui Zhao
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摘要

在实现碳中和的背景下,必须建设大量高渗透性电网工程(HPGE)系统,因为这些系统有助于应对高比例可再生能源带来的安全和稳定挑战。建设和工程往往涉及多重风险考虑。本研究构建了 HPGE 的三阶段综合风险管理模式,有助于克服现有研究中存在的风险指标冗余、风险评估技术不精确、风险预警模型不合理等问题。首先,我们利用模糊德尔菲模型确定了 HPGE 的关键风险指标。然后,采用贝叶斯最佳-最差法(BWM)以及衡量替代方案和根据折中方案排序法(MARCOS)对项目的综合风险进行评估;通过对比分析,证明这些方法具有更可靠的加权结果和更大的样本分离度。最后,我们基于非补偿原则建立了风险预警模型,有助于防止实际风险预警结果问题被一些指标所掩盖。结果表明,新电力系统建设和清洁能源消费政策是影响 HPGE 的关键风险因素。结果发现,有 4 个项目处于极高风险预警状态,5 个项目处于相对高风险预警状态,1 个项目处于中等风险预警状态。因此,有必要加强 HPGE 的风险防范,制定合理的闭环风险控制机制。
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Building a Sustainable Future: A Three-Stage Risk Management Model for High-Permeability Power Grid Engineering
Under the background of carbon neutrality, it is important to construct a large number of high-permeability power grid engineering (HPGE) systems, since these can aid in addressing the security and stability challenges brought about by the high proportion of renewable energy. Construction and engineering frequently involve multiple risk considerations. In this study, we constructed a three-stage comprehensive risk management model of HPGE, which can help to overcome the issues of redundant risk indicators, imprecise risk assessment techniques, and irrational risk warning models in existing studies. First, we use the fuzzy Delphi model to identify the key risk indicators of HPGE. Then, the Bayesian best–worst method (Bayesian BWM) is adopted, as well as the measurement alternatives and ranking according to the compromise solution (MARCOS) approach, to evaluate the comprehensive risks of projects; these methods are proven to have more reliable weighting results and a larger sample separation through comparative analysis. Finally, we established an early warning risk model on the basis of the non-compensation principle, which can help prevent the issue of actual risk warning outcomes from being obscured by some indicators. The results show that the construction of the new power system and clean energy consumption policy are the key risk factors affecting HPGE. It was found that four projects are in an extremely high-risk warning state, five are in a relatively high-risk warning state, and one is in a medium-risk warning state. Therefore, it is necessary to strengthen the risk prevention of HPGE and to develop a reasonable closed-loop risk control mechanism.
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