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A multi-objective optimization framework for risk-controlled integration of renewable generation into electric power systems

机译:用于将可再生能源发电纳入风险控制的多目标优化框架

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摘要

We introduce a MOO (multi-objective optimization) framework for the integration of renewable DG (distributed generation) into electric power networks. The framework searches for the optimal size and location of different DG technologies, taking into account uncertainties related to primary renewable resources availability, components failures, power demands and bulk-power supply. A non-sequential MCS-OPF (Monte Carlo simulation and optimal power flow) computational model is developed to emulate the network operation by generating random scenarios from the diverse sources of uncertainty, and assess the system performance in terms of CG (global cost). To measure uncertainty in the system performance, we introduce the DCVaR (conditional value-at-risk deviation) which, due to its axiomatic relation to the CVaR (conditional value-at-risk), allows the conjoint control of risk. A MOO strategy can, then, be adopted for the concurrent minimization of the ECG (expected global cost) and the associated deviation DCVaR(CG). In our work this is operatively implemented by a heuristic search engine based on differential evolution (MOO-DE). An example of application of the proposed framework is given with regards to the IEEE 30 bus test system, where in DCVaR is shown capable of enabling and controlling tradeoffs between optimal expected economic performance, uncertainty and risk. (C) 2016 Elsevier Ltd. All rights reserved.
机译:我们引入了MOO(多目标优化)框架,用于将可再生DG(分布式发电)集成到电力网络中。该框架在考虑与主要可再生资源可用性,组件故障,电源需求和大功率电源有关的不确定性的情况下,寻求不同DG技术的最佳尺寸和位置。开发了非顺序MCS-OPF(蒙特卡罗模拟和最佳潮流)计算模型,以通过从各种不确定性源生成随机方案来模拟网络运行,并根据CG(全球成本)评估系统性能。为了测量系统性能的不确定性,我们引入了DCVaR(条件风险值偏差),由于其与CVaR(条件风险值)的公理关系,可以共同控制风险。然后,可以采用MOO策略来同时最小化ECG(预期的总成本)和相关的偏差DCVaR(CG)。在我们的工作中,这是通过基于差分进化(MOO-DE)的启发式搜索引擎有效地实现的。针对IEEE 30总线测试系统,给出了所建议框架的应用示例,其中显示了DCVaR能够实现和控制最佳预期经济性能,不确定性和风险之间的折衷。 (C)2016 Elsevier Ltd.保留所有权利。

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