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Stochastic Receding Horizon Control of Active Distribution Networks With Distributed Renewables

机译:带有分布式可再生能源的主动配电网的随机后退水平控制

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High penetration of distributed renewable energy introduces significant uncertainties to active distribution networks. Optimal control methods accounting for inherent uncertainties are needed to facilitate economic and reliable operation of active distribution networks. This paper proposes a stochastic receding horizon control method based on modified stochastic model predictive control framework to integrate high penetration of distributed generation. Multiple controllable resources are jointly optimized over a finite prediction horizon while ensuring relevant security restrictions. The simplified Z-bus sensitivity for active distribution networks is developed for computationally efficient estimation of system nonlinearity with high accuracy, and is combined with the sequential linear programming to iteratively derive the linear state space model for compensation of cumulative modeling errors. Furthermore, the voltage limitations are reformulated as chance constraints to indicate the probabilistic reliability index of voltage qualification rate, and achieve tradeoffs between cost reduction and voltage regulation. The affine-disturbance feedback control policy is leveraged here to enforce close-loop control performance and analytically transform intractable chance constraints into second-order cone constraints. Comprehensive case studies based on 33-bus and 123-bus distribution systems are carried out to demonstrate the capability and effectiveness of the proposed approach in terms of modeling accuracy, control performance, cost reduction, and method scalability. The proposed approach can effectively enforce voltage regulation against uncertainties with the prescribed probability level. Control costs and constraint violation can be reduced compared with deterministic model predictive control and open-loop control strategies.
机译:分布式可再生能源的高渗透率给有源配电网带来了巨大的不确定性。需要考虑内在不确定性的最优控制方法,以促进有源配电网的经济和可靠运行。提出了一种基于改进的随机模型预测控制框架的随机后退水平控制方法,以集成分布式发电的高渗透率。在有限的预测范围内共同优化多个可控资源,同时确保相关的安全限制。开发了用于有源配电网的简化Z总线灵敏度,以高精度高效地计算系统非线性,并与顺序线性规划相结合,迭代得出线性状态空间模型,以补偿累积的建模误差。此外,将电压限制重新定义为机会限制,以指示电压合格率的概率可靠性指标,并在降低成本和调节电压之间达成权衡。仿射骚扰反馈控制策略在此处得到利用,以增强闭环控制性能,并将难处理的机会约束解析为二阶锥约束。进行了基于33总线和123总线配电系统的综合案例研究,以从建模的准确性,控制性能,成本降低和方法可扩展性方面证明了该方法的能力和有效性。所提出的方法可以有效地对规定的概率水平的不确定性实施电压调节。与确定性模型预测控制和开环控制策略相比,可以减少控制成本和约束约束。

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