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Placement and Sizing of Inverter-Based Renewable Systems in Multi-Phase Distribution Networks

机译:多相配电网中基于逆变器的可再生系统的布局和规模

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This paper develops a tractable formulation for optimal placement and sizing of inverter-based renewable systems in multi-phase distribution networks. The goal of the formulation is to minimize the cost of inverter installation, average power import, and average distributed generation curtailment. Three-phase and single-phase inverter models are presented that preserve the underlying mappings between renewable uncertainty to power injection. The uncertainty of distributed generators (DGs) and loads are characterized by a finite set of scenarios. Linear multi-phase power flow approximations are used in conjunction with scenario reduction techniques to arrive at a tractable two-stage stochastic formulation for optimal DG placement and sizing. First-stage decisions are locations for DG deployment and capacity sizes, and second-stage decisions include DG real power curtailment, reactive power support, as well as feeder voltage profile. The resulting formulation is a mixed-integer second-order cone program and can be solved efficiently either by existing optimization solvers or by relaxing the binary variables to the [0,1] interval. Simulation studies on standard multi-phase IEEE test feeders promise that optimal stochastic planning of DGs reduces costs during validation, compared to a scheme where uncertainty is only represented by its average value.
机译:本文为多相配电网中基于逆变器的可再生系统的最佳放置和尺寸确定了一种易于处理的公式。该公式的目标是使逆变器的安装成本,平均功率输入和平均分布式发电成本最小化。提出了三相和单相逆变器模型,该模型保留了可再生不确定性与功率注入之间的潜在映射。分布式发电机(DG)和负载的不确定性以一组有限的场景为特征。线性多相潮流近似与情景减少技术结合使用,以得出易于处理的两阶段随机公式,以优化DG的放置和尺寸。第一阶段的决策是DG部署和容量大小的位置,第二阶段的决策包括DG有功功率削减,无功功率支持以及馈线电压曲线。生成的公式是一个混合整数二阶锥程序,可以通过现有的优化求解器或将二进制变量放宽到[0,1]区间来有效地求解。与仅以不确定度平均值表示不确定性的方案相比,对标准多相IEEE测试馈线的仿真研究保证了DG的最佳随机规划可以降低验证期间的成本。

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