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Stochastic correlation analysis to rank the impact of intermittent wind generation on unreliability margins of power systems

机译:随机相关分析对间歇风发电对电力系统不可靠性边缘的影响

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Power systems are vulnerable to extreme contingencies (like an outage of a major generating substation or transmission line) that can cause significant generation and load loss and can lead to further cascading outages of other transmission facilities and generators in the system. Power systems operators take time-ahead actions (real time to day ahead) actions based on forecasted data as well as telemetry. However, there is a probability of extreme swings in wind generation that can push the power system that is already close to system boundaries into unreliable states. Increasing penetration on wind generation and uncertainties in short term forecast can move the system into operational states that can violate N-l reliability criteria. While the power system planning accounts for worst case analyses to mitigate such emergencies, it is necessary to understand the spatial and temporal correlation of load buses with intermittent wind generation. The ranking of wind generators based on stochastic correlation to unreliability margins of load buses provides an insight of system vulnerabilities that can be corrected by appropriate emergency controls. A Monte-Carlo simulation of wind uncertainty forecast is performed to identify the probability distributions of unreliability margins. Ranking of wind generators is performed based on stochastic correlation analysis of the wind power generated and the load losses at the buses. This helps in not only identifying weak buses in the power system but also in identifying the vulnerable wind locations to plan for system reinforcements. Power system modeling and hybrid simulation to calculate unreliability margins are performed using nCAT and demonstrated on the 32-bus Nordic test system.
机译:电力系统容易受到极端突发事件(如主要发电机或传输线的停电),这可能导致显着的发电和负载损失,并且可以导致系统中其他传输设施和发电机的进一步级联中断。电力系统运营商基于预测数据以及遥测,采取超时的行动(实时到一天)动作。然而,风发电中存在极端摇摆的概率,可以推动已经靠近系统边界的电力系统进入不可靠的状态。在短期预测中提高风力产生和不确定性的渗透可以将系统移动到可以违反N-L可靠性标准的运营状态。虽然电力系统规划占最坏情况分析以减轻这种紧急情况,但有必要了解具有间歇风的负载总线的空间和时间相关性。基于随机与负载总线的不可靠性边缘的风力发生器排名提供了对系统漏洞的洞察力,可以通过适当的紧急控制来纠正。进行蒙特卡罗对风不确定性预测的仿真,以确定不可靠性利润率的概率分布。基于风力发电的随机相关性和总线负载损耗来执行风力发生器的排序。这不仅有助于识别电力系统中的弱总线,而且还有助于识别易受伤害的风力位置以规划系统增强。使用NCAT进行电源系统建模和混合仿真以计算不可靠性利润率,并在32总线北欧测试系统上演示。

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