基于冲击电流估计的工业设备电力系统自动恢复

Anusha Papasani, Kaynat Zia, Weijen Lee
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引用次数: 4

摘要

电力系统行业经常接近其极限运行,以适应日益增加的需求,造成停电的高风险。电力系统的恢复技术主要集中在负荷恢复和快速恢复上。在传统的启发式方法中,负载被认为是恒定的。然而,从系统操作的角度来看,负载一旦被拾取就会发生变化。这在工业负载中很常见。在工业系统中,涉及许多感应电动机的负载。感应电动机的高启动电流会导致电压下降,这可能会影响变速驱动器并导致接触器脱落。如果不考虑负载变化和浪涌电流,则在拾取时负载将被严重低估,从而可能导致系统再次崩溃。此外,人们可能必须优先考虑负载,以帮助操作员在恢复过程中。为了提供有效的恢复路径,利用图论方法开发了电力系统自动恢复工具,并考虑了负荷优先级、冷负荷采集、涌流和采集后负荷变化等因素,实现了平稳成功的恢复过程。随着智能电网的发展,智能电子设备(IED)已部署在整个电力系统网络中进行监测和控制。因此,本文利用ied的可用性来报告停电前的负荷和恢复期间的实时负荷。工业系统作为一个测试案例来证明所提出方法的有效性。
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Automatic Power System Restoration With Inrush Current Estimation For Industrial Facility
The power system industry often operates close to its limits to accommodate the increased demand posing a high risk of blackouts. Power system restoration techniques are utilized post breakout focusing on load pickup and speedy recovery. In traditional heuristic methods, the load is considered to be constant after it is picked. However, from a system operation point of view, the load varies once picked up. This is commonly observed in industrial loads. In Industrial systems, loads, which involve many induction motors. The high starting currents of the induction motors leads to voltage sags that may affect variable speed drives and cause contactors to drop out. If the load variation and inrush currents are not considered, load will be significantly underestimated at the time of pickup which might lead to a system re-collapse. Besides, one may have to prioritize the loads to help the operator during restoration. An automatic power system restoration tool is developed using graph theory to provide an efficient restoration path and considers the priority of loads, Cold load pickup, Inrush currents, and load variation after picking up for a smooth and successful restoration process. Evolution of smart grid, the Intelligent Electronic Device (IED) has been deployed throughout the power system network for monitoring and control. Therefore, this paper takes advantages on the availability of IEDs to report the loads right before the blackout and the real-time load during the restoration. The industrial system is used as a test case to demonstrate the effectiveness of the proposed methodology.
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