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Robust electric power infrastructures: Response and recovery during catastrophic failures.

机译:强大的电力基础设施:灾难性故障时的响应和恢复。

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This dissertation is a systematic study of artificial neural networks (ANN) applications in power system restoration (PSR). PSR is based on available generation and load to be restored analysis. A literature review showed that the conventional PSR methods, i.e. the pre-established guidelines, the expert systems method, the mathematical programming method and the petri-net method have limitations such as the necessary time to obtain the PSR plan. ANN may help to solve this problem presenting a reliable PSR plan in a smaller time.; Based on actual and past experiences, a PSR engine based on ANN was proposed and developed. Data from the Iowa 162 bus power system was used in the implementation of the technique. Reactive and real power balance, fault location, phase angles across breakers and intentional islanding were taken into account in the implementation of the technique. Constraints in PSR as thermal limits of transmission lines (TL), stability issues, number of TL used in the restoration plan and lockout breakers were used to create feasible PSR plans. To compare the time necessary to achieve the PSR plan with another technique a PSR method based on a breadth search algorithm was implemented. This algorithm was also used to create training and validation patterns for the ANN used in the scheme. An algorithm to determine the switching sequence of the breakers was also implemented. In order to determine the switching sequence of the breakers the algorithm takes into account the most priority loads and the final system configuration generated by the ANN.; The PSR technique implemented is composed by several pairs of ANN, each one assigned to an individual island of the system. The restoration of the system is done in parallel in each island. After each island is restored the tie lines are closed. The results encountered shows that ANN based schemes can be used in PSR helping the operators restore the system under the stressful conditions following a blackout.
机译:本文是对人工神经网络在电力系统恢复中的应用的系统研究。 PSR基于可用的生成和要还原的负载进行分析。文献综述表明,常规的PSR方法,即预先建立的准则,专家系统方法,数学程序设计方法和Petri网方法具有局限性,例如获得PSR计划所需的时间。人工神经网络可以在更短的时间内提出一个可靠的PSR计划来解决这个问题。基于实际和过去的经验,提出并开发了基于ANN的PSR引擎。该技术的实施使用了来自爱荷华州162总线电源系统的数据。该技术的实施考虑了无功和有功功率的平衡,故障的位置,跨断路器的相角和有意的孤岛。 PSR的约束条件包括传输线(TL)的热极限,稳定性问题,恢复计划中使用的TL数量以及锁定断路器,从而创建了可行的PSR计划。为了将实现PSR计划所需的时间与另一种技术进行比较,实现了一种基于广度搜索算法的PSR方法。该算法还用于为方案中使用的ANN创建训练和验证模式。还实现了确定断路器开关顺序的算法。为了确定断路器的切换顺序,算法考虑了最优先级的负载和ANN生成的最终系统配置。实施的PSR技术由几对ANN组成,每对ANN分配给系统的一个单独的孤岛。系统的恢复在每个岛中并行进行。恢复每个岛后,将关闭联络线。遇到的结果表明,基于ANN的方案可用于PSR,帮助运营商在停电后的压力条件下恢复系统。

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