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Decision aid function for restoration of transmission power systems after a blackout

机译:停电后恢复输电系统的决策辅助功能

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摘要

This thesis, based on a project realised in cooperation with Électricité de France (EDF), proposes a new concept for a Decision Aid Function FOr Restoration (DAFFOR) of transmission power systems after a blackout. DAFFOR is an interactive computer tool which provides the operators in power system control centres with guidance concerning the actions to execute during the restoration, in real-time conditions. In other words, it takes into account the real-time state of the power system, including the unforeseen events that may happen during the restoration. Since time is a limiting factor and the decision making is a highly combinatorial problem, a knowledge-based system is proposed in order to solve it. The restoration process can be decomposed into two main stages. The first one, skeleton creation, consists of starting the production units and connecting some transmission devices in order to energize a strong network. The second stage, load pickup, aims to supply the consumers. In DAFFOR, EDF's strategy for the first restoration stage has been implemented, and a new strategy for the load pickup stage has been proposed and implemented in the form of rules. The above restoration strategies represent DAFFOR's knowledge, which has been enhanced with a number of heuristics. DAFFOR consists of two kernels: the Reasoning kernel and the Real Time Update kernel. The Reasoning kernel has the task of assisting the operator during the restoration process and is the interactive guidance part of DAFFOR. It can either suggest a control action to execute on the power system to the operators or assess a control action provided by the operators. The control action is suggested with respect to operating limits (over- and under-voltages, frequency excursions and overloads) and according to knowledge (restoration strategy and heuristics). The feasibility of an action is tested within an internal dynamic simulator, which also takes into account the time necessary to physically execute an action (e.g., telephone a person in the field). The Reasoning kernel can adapt its operation via data generated by the Real Time Update (RTUpd) kernel. The RTUpd kernel steadily reads real-time power system data from System Control and Data Acquisition (SCADA) function and those entered by the operators (if unavailable from SCADA). It generates a coherent data set, which is the only real-time information available to the Reasoning kernel, and the message which indicates to the Reasoning kernel how to continue its operation. In addition to the real-time data, the RTUpd kernel has two feedback inputs internal to DAFFOR: a coherent data set generated in the previous data processing by the RTUpd kernel itself, and a simulated data set generated by the Reasoning kernel (i.e., its internal dynamic simulator). With these three inputs, the RTUpd kernel generates the current image of the power system, and identifies unforeseen events. Thanks to the RTUpd kernel, the Reasoning kernel may keep up with the dynamic evolution of the power system. The stand-alone prototype of DAFFOR has been tested with data provided by EDF, and shown very good efficiency. At present, it is about to be coupled with the EDF's operator training simulator in order to test its real-time functionality. This work also proposes an original method aimed at the determination of a strategy for the load pickup stage. A genetic algorithm has been developed which generates the optimized sequences of manoeuvres for different initial states of the power system for the second restoration stage. It uses the dynamic simulator as its evaluation function. The obtained results have shown that some additional manipulations should be done in order to deduce generic rules for the load pickup strategy. At present, the obtained sequences are classified in a decision tree, which permits the most adequate sequence for the initial state to be chosen.
机译:本文基于与法国电力公司(EDF)合作实现的项目,提出了停电后输电系统的决策辅助功能For恢复(DAFFOR)的新概念。 DAFFOR是一种交互式计算机工具,可为电力系统控制中心的操作员实时提供有关恢复期间要执行的操作的指南。换句话说,它考虑了电源系统的实时状态,包括恢复期间可能发生的不可预见的事件。由于时间是一个限制因素,而决策是一个高度组合的问题,因此提出了一种基于知识的系统来解决这个问题。恢复过程可以分解为两个主要阶段。第一个是最基本的创建,包括启动生产单元并连接一些传输设备以激发强大的网络。第二阶段,负载提取,旨在为消费者提供电力。在DAFFOR中,法国电力公司执行了第一个恢复阶段的策略,并提出了一项新的负载提取策略,并以规则的形式实施了该策略。以上恢复策略代表了DAFFOR的知识,并通过许多启发式方法加以增强。 DAFFOR由两个内核组成:推理内核和实时更新内核。推理内核的任务是在恢复过程中协助操作员,并且是DAFFOR的交互式指导部分。它可以向操作员建议在电源系统上执行的控制操作,也可以评估操作员提供的控制操作。建议根据操作限制(过压和欠压,频率偏移和过载)并根据知识(恢复策略和启发式方法)采取控制措施。在内部动态模拟器中测试动作的可行性,该动态模拟器还考虑了实际执行动作所需的时间(例如,给现场人员打电话)。推理内核可以通过实时更新(RTUpd)内核生成的数据来调整其操作。 RTUpd内核稳定地从系统控制和数据采集(SCADA)功能以及操作员输入的实时电力系统数据中读取数据(如果无法从SCADA获得)。它生成一个连贯的数据集,这是推理内核唯一可用的实时信息,以及一条消息,向推理内核指示如何继续其操作。除了实时数据之外,RTUpd内核还有DAFFOR内部的两个反馈输入:RTUpd内核本身在先前数据处理中生成的连贯数据集,以及Reasoning内核生成的模拟数据集(即内部动态模拟器)。使用这三个输入,RTUpd内核会生成电力系统的当前映像,并识别意外事件。多亏了RTUpd内核,推理内核可以跟上电力系统的动态发展。 DAFFOR的独立原型已使用EDF提供的数据进行了测试,并显示出非常好的效率。目前,它将与EDF的操作员培训模拟器配合使用,以测试其实时功能。这项工作还提出了一种旨在确定负载提取阶段策略的原始方法。已经开发了遗传算法,该遗传算法针对第二恢复阶段针对电力系统的不同初始状态生成优化的操纵序列。它使用动态模拟器作为其评估功能。获得的结果表明,应进行一些其他操作才能得出负载提取策略的通用规则。目前,将获得的序列分类到决策树中,从而可以为初始状态选择最合适的序列。

著录项

  • 作者

    Kostic Tatjana;

  • 作者单位
  • 年度 1997
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  • 原文格式 PDF
  • 正文语种 eng
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