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Improvement in the computational efficiency of a technique for assessing the reliability of electric power systems based on the Monte Carlo method

机译:基于蒙特卡罗方法评估电力系统可靠性的技术的计算效率

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摘要

The reliability of energy systems is assessed to control their operation and expansion. An effective method for reliability assessment is the Monte Carlo method. This process, however, is often time-consuming due to the large size of the power system. This interferes with subsequent control problems. The speed of reliability assessment and the accuracy of the result for the Monte Carlo method directly depend on the number of randomly generated states of the system, their quality and the complexity of the subproblem to be solved for each state. When solving such a subproblem for reliability assessment, random states can be defined as a shortage and shortage-free ones. To assess the reliability of power systems using the Monte Carlo method, one should analyze only the state of the system with a shortage. We suggest the use of machine learning methods to eliminate or sort the shortage and shortage-free states. The paper demonstrates the effectiveness of two methods: a support vector machine and a random forest. It also shows their performance when the Monte Carlo and quasi-Monte Carlo methods are used.
机译:评估能量系统的可靠性以控制其运行和扩展。有效的可靠性评估方法是蒙特卡罗方法。然而,由于电力系统的大尺寸,该过程通常是耗时的。这会干扰随后的控制问题。可靠性评估的速度和蒙特卡罗方法的结果的准确性直接取决于系统的随机产生的状态的数量,它们的质量和子问题的复杂性要为每个状态解决。在解决此类子标数以进行可靠性评估时,随机状态可以被定义为不足和无短缺的状态。为了评估使用Monte Carlo方法的电力系统的可靠性,应该仅通过短缺分析系统的状态。我们建议使用机器学习方法来消除或排序不足和无短缺状态。本文展示了两种方法的有效性:支持向量机和随机林。当使用蒙特卡罗和准蒙特卡罗方法时,它还显示了它们的性能。

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