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Optimizing Configuration of Cyber Network Considering Graph Theory Structure and Teaching–Learning-Based Optimization (GT-TLBO)

机译:考虑图形理论结构和基于教学 - 基于教学优化的网络网络的优化配置(GT-TLBO)

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摘要

Selecting the best configuration for a cyber-network system is considered as one of the major challenges in terms of the reliability evolution of smart systems because of a specific relationship between power network system and cyber network. Although producing some possible cyber networks for one simple power system and selecting the best one does not need any formulas and can be done through trial and error as performed in previous studies, producing all possible nth elements of the cyber network that observe the cyber protocols and choosing the best one has not been done before. Choosing the best configuration for any nth elements cyber network that can be connected to a bulk power network needs a robust and adequate computer algorithm considering cyber protocols and decision-making goals. In this paper, a novel method is proposed in order to introduce the best configuration for a cyber-network system to accommodate cyber protocols and have a remarkable effect on decreasing expected energy not supplied (EENS) compared with those previously studied. To this end, two mathematical concepts are proposed; a graph theory to consider cyber protocols and teachinglearning- based optimization to select the best cyber configuration with minimum EENS. During the first time, choosing the best configuration with each specific goal for nth devices of a cyber-network system is applicable by converting it into an n x n adjacency matrix and using the proposed graph theory mixed with teaching-learning-based optimization algorithm. Moreover, Monte Carlo simulation was used in this paper as one of the most precise probabilistic methods. The test results indicate that the proposed method selected for identifying the best configuration of a cyber-network system has significantly improved reliability indices compared to those in previous papers and it could be useful for every wide power-cyber network. Additionally, different types of cyber network are studied for validating the proposed method. This method is applied to the realistic feeder of the Hormozgan Regional Electric Company as a smart pilot system.
机译:选择用于网络网络系统的最佳配置被认为是智能系统的可靠性演变的主要挑战之一,因为电网系统和网络网络之间的特定关系。虽然为一个简单的电力系统产生了一些可能的网络网络并选择最好的网络网络不需要任何公式,但可以通过在先前研究中执行的试验和误差来完成,从而产生观察网络协议的网络网络的所有可能的第n个元素。选择最好的一个尚未完成。考虑网络协议和决策目标,选择可以连接到散装电网的任何第n个元素网络网络的最佳配置需要一种坚固且充分的计算机算法。在本文中,提出了一种新方法,以便引入网络网络系统的最佳配置,以容纳网络协议,并且与先前研究的那些相比,对未提供的预期能量(Eens)的降低而具有显着影响。为此,提出了两种数学概念;图表理论考虑网络协议和基于教学的优化,用最小Eens选择最好的网络配置。在第一次,选择具有网络系统的第n个设备的每个特定目标的最佳配置,可以通过将其转换为N×N个邻接矩阵,并使用与基于教学的教学的优化算法混​​合的图形理论来适用。此外,本文使用了Monte Carlo模拟作为最精确的概率方法之一。测试结果表明,选择用于识别网络网络系统的最佳配置的所提出的方法具有显着提高的可靠性指标与先前的论文中的可靠性指标,并且对于每个宽的电力网络网络可能是有用的。另外,研究了不同类型的网络网络,用于验证所提出的方法。该方法应用于Hormozgan区域电气公司的现实饲养器作为智能试点系统。

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