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首页> 外文期刊>International journal of applied evolutionary computation >A Modified SSLPS Algorithm with Logistic Pseudo-Random Sequence Generator for Improving the Performance of Neka Power Plant: A Comparative/Conceptual Analysis
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A Modified SSLPS Algorithm with Logistic Pseudo-Random Sequence Generator for Improving the Performance of Neka Power Plant: A Comparative/Conceptual Analysis

机译:具有逻辑伪随机序列发生器的改进SSLPS算法以提高Neka电厂的性能:比较/概念分析

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Metaheuristic techniques have successfully contributedtothedevelopmentandoptimizationoflarge-scaledistributedpower systems. The archived literature demonstrate that the modification or tuning of the parameters of specific metaheuristics can provide powerful tools suited for optimization of power plants with different types of constraints. In spite of the high potential of metaheuristics in dealing with such systems, most of the conducted researches only address the optimization of the electrical aspects of power systems. In this research, the authors intend to attest the applicability of metaheuristics for optimizing the mechanical aspects of a real-world large-scale power plant, i.e. Neka power plant sited in Mazandaran, Iran. To do so, firstly, based on the laws of thermodynamics and the physics of the problem at hand, the authors implement a mathematical model to calculate the values ofexergetic efficiency, energetic efficiency, and total cost of the Neka power plant as three main objective functions. Besides, a memetic supervised neural network and Bahadori 's mathematical model are used to calculate the dynamic values of specific heat over the operating procedure of the power plant. At the second stage, a modified version of a recent spotlighted Pareto based multiobjective metaheuristic called synchronous self-learning Pareto strategy (SSLPS) isproposed. The proposed technique is based on embedding logistic chaotic map into the algorithmic architecture of SSLPS. In this context, the resulting optimizer, i.e. chaos-enhanced SSLPS (C-SSLPS), uses the response of time-discrete nonlinear logistic map to update the positions of heuristic agents over the optimization procedure. For the sake of comparison, strength Pareto evolutionary algorithm (SPEA 2), non-dominated sorting genetic algorithm (NSGA-II) and standard SSLPS are taken into account. The results of the numerical study confirm the superiority of the proposed technique as compared to the other rival optimizers. Besides, it is observed that metaheuristics can be successfully used for optimizing the mechanical/energetic parameters of Neka power plant.
机译:元启发式技术已成功地为大型分布式电源系统的开发和优化做出了贡献。存档的文献表明,对特定元启发法的参数进行修改或调整可以提供适用于优化具有不同约束类型的电厂的强大工具。尽管元启发式方法在处理此类系统中具有很高的潜力,但大多数进行的研究仅针对电力系统电气方面的优化。在这项研究中,作者打算证明元启发法在优化现实世界大型发电厂(即位于伊朗马赞丹兰的内卡发电厂)的机械方面的适用性。为此,首先,根据热力学定律和当前问题的物理原理,作者实现了一个数学模型,以计算Neka电厂的发电厂效率,发电厂效率和总成本这三个主要目标函数的值。此外,还使用了模因监督神经网络和Bahadori数学模型来计算电厂运行过程中比热的动态值。在第二阶段,提出了一种新的,基于聚光灯的多目标元启发式方法的改进版本,称为同步自学习帕累托策略(SSLPS)。所提出的技术基于将逻辑混沌映射图嵌入SSLPS的算法体系结构。在这种情况下,最终的优化器,即混沌增强型SSLPS(C-SSLPS),使用时离散非线性逻辑映射的响应来更新优化过程中启发式代理的位置。为了进行比较,考虑了强度帕累托进化算法(SPEA 2),非主导排序遗传算法(NSGA-II)和标准SSLPS。数值研究的结果证实了与其他竞争对手的优化器相比,该技术的优越性。此外,可以观察到,元启发法可以成功地用于优化Neka电厂的机械/能量参数。

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