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An Application of Artificial Intelligent Optimization Techniques to Dynamic Unit Commitment for the Western Area of Saudi Arabia

机译:人工智能优化技术在沙特阿拉伯西部地区动态机组组合中的应用

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Unit commitment is the main challenging part of this paper. Operation data are collected form the Western Area of Saudi Arabia, however, the data are average. These data are manipulated to non-linear data that fit with unit commitment. Some missing constraints are imposed from standard IEEE data set. There are total one hundred and thirty five (135) units in the system for around 9,000 MW power demand of the area. So scalability of unit commitment is one of the main issues for this paper. Particle swarm optimization (PSO) method is applied to develop unit commitment system. Standard PSO sometimes does not converge for the one hundred and thirty five (135) units and other practical constraints. Some parts of PSO are modified (e.g., includes bacterial foraging operations) to converge the system. Besides, a repair method is applied to converge the system fast. In modern UC, both cost and emission are minimized, however, in typical UC, only cost is minimized. In this research, firstly cost, secondly emission and thirdly both cost and emission are minimized in the system. Thus the UC is generalized and can be applied to other system data and generates results depending on cost and emission coefficients.
机译:单位承诺是本文的主要挑战部分。运营数据是从沙特阿拉伯西部地区收集的,但是这些数据是平均值。这些数据被处理为符合单位承诺的非线性数据。标准IEEE数据集强加了一些缺失的约束。系统中总共有一百三十五(135)台,满足该地区约9,000 MW的电力需求。因此,单位承诺的可扩展性是本文的主要问题之一。粒子群优化(PSO)方法被用于开发单元承诺系统。标准PSO有时无法收敛到一百三十五(135)单位和其他实际限制。修改了PSO的某些部分(例如,包括细菌觅食操作)以使系统收敛。此外,还采用了一种修复方法来快速收敛系统。在现代UC中,成本和排放都被最小化,但是在典型的UC中,只有成本被最小化了。在这项研究中,首先在系统中将成本降到最低,其次将排放降到最低。因此,UC是通用的,可以应用于其他系统数据,并根据成本和排放系数生成结果。

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