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首页> 外文期刊>Journal of Experimental and Theoretical Artificial Intelligence >Group search optimiser-based optimal bidding strategies with no Karush–Kuhn–Tucker optimality conditions
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Group search optimiser-based optimal bidding strategies with no Karush–Kuhn–Tucker optimality conditions

机译:没有Karush–Kuhn–Tucker最优性条件的基于组搜索优化器的最优竞标策略

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摘要

General strategic bidding procedure has been formulated in the literature as a bi-level searching problem, in which the offer curve tends to minimise the market clearing function and to maximise the profit. Computationally, this is complex and hence, the researchers have adopted Karush-Kuhn-Tucker (KKT) optimality conditions to transform the model into a single-level maximisation problem. However, the profit maximisation problem with KKT optimality conditions poses great challenge to the classical optimisation algorithms. The problem has become more complex after the inclusion of transmission constraints. This paper simplifies the profit maximisation problem as a minimisation function, in which the transmission constraints, the operating limits and the ISO market clearing functions are considered with no KKT optimality conditions. The derived function is solved using group search optimiser (GSO), a robust population-based optimisation algorithm. Experimental investigation is carried out on IEEE 14 as well as IEEE 30 bus systems and the performance is compared against differential evolution-based strategic bidding, genetic algorithm-based strategic bidding and particle swarm optimisation-based strategic bidding methods. The simulation results demonstrate that the obtained profit maximisation through GSO-based bidding strategies is higher than the other three methods.
机译:文献中已将一般性战略招标程序表述为两级搜索问题,其中报价曲线趋向于使市场清算功能最小化并使利润最大化。从计算上讲,这很复杂,因此研究人员采用了Karush-Kuhn-Tucker(KKT)最优性条件将模型转换为单级最大化问题。然而,具有KKT最优性条件的利润最大化问题对经典的优化算法提出了很大的挑战。加入传输限制后,问题变得更加复杂。本文将利润最大化问题简化为一个最小化函数,其中考虑了在没有KKT最优条件的情况下的传输约束,操作限制和ISO市场清算函数。使用组搜索优化器(GSO)解决了派生函数,组搜索优化器是一种可靠的基于总体的优化算法。在IEEE 14以及IEEE 30总线系统上进行了实验研究,并将性能与基于差异演化的策略投标,基于遗传算法的策略投标和基于粒子群优化的策略投标方法进行了比较。仿真结果表明,通过基于GSO的出价策略获得的利润最大化高于其他三种方法。

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