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A new meta-heuristic method for profit-based unit commitment under competitive environment

机译:竞争环境下基于利润的单位承诺的一种新的荟萃启发式方法

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This paper proposes a new hybrid meta-heuristic method for profit-based unit commitment (PBUC) that considers units with nonlinear cost function. The proposed method aims at global optimization to carry out profit maximization under competitive environment. The objective of the traditional UC is to minimize operation-cost while satisfying the constraints. However, power system operation needs reformulate tasks that reflect the changes due to the deregulated power systems. As a result, GENCO is interested to determine generation scheduling from a standpoint of maximizing profit under competitive environment. The problem may be formulated as PBUC that corresponds to a nonlinear mixed-integer problem. It is hard to solve due to the complexity. In this paper, a new hybrid meta-heuristic method is proposed to solve PBUC. It makes use of improved TS-EPSO techniques that evaluates solutions with two layers of meta-heuristics. Layer 1 determines the on-off state of generators with Tabu Search (TS) while Layer 2 evaluates output of generators with the evolutionary particle swarm optimization (EPSO). TS is very useful for solving a combinatorial optimization problem efficiently. EPSO has better performance in dealing with an optimization problem with continuous variables. In this paper, TS-EPSO is improved to give more accurate solutions with less CPU time. The proposed method determines a new load curve for maximizing the profit finally. The effectiveness of the proposed method is successfully applied to a sample system.
机译:本文提出了一种新的混合元 - 启发式方法,用于基于利润的单位承诺(PBUC),其考虑非线性成本函数的单位。该方法旨在全球优化,在竞争环境下开展利润最大化。传统UC的目的是最小化运营成本,同时满足约束。但是,电力系统操作需要重新重整反映由于解除管制电力系统的变化的任务。因此,Genco有兴趣从竞争环境下最大化利润的观点来确定生成调度。问题可以被配制为PBUC,其对应于非线性混合整数问题。由于复杂性,很难解决。本文提出了一种新的混合元 - 启发式方法来解决PBUC。它利用改进的TS-EPSO技术,评估了两层Meta-heuRistics的解决方案。第1层确定具有禁忌搜索(TS)的发生器的开关状态,而第2层评估发电机的输出与进化粒子群优化(EPSO)。 TS非常有用,可以有效地解决组合优化问题。 EPSO在处理连续变量的优化问题方面具有更好的性能。在本文中,改进了TS-EPSO,以提供更准确的解决方案,CPU时间较少。所提出的方法确定最终最大化利润的新负载曲线。所提出的方法的有效性成功地应用于样本系统。

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