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Quantum-behaved Particle Swarm Optimization for Multiple-fuel-constrained Generation Scheduling of Power System

机译:电力系统多燃料受限发电调度量子表现粒子群优化

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This research proposes a quantum-behaved particle swarm optimization with a multiplier updating technique (QPSO-MU) for the multiple-fuel-constrained generation scheduling of power system. The quantum-behaved particle swarm optimization (QPSO) equips with a migration can efficiently search and actively explore solutions. The multiplier updating (MU) is introduced to avoid deforming the augmented Lagrange function and resulting in difficulty of solution searching. The proposed algorithm integrates the QPSO and the MU that has merits of automatically adjusting the randomly given penalty to a proper value and requiring only a small-size population for the power economic dispatch problem of the multiple-fuel-constrained generation scheduling. Numerical results of two test systems indicate that the proposed algorithm is more suitable than previous approaches in the practical economic dispatch for the multiple-fuel-constrained generation scheduling of power system.
机译:该研究提出了具有乘法器更新技术(QPSO-MU)的量子表现粒子群优化,用于电力系统的多燃料受限产生调度。量子行为粒子群优化(QPSO)配备迁移可以有效地搜索和积极探索解决方案。介绍乘法器更新(MU)以避免变形增强拉格朗日功能并导致解决方案搜索的难度。所提出的算法集成了QPSO和MU,该QPSO和MU具有自动将随机给定的罚款自动调整到适当的值,并且仅需要用于多燃料受限发电调度的权力经济调度问题的小尺寸群体。两个测试系统的数值结果表明,所提出的算法比以前的方法在实际经济调度的实际经济调度中更适合于先前的电力系统的经济派遣。

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