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Hybrid differential evolution for cogeneration economic dispatch problem

机译:热电联产经济调度问题的混合差分进化

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This paper proposes a hybrid differential evolution with multiplier updating (HDE-MU) to solve cogeneration economic dispatch (CED) problems. The hybrid differential evolution (HDE) has the ability to efficiently search and actively explore solutions. Multiplier updating (MU) is introduced to avoid deforming the augmented Lagrange function (ALF), which is adopted to manage the system constraints of CED Problems. The proposed HDE-MU integrates the HDE with the MU. Two cogeneration examples are employed to demonstrate that the proposed algorithm has the benefits of straightforwardness; ease of implementation; better effectiveness than previous methods; better effectiveness and efficiency than the traditional differential evolution (DE); automatic adjustment of the randomly assigned penalty to an appropriate value, and the requirement for only a small population when applied to CED operations.
机译:本文提出了一种具有乘数更新的混合差分进化(HDE-MU),以解决热电联产经济调度(CED)问题。混合差分进化(HDE)具有有效搜索和积极探索解决方案的能力。引入乘数更新(MU)以避免使增强的Lagrange函数(ALF)变形,该函数用于管理CED问题的系统约束。提议的HDE-MU将HDE与MU集成在一起。两个热电联产的例子被用来证明所提出的算法具有直接性的好处。易于实施;比以前的方法有更好的效果;比传统的差分进化(DE)更好的有效性和效率;自动将随机分配的罚款调整为适当的值,并且应用于CED操作时只需要很少的人口。

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