4.6 Article

Chaos Moth Flame Algorithm for Multi-Objective Dynamic Economic Dispatch Integrating with Plug-In Electric Vehicles

期刊

ELECTRONICS
卷 12, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/electronics12122742

关键词

chaos moth flame algorithm; dynamic economic dispatch; grid fluctuation; plug-in electric vehicles; global optimization; chaotic map

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Dynamic economic dispatch plays a crucial role in power system operation and control. By integrating plug-in electric vehicles with the grid, fluctuations can be mitigated and the benefits of balancing peaks and filling valleys can be realized. This paper proposes a model that considers the day-ahead scheduling of power systems and the impact of PEVs, and introduces an improved chaos moth flame optimization algorithm (CMFO) to solve the problem.
Dynamic economic dispatch (DED) plays an important role in the operation and control of power systems. The integration of DED with space and time makes it a complex and challenging problem in optimal decision making. By connecting plug-in electric vehicles (PEVs) to the grid (V2G), the fluctuations in the grid can be mitigated, and the benefits of balancing peaks and filling valleys can be realized. However, the complexity of DED has increased with the emergence of the penetration of plug-in electric vehicles. This paper proposes a model that takes into account the day-ahead, hourly-based scheduling of power systems and the impact of PEVs. To solve the model, an improved chaos moth flame optimization algorithm (CMFO) is introduced. This algorithm has a faster convergence rate and better global optimization capabilities due to the incorporation of chaotic mapping. The feasibility of the proposed CMFO is validated through numerical experiments on benchmark functions and various generation units of different sizes. The results demonstrate the superiority of CMFO compared with other commonly used swarm intelligence algorithms.

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