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首页> 外文期刊>IEE proceedings. Part C, Generation, Transmission, and Distribution >Application of S-model learning automata for multi-objective optimal operation of power systems
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Application of S-model learning automata for multi-objective optimal operation of power systems

机译:S模型学习自动机在电力系统多目标优化运行中的应用

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摘要

A learning automaton systematically updates a strategy to enhance the performance of a system output. The authors apply, a variable-structure learning automaton to achieve a best compromise solution between the economic operation and stable operation in a power system when the loads vary randomly. Both the generation cost for economic operation and the modal performance measure for stable operation of the power system are considered as performance indices for multi-objective optimal operation. In particular, it is shown that the S-model learning automata can be applied satisfactorily to the multi-objective optimisation problem to obtain the best trade-off between the conflicting objectives of economy and stability in the power system.
机译:学习自动机会系统地更新策略以增强系统输出的性能。作者应用了一种可变结构学习自动机,以在负载随机变化时在经济运行和电力系统稳定运行之间取得最佳折衷解决方案。经济运行的发电成本和电力系统稳定运行的模态性能指标均被视为多目标最优运行的性能指标。特别地,表明S模型学习自动机可以令人满意地应用于多目标优化问题,以获得经济的冲突目标与电力系统的稳定性之间的最佳权衡。

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