Emission constrained unit commitment problem solution using invasive weed optimization Algorithm

B. Saravanan, E. R. Vasudevan
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引用次数: 8

Abstract

With an increase in environmental considerations over the years, it has become extremely significant to reduce the emission levels in all areas of technology. Likewise, the problem of Unit Commitment (UC), which has always been thought of as a problem to reduce generation cost also involves an added objective of reducing emission levels. This paper presents a new methodology to solve this multi-objective problem. The problem of unit commitment keeping in mind the emission levels has been solved using the evolutionary algorithm of Invasive Weed Optimization (IWO). This proposed algorithm has been tested for two cases, eleven unit twenty four hour systems and eleven unit one sixty eight hour system. Both the results of unit commitment and emission levels have been obtained individually using IWO and the best solution has been achieved by compromising between emission levels and generation cost. This balance has been achieved using trade-off between the two separate solutions. The advantage of this new method gives much more accurate results for both emission and fuel cost which helps in achieving a better optimal solution using trade-offs.
基于入侵杂草优化算法的约束约束机组调度问题求解
随着多年来对环境考虑的增加,减少所有技术领域的排放水平变得极其重要。同样,一直被认为是降低发电成本问题的单位承诺问题也涉及到降低排放水平的附加目标。本文提出了一种解决多目标问题的新方法。采用入侵杂草优化(IWO)进化算法解决了考虑排放水平的机组承诺问题。该算法已在11个单位24小时制和11个单位68小时制两种情况下进行了测试。利用IWO分别获得了机组承诺和排放水平的结果,并在排放水平和发电成本之间进行了折衷,获得了最佳解决方案。这种平衡是通过在两个独立的解决方案之间进行权衡来实现的。这种新方法的优点是对排放和燃料成本都给出了更准确的结果,这有助于通过权衡获得更好的最佳解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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