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Sonar Inspired Optimization in Energy Problems Related to Load and Emission Dispatch

机译:Sonar激发了与负载和排放派遣相关的能量问题的优化

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One of the upcoming categories of Computational Intelligence (CI) is meta-heuristic schemes, which derive their intelligence from strategies that are met in nature, namely Nature Inspired Algorithms. These algorithms are used in various optimization problems because of their ability to cope with multi-objective problems and solve difficult constraint optimization problems. In this work, the performance of Sonar Inspired Optimization (SIO) is tested in a non-smooth, non-convex multi-objective Energy problem, namely the Economic Emissions Load Dispatch (EELD) problem. The research hypothesis was that this new nature-inspired method would provide better solutions because of its mechanisms. The algorithm manages to deal with constraints, namely Valve-point Effect and Multi-fuel Operation, and produces only feasible solutions, which satisfy power demand and operating limits of the system examined. Also, with a lot less number of agents manages to be very competitive against other meta-heuristics, such as hybrid schemes and established nature inspired algorithms. Furthermore, the proposed scheme outperforms several methods derived from literature.
机译:即将到来的计算智能类别(CI)之一是Meta-heuristic方案,它从自然界达到的策略中导出了他们的智慧,即自然启发算法。这些算法用于各种优化问题,因为它们能够应对多目标问题并解决困难的约束优化问题。在这项工作中,在非平滑的非凸多目标能量问题中测试了声纳灵感优化(SIO)的性能,即经济排放量调度(EELD)问题。研究假设是,这种新的自然启发方法由于其机制而提供更好的解决方案。该算法管理有限处理约束,即阀点效应和多燃料操作,并仅生产可行的解决方案,这些解决方案满足所检查系统的电源和操作限制。此外,较少数量的代理商管理对其他元启发式的竞争力,例如混合方案和建立的自然启发算法。此外,所提出的方案优于来自文献的几种方法。

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