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Modelling of efficient distributed generation porfolios using a multiobjective optimization approach

机译:使用多目标优化方法对高效分布式发电组合进行建模

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In course of the German power system transition to a higher share of renewable energy sources decentralized activities constitute a major driving force for the growth of renewable energy capacity. In this context plural activities and initiatives on the local and regional level are followed to develop concepts for an efficient and sustainable regional energy supply. To achieve these goals various objectives has to be simultaneously accomplished. Generally, these objectives contradict to each other and cannot be handled by a single optimization technique. This paper proposes a multiobjective (MO) optimization approach for identifying efficient DG generation portfolios regarding multiple objectives. The methodology presented allows the planner to decide the best trade-off between the self-supply degree, environmental impact and electricity generation cost. The proposal applies, in a study case, a MO genetic algorithm that allows identifying a set of non-inferior Pareto-optimal solutions.
机译:在德国电力系统向更高比例的可再生能源过渡的过程中,分散活动构成了可再生能源容量增长的主要动力。在这种情况下,遵循了在地方和地区层面上的多种活动和倡议,以发展有效和可持续的地区能源供应的概念。为了实现这些目标,必须同时实现各种目标。通常,这些目标相互矛盾,无法通过单一的优化技术来处理。本文提出了一种多目标(MO)优化方法,用于识别有关多个目标的有效DG发电投资组合。提出的方法使计划者可以在自给度,环境影响和发电成本之间做出最佳权衡。该建议在研究案例中适用于MO遗传算法,该算法可以识别一组非劣等的Pareto最优解。

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