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Cellular estimation of distribution algorithm designed to solve the energy resource management problem under uncertainty

机译:分布算法的蜂窝估计,旨在解决不确定性下的能源资源管理问题

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The Energy Resource Management (ERM) can be modeled as a Mixed-Integer Non-Linear Problem whose aim is to maximize profits generally using smart grid capabilities more than importing energy from external markets. Due to this, many resources and customers are involved in optimization, making ERM a complex problem. Moreover, when the inherent uncertainty of weather conditions, load forecast, electric vehicles planned trips, or market prices is considered, deterministic approaches might fail in obtaining optimal solutions to the problem. In this context, evolutionary algorithms are a useful tool to find effective near-optimal solutions. In fact, to design and test evolutionary algorithms to solve the ERM problem under uncertainty, the research community has developed a simulation framework. In this paper, we propose the Cellular Univariate Marginal Distribution Algorithm with Normal-Cauchy distribution (CUMDANCauchy) to address the ERM problem in uncertain environments. CUMDANCauchy uses a univariate estimation of the product of Normal and Cauchy distributions over each feature, and produces new individuals not only by the sampling of the learned distributions but also using neighborhoods of individuals from a ring cellular structure. The experiments performed over two case studies show that: CUMDANCauchy is as competitive as the previous dominant class of algorithms in terms of the global fitness achieved; its convergence behavior is among the best in comparison with the other tested algorithms; its running time is similar to the algorithm with the best global fitness achieved in the first case study, and it is the fastest algorithm in the second one.
机译:能量资源管理(ERM)可以被建模为混合整数非线性问题,其目的是最大化利润,通常使用智能电网功能,而不是从外部市场导入能量。由于这一点,许多资源和客户都参与了优化,使得ERM成为一个复杂的问题。此外,在考虑天气条件,负荷预测,电动车辆的固有不确定性或考虑市场价格时,确定性方法可能会在获得问题上获得最佳解决方案时可能失败。在这种情况下,进化算法是有效的近最佳解决方案的有用工具。事实上,为了设计和测试进化算法以解决ERM问题的不确定性,研究界开发了一种模拟框架。在本文中,我们提出了具有普通Cauchy分布(Cumdancauchy)的细胞单变量边缘分布算法来解决不确定环境中的ERM问题。 Cumdancauchy对每个特征的正常和Cauchy发行产品的产品进行了单变量估计,并且不仅通过所学习分布的采样,而且产生新的个人,而且还通过来自环形蜂窝结构的个体邻域。在两个案例研究中进行了实验表明:Cumdancauchy与以往的全球健身方面的算法算是竞争力;它的收敛行为是与其他测试算法相比的最佳状态;其运行时间类似于在第一种案例研究中实现的最佳全球性能的算法,并且它是第二个中最快的算法。

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