通过大脑情感学习算法进行电源管理

M. Samadi, A. Afzali-Kusha, C. Lucas
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引用次数: 13

摘要

如今,从经济和环境的角度来看,拥有最高的能源效率本身就是可取的。动态电源管理是一种系统级解决方案,通过将系统中未使用的部分推迟并在有效的时间内重新启动来减少消耗的能量。引入情绪学习算法来展示情绪作为众所周知的刺激物在人类快速且几乎令人满意的决策中的作用。情绪学习的显著特性、低计算复杂度和快速训练,以及它在多目标问题中的简单性,使其成为实时控制和决策系统中一个强大的方法,而基于梯度的方法和进化算法由于其高计算复杂度而难以使用。在现实世界现象的预测问题中,情感方法已被成功地用于获得多目标。首先介绍了动态电源管理的方法,然后介绍了一种基于BELBIC的动态电源管理方法。仿真结果表明,该方法在各种系统中都具有较高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power management by brain emotional learning algorithm
Nowadays having the most energy efficiency is desirable in its own right from both economical and environmental points of view. Dynamic power management is a system level solution for reducing the consumed energy with putting off unused parts of the system and putting them on in an efficient time. The Emotional Learning Algorithm has been introduced to show the effect of emotions as well known stimuli in the quick and almost satisfying decision making in human. The remarkable properties of emotional learning, low computational complexity and fast training, and its simplicity in multi objective problems has made it a powerful methodology in real time control and decision systems, where the gradient based methods and evolutionary algorithms are hard to be used due to their high computational complexity. Recently the emotional approach has been successfully used to obtain multiple objectives in prediction problems of real world phenomena. At first we introduce methods of dynamic power management and then a new method based on BELBIC would be explained. The simulation results show that this method has a high efficiency in various systems.
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