Parallel DC/DC converters with multi-agent based multi-objective optimization for consumer electronics

P. Bartal, J. Hamar, I. Nagy
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引用次数: 7

Abstract

Consumer electronic devices have become a part of our everyday lives. A statistically non-negligible percentage of electric loads on the power network is represented by these devices. Consumer electronics notoriously consume DC power, at several voltage levels ranging anywhere from 1.8 to 24 V, in the absence of unified standards. As a consequence, each load is served from the AC network through several conversion stages, which is not the most efficient solution. The problem of efficiency exists not only on a global level, but locally, too. On a local level efficiency can be improved by connecting several converters in parallel and setting their operating point as close to the maximum efficiency point as possible. This can be implemented by means of multi-agent based load sharing algorithms [1]. These intelligent agents (IA) are negotiating at the load distribution between converters and aim at achieving maximum overall efficiency. Other optima can also be targeted at the same time. The paper presents a model based on DC/DC buck converters and its experimental verification.
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基于多智能体的消费类电子产品并联DC/DC变换器多目标优化
消费类电子设备已经成为我们日常生活的一部分。在统计上不可忽略的电力负荷的百分比是由这些设备表示的。众所周知,在没有统一标准的情况下,消费电子产品在1.8到24 V的几个电压水平上消耗直流电源。因此,每个负载从交流网络通过几个转换阶段提供服务,这不是最有效的解决方案。效率问题不仅存在于全球层面,也存在于地方层面。在局部水平上,可以通过并联几个变流器并将其工作点设置在尽可能接近最高效率点的位置来提高效率。这可以通过基于多智能体的负载共享算法来实现[1]。这些智能代理(IA)正在协商转换器之间的负载分配,旨在实现最大的整体效率。其他最优点也可以同时作为目标。本文提出了一种基于DC/DC降压变换器的模型并进行了实验验证。
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