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Convex optimal control for plug and play microgrids

机译:凸型即插即用微电网的最优控制

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In this paper, we present a plug and play (PnP) approach for optimal control of commercial and military microgrid (MG). Operating today's MGs require professional knowledge of the system and calls for the operators to manually configure each of the components, especially in cases if intermittent renewable energy sources are present. As the technological advances allow low-cost microprocessors to be deployed on key components of the MG, we propose a new MG control approach based on the framework of Internet of things (IoT). This paper attempts to address the design of optimal controllers for a PnP MG. The developed theory and software are applicable to commercial and military MGs. To this end, we propose a novel IoT MG scheme, which is in between the traditional centralized and decentralized approaches. While the optimization is centralized, the data storage and process are distributed. The data sheet, together with runtime data are transmitted to the central controller for energy optimization. The contributions of this paper can be summarized as the followings. (1) We developed a charging slot organization (CSO) algorithm to transform the device data sheet information into the form of convex optimization. As a comparison, it is 591 times faster than Particle Swarm Optimization (PSO) in a realistic setup. (2) From the perspective of software systems, we established the XML schema to bridge the gap between PnP MGs and existing optimization solvers. The required information, such as characteristic curves or parameters, are downloaded to the microprocessors on the energy assets at the production phase; Then, the information is automatically aggregated to the MG controller during the run time. (3) Finally, we evaluate the algorithm with realistic weather and device data.
机译:在本文中,我们提出了即插即用(PnP)方法,用于对商业和军事微电网(MG)进行最佳控制。操作当今的MG需要系统的专业知识,并要求操作员手动配置每个组件,尤其是在存在间歇性可再生能源的情况下。由于技术的进步允许将低成本微处理器部署在MG的关键组件上,因此我们提出了一种基于物联网(IoT)框架的MG控制新方法。本文试图解决PnP MG最优控制器的设计问题。所开发的理论和软件适用于商业和军事MG。为此,我们提出了一种新颖的IoT MG方案,该方案介于传统的集中式和分散式方法之间。在优化被集中的同时,数据存储和过程是分布式的。数据表与运行时间数据一起传输到中央控制器,以实现能源优化。本文的贡献可归纳如下。 (1)我们开发了一种充电槽组织(CSO)算法,可将设备数据表信息转换为凸优化形式。相比之下,它比实际设置中的粒子群优化(PSO)快591倍。 (2)从软件系统的角度,我们建立了XML模式以弥合PnP MG与现有优化求解器之间的差距。在生产阶段,将所需的信息(例如特性曲线或参数)下载到有关能源资产的微处理器中;然后,在运行期间,该信息会自动聚合到MG控制器中。 (3)最后,我们根据实际天气和设备数据对算法进行评估。

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