应用太阳能测量光伏容量及电池优化

Unang Achlison, Iman Saufik Suasana, Dendy Kurniawan
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摘要

本研究采用马尔可夫决策模型(MDP)实现光伏电池退化和优化电池使用,并建立电池系统模型。家庭负荷的电池优化方案使用太阳能的应用来最佳地测量光伏和电池容量。从系统特性和充电设置到MDP和电池退化的分析,描述了本研究中使用的标准的不同品质。尽管为当前系统开发电池容量和光伏发电,但各种系统经过一系列分析以实现意识推理。通过对整体电价和电池中心电价的参数跨度、框架电力消耗电价、电池退化电价、时间、光伏发电机组尺寸、电池尺寸和电池健康状态(SoH)进行分析,确定了最优的容量估算,并分析了混合方案中必要的权衡。然后利用光伏和电池应用来实现该方案的最低费用。本研究为光伏和电池管理家庭负荷接入电网的基本规模决策提供了支持。有见地的是,电池可以更有破坏性地使用,也可以形成更低,以更高的C速度运行。本研究分析了雾计算的实际研究工具和雾计算的存储构成算法,并开发了一个雾计算监控框架,为雾计算存储构成算法提供数据。本研究提出的框架提供了细粒度容器虚拟硬件资源信息和与微服务相关的服务层信息的黑盒监控。框架在Raspberry Pis上的有用性和测试框架的CPU开销。研究结果表明,所提出的框架可以在计算性能相对不足的单片机上使用。此外,由于电池的低系统c率限制以及总费用和需求的有趣行为,还发现电池退化系统对MDP决策的影响很小。在未来的研究中,应考虑测试不同的最大C水平,以确定光伏尺寸和受影响的电池系统。在微电网系统案例研究中,可以验证各种电池优化系统的利弊。最后,收集实时复制的方案以了解操作的执行情况,这是实现MDP用于电池管理和系统开发的下一个阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPLICATION OF SOLAR ENERGY TO MEASURE PHOTOVOLTAIC CAPACITY AND BATTERY OPTIMIZATION
This study uses the Markov Decision Model (MDP) to implement battery degradation and optimize battery use in Photovoltaic and the battery system model created. The battery optimization scheme for home loads uses the application of solar energy to optimally measure photovoltaic and battery capacity against each other. The different qualities of the standard used in this study are described starting from system characteristics and charge settings to an analysis of MDP and battery degeneration. Various systems undergo a list of analyses to implement awareness reasoning although developing battery volume and photovoltaic for the current system. The parametric span of cosmic and battery central tariff, the tariff of power worn taken away the framework, tariff of battery degeneration, time of year, photovoltaic generator size, battery size, and Health Status (SoH) of batteries were carried out to determine the optimal volume estimate and analyze the trade-offs essential in a mix scheme. This is then used to treasure trove the minimum amount of fee of the scheme with photovoltaic and battery application. This study support decision of the essential sizing deliberation for photovoltaic and battery-managed home loads linked to the services grid. Insightful that the battery can be used more destructively, also it can be formed lower and run at a greater C speed. This study analyzes actual fog computing research tools and storage composition algorithms for fog computing and develops a fog computing monitoring framework to provide data for fog computing storage composition algorithms. The framework proposed in this study provides granular container virtual hardware resource information and black box monitoring of service layer information associated with microservices. Framework usefulness on Raspberry Pis and CPU overhead of framework tested. The results of this study present the framework proposed could be used on single-chip microcomputers with relatively inadequate computational performance. In addition, a minimal effect on the battery degeneration system on the MDP decision due to the low system C-rate limit for the battery and interesting behavior of total fee and demand is also found. For future research, testing different maximum C levels should be considered to determine the photovoltaic size and battery system affected. Various battery optimization systems can be proved to check the benefit and disbenefits in the microgrid system case study. Lastly, collecting a scheme for actual-time reproduction to know how nice the operation is performing is the next stage of implementing MDP for battery management and system development.
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