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Control strategy for battery-supported photovoltaic systems aimed at peak load reduction

机译:旨在降低峰值负载的电池供电光伏系统的控制策略

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The use of photovoltaic (PV) technologies is one of the key means for achieving the balance between operational power demand and generation in net Zero Energy Buildings (nZEBs). However, direct use of PV power on-site is limited due to wide variability and uncertainty of PV output, the temporal mismatch between PV generation and load and other factors. Consequently, in addition to low self-consumption rates, the problem of peak grid load and peak PV feed into the grid persists. Batteries that are coupled to PV units may partially offer the solution to these problems, if operated under an intelligent control strategy. In this paper we proposed a forecast-based control strategy for battery-to-grid interaction aimed at enhancing selfconsumption and at reducing peak load. Python programming environment was used for data processing and algorithm development. Exemplification was made based on the reported hourly energy demand in one office building of 3000 m2 heated floor area located in Trondheim, Norway. Forecasting of electricity load profiles was based on the seasonal autoregressive integral moving average (SARIMA) model. For PV power forecasting, the algorithm communicated with external service – Solcast API. The search method for optimal scheduling of operational time and the extent of charging/discharging was proposed. The results showed that as opposed to conventional battery use, this control strategy allowed to achieve significantly more consistent grid interaction. It offered highly accurate battery scheduling on a day-ahead basis while utilising minimum historical data and computational resources. The algorithm may be beneficial for end-users and grid operators, and thus, it has a high potential for future integration into building energy supply systems.
机译:光伏(PV)技术的使用是在净零能耗建筑物(nZEB)中实现运营电力需求与发电量之间平衡的关键手段之一。但是,由于光伏输出的广泛可变性和不确定性,光伏发电与负载之间的时间不匹配以及其他因素,直接在现场使用光伏发电受到了限制。因此,除了自耗率低之外,峰值电网负载和峰值PV馈入电网的问题仍然存在。如果在智能控制策略下操作,则与PV单元耦合的电池可能会部分解决这些问题。在本文中,我们提出了一种基于预测的电池到电网交互控制策略,旨在增强自耗并降低峰值负载。 Python编程环境用于数据处理和算法开发。基于所报告的挪威特隆赫姆一栋3000平方米加热地板的办公楼中的每小时能源需求进行了示例。电力负荷曲线的预测基于季节性自回归积分移动平均线(SARIMA)模型。对于光伏功率预测,该算法与外部服务通信-Solcast API。提出了一种优化调度时间和充放电程度的搜索方法。结果表明,与常规电池使用相反,这种控制策略可以实现更加一致的电网交互作用。它可以提前一天提供高度精确的电池调度,同时利用最少的历史数据和计算资源。该算法可能对最终用户和电网运营商有益,因此,它有很大的潜力将来集成到建筑能源供应系统中。

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