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Solar Irradiance Forecasting in Remote Microgrids Using Markov Switching Model

机译:基于马尔可夫切换模型的远程微电网太阳辐照度预测

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Summary form only given. Photovoltaic (PV) systems integration is increasingly being used to reduce fuel consumption in diesel-based remote microgrids. However, uncertainty and low correlation of PV power availability with load reduces the benefits of PV integration. These challenges can be handled by introducing reserve. However, this leads to increased operational cost. Solar irradiance forecasting helps to reduce reserve requirement, thereby improving the utilization of PV energy. This paper presents a new solar irradiance forecasting method for remote microgrids based on the Markov switching model. This method uses locally available data to predict one-day-ahead solar irradiance for scheduling energy resources in remote microgrids. The model considers past solar irradiance data, clear sky irradiance, and Fourier basis expansions to create linear models for three regimes or states: high, medium, and low energy regimes for days corresponding to sunny, mildly cloudy, and extremely cloudy days, respectively. The case study for Brookings, SD, USA, discussed in this paper, resulted in an average mean absolute percentage error of 31.8% for five years, from 2001 to 2005, with higher errors during summer months than during winter months.
机译:仅提供摘要表格。越来越多地使用光伏(PV)系统集成来减少基于柴油的远程微电网的燃料消耗。但是,不确定性以及光伏功率可用性与负载之间的相关性较低,降低了光伏集成的优势。这些挑战可以通过引入储备来解决。但是,这导致运营成本增加。太阳辐照度预测有助于减少储备需求,从而提高光伏能源的利用率。本文提出了一种基于马尔可夫切换模型的远程微电网太阳辐照度预测新方法。该方法使用本地可用数据来预测未来一天的太阳辐照度,以调度远程微电网中的能源。该模型考虑了过去的太阳辐照度数据,晴朗的天空辐照度和傅立叶基础展开,以创建三种状态或状态的线性模型:高,中和低能量状态,分别对应于晴天,中度多云和极多云的日子。本文讨论了美国SD布鲁金斯的案例研究,结果显示,从2001年到2005年,五年的平均平均绝对百分比误差为31.8%,夏季月份的误差高于冬季月份的误差。

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