Solar radiation prediction and energy allocation for energy harvesting base stations

ICC(2014)

引用 27|浏览8
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摘要
In this paper, we study how to use the solar radiation model to predict energy arrivals and to allocate energy resource at an energy harvesting base station (BS). First, some primary knowledge about solar radiation is reviewed and summarized. We present two solar energy models for cloudless days and cloudy days, respectively. Then artificial neural network (ANN) is used to predict solar energy arrivals in a short period, which has an improved performance compared with the previous linear model. In the end, the allocation of received energy is considered, and one optimal offline algorithm and four heuristics online algorithms are proposed. We evaluate the performance of the algorithms using Denver's solar radiation data in recent 27 years from National Renewable Energy Laboratory (NERL). Simulation results show our prediction and optimization algorithm achieves nearly optimal performance.
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关键词
nerl,linear model,solar energy arrival prediction,solar power,national renewable energy laboratory,energy harvesting,bs,power engineering computing,energy harvesting base station,ann,solar radiation model,artificial neural network,heuristics online algorithm,optimal offline algorithm,denver solar radiation data,solar radiation,neural nets,energy resource allocation
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