Estimating Harvestable Solar Energy from Atmospheric Pressure Using Support Vector Regression

P. Krömer, P. Musílek, J. Rodway, M. Reformat, Michal Prauzek
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引用次数: 3

Abstract

Energy neutrality is the desired mode of operation of many sensor networks used for environmental monitoring. Intelligent energy harvesting networks, composed of nodes equipped with solar panels and other types of power-scavenging devices, can plan and manage their operations according to short and long-term predictions of ambient energy availability. This paper introduces a novel method for next-day solar energy prediction based on atmospheric pressure and support vector regression. A location-specific support vector regression model is in this approach created using a collection of geospatially correlated atmospheric pressure and solar intensity measurements. The trained model is used to estimate next day solar energy availability from a time series of recent atmospheric pressure values and their differences. The ability of the proposed system to estimate daily solar energy is compared to a recent evolutionary-fuzzy prediction scheme and traditional analytical estimates.
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利用支持向量回归估计大气压力下可收获的太阳能
能量中性是许多用于环境监测的传感器网络的理想运行模式。智能能量收集网络由配备太阳能电池板和其他类型的能量收集设备的节点组成,可以根据对环境能源可用性的短期和长期预测来规划和管理其运行。提出了一种基于大气压力和支持向量回归的次日太阳能量预测新方法。在这种方法中,使用地理空间相关的大气压力和太阳强度测量值的集合创建了特定位置的支持向量回归模型。经过训练的模型用于从最近的大气压力值及其差异的时间序列中估计第二天的太阳能可用性。将该系统估计日太阳能的能力与最近的进化模糊预测方案和传统的分析估计进行了比较。
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