Impact of using a predictive neural network of multi-term zenith angle function on energy management of solar-harvesting sensor nodes

Q2 Engineering
Murad Al-Omary, Rafat Aljarrah, Aiman Albatayneh, Dua’a Alshabi, Khaled Alzaareer
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Abstract

Abstract Using the Neural Networks to predict solar harvestable energy would contribute to prolonging the duration of the effective operation and thus less consumption in solar-harvesting sensor nodes. The NNs with higher prediction accuracy have the longest effective operation. Till now, the NNs that use the zenith angle function as input have been utilized with only two terms. This paper shows the advantages of using a multi-term zenith angle function on the energy management in the nodes. To this end, this paper considers two, three, and four terms for the function of the zenith angle. The results showed that the case of four terms has the lowest prediction mistakes on average (0.83%) compared to (2.13% and 1.75%) for the cases of two and three terms, respectively. This is followed by a reduction in energy consumption in favor of four terms case. For one month simulation period with hourly prediction, the sensor node worked at the higher consumption mode (M2) in the case of four terms 4 hours less than three terms and 7 hours less than two terms case. Thus, increasing the number of terms in the zenith angle function leads to higher accuracy and less energy consumption.
多项天顶角函数预测神经网络对太阳能采集传感器节点能量管理的影响
摘要利用神经网络预测太阳能可收集能量有助于延长太阳能收集传感器节点的有效运行时间,从而减少太阳能收集传感器节点的消耗。预测精度越高的神经网络有效运行时间越长。到目前为止,使用天顶角函数作为输入的神经网络只使用了两项。本文给出了利用多项天顶角函数进行节点能量管理的优点。为此,本文考虑了天顶角函数的二项、三项和四项。结果表明,4项情况的平均预测错误率(0.83%)比2项和3项情况的平均预测错误率(2.13%和1.75%)最低。其次是减少能源消耗,有利于四项情况。在一个月的模拟周期中,每小时预测,传感器节点在4个条件下工作在更高的消耗模式(M2)下,4小时少于3个条件,7小时少于2个条件。因此,增加天顶角函数中的项数可以提高精度和降低能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Harvesting and Systems
Energy Harvesting and Systems Energy-Energy Engineering and Power Technology
CiteScore
2.00
自引率
0.00%
发文量
31
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