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Analysis of BASNs Battery Performance at Different Temperature Conditions Using Artificial Neural Networks (ANN)

机译:使用人工神经网络(ANN)对不同温度条件下的Basns电池性能分析

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In Body Area Sensor Network (BASN), battery power management is an important issue to be addressed to extend the lifetime of the sensor with increased performance. The lifetime of the battery relies on several factors like charging and discharging cycles, Voltage rating, current ratings, and temperature. The temperature variation in the battery leads to increased performance but shortens its lifetime due to the internal chemical reaction that occurs inside the battery. Therefore, it is essential to analyze the temperature variations to enhance the battery lifetime as well as to improve the lifetime of entire sensor network. In this paper, BASNs battery efficiency is analyzed at different temperature profile, charging, and discharging cycles. The voltage is measured from the obtained results. As rise in temperature influence the battery discharging capacity. Thus, maintaining optimal temperature is very essential in BASNs battery to increase the lifetime of battery. Further, Artificial Neural Network (ANN) is developed to examine the experimental results to obtain the optimum battery operating temperature.
机译:在体积传感器网络(Basn)中,电池电源管理是要解决的一个重要问题,以扩展传感器的寿命,随着性能提高。电池的寿命依赖于若干因素,如充电和放电循环,额定电压,电流额定值和温度。电池的温度变化导致性能提高,但由于电池内部发生的内部化学反应,缩短其寿命。因此,必须分析温度变化以增强电池寿命,以及改善整个传感器网络的寿命。在本文中,在不同的温度曲线,充电和放电循环处分析了Basns电池效率。电压从获得的结果测量。随着温度升高影响电池放电容量。因此,保持最佳温度在Basns电池中是非常必需的,以增加电池的寿命。此外,开发了人工神经网络(ANN)以检查实验结果以获得最佳电池工作温度。

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