轻型汽车电池剩余寿命预测

Nian-Ze Hu, You-Xing Zeng, Bo-An Lin, Ruo-Wei Wu, You-Shin Lin, Kai-Hsun Hsu, Shang-Wei Liu, Tun-Chuan Chang, Chun-Min Tsai
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引用次数: 0

摘要

一般来说,高端电池设备通过芯片来估算剩余电池寿命,但这类设备缺乏为便携式设备提供寿命信息。因此,我们开发了一种基于ACS-712芯片模块的算法来实现这一目的。ACS-712模块采用5v供电,测量电流范围为±20安培,对应的每安培输出为100毫伏。在本研究中,采用Arduino控制的小型车辆采集ACS-712的信号。通过分析生成的数据,得出了剩余功率与起动电流曲线之间的关系。经过实验,通过检测启动过程中瞬时电流的变化来预测剩余功率,准确度达到90%以上。此外,我们在实验中加入了不同的权值作为控制变量,并测试了不同权值的剩余功率。它也达到了85%以上的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Remaining Battery Life for Light Vehicles
Generally, high-end battery devices estimate the remaining battery life through the chip, but such devices lack in providing life information for portable devices. Therefore, we develop an algorithm with an ACS-712 chip module to achieve this purpose. The ACS-712 module is powered by 5 V and measures the current within ±20 amps, and the corresponding output per amp is 100 millivolts. In this study, a small vehicle controlled by Arduino is adopted to collect the signals from ACS-712. The relationship between the remaining power and the starting current curve is discovered by analyzing the generated data. After experiments, the remaining power can be predicted by detecting the instantaneous current change during startup, and the accuracy reaches higher than 90%. In addition, we add different weights as control variables in the experiment and test the remaining power of various weights. It also achieves an accuracy of more than 85%.
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