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A dynamic ensemble for estimating state-of-charge of interchangeable robot batteries

机译:用于估算可互换机器人电池的充电状态的动态集合

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This paper presents a unique machine learning model that estimates battery state-of-charge (SOC) for robotic applications. Unlike earlier approaches, this study investigates the problem of estimating SOC for several interchangeable batteries that can be used to power a robot. Robots commonly have a reserve pool of batteries available to be swapped for the purpose of extending operational time, but swapping batteries complicates the SOC estimation problem due to parameter variation. The proposed state-based ensemble is novel in that it exceeds the accuracy of traditional ensemble methods by dynamically changing estimation algorithms and predictors based on a preliminary (i.e., rough) state estimate of the battery. Experimental results show statistically significant improvement, on average, of 4 percent for our proposed state-based ensemble.
机译:本文介绍了一个独特的机器学习模型,估计电池充电状态(SOC)用于机器人应用。与早期的方法不同,本研究调查了可用于为机器人供电的多个可互换电池估算SOC的问题。机器人通常具有储备池可用于延长运行时间的目的,但随机电池由于参数变化而使SOC估计问题复杂化。所提出的国家合奏是新颖的,因为它通过基于电池的初步(粗略)状态估计来通过动态地改变估计算法和预测器来超过传统集合方法的准确性。实验结果表明我们所提出的基于国家合奏的统计上显着的改善为4%。

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