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State of Health Estimation with an Improved Gaussian Process Regression

机译:改进高斯过程回归的健康估计状况

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State of health estimation is crucial for ensuring the safety and reliability of lithium-ion batteries. However, due to various user's habits, the discharging profiles of the lithium-ion battery are totally different in practice, thereby limiting applications of many feature-based methods in real operations. Compared with the discharging process, the charging process is usually executed in a more peaceable and predictable manner. Therefore, two time-related aging features are extracted from the constant current-constant voltage charging process in this work. By introducing the quantum computing theory into the classical intelligent learning model, an improved Gaussian process regression framework, as well as its application to describe relations between extracted features and the battery SOH, is proposed and illustrated in detail. With datasets of lithium-ion batteries by NASA, experiment and comparison results validate the effectiveness, accuracy and superiority of the presented online SOH estimation framework.
机译:健康状况估算对于确保锂离子电池的安全性和可靠性至关重要。然而,由于各种用户的习惯,锂离子电池的放电轮廓在实践中完全不同,从而限制了许多基于特征的方法在实际操作中的应用。与放电过程相比,充电过程通常以更平缓和可预测的方式执行。因此,在该工作中的恒流恒压充电过程中提取了两个时间相关的老化特征。通过将量子计算理论引入古典智能学习模型,提出并详细地说明了一种改进的高斯过程回归框架,以及描述提取特征和电池SOH之间的关系的应用。通过NASA的锂离子电池数据集,实验和比较结果验证了所呈现的在线SOH估计框架的有效性,准确性和优越性。

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