摘要
Batteries are often packed together to meet voltage and capability needs.However,due to variations in raw materials,different ages of equipment,and manual operation,there is inconsistency between batteries,which leads to reduced available capacity,variability of resistance,and premature failure.Therefore,it is crucial to pack similar batteries together.The conventional approach to screening batteries is based on their capacity,voltage and internal resistance,which disregards how batteries perform during manufacturing.In the battery discharge process,real time discharge voltage curves(DVCs)are collected as a set of unlabeled time series,which reflect how the battery voltage changes.However,few studies have focused on DVC based battery screening.In this paper,we provide an effective approach for battery screening.First,we apply interpolation on DVCs and give a method to transform them into slope sequences.Then,we use density-based spatial clustering of applications with noise(DBSCAN)for denoising and treat the remaining data as input to the K-means algorithm for screening.Finally,we provide the experimental results and give our evaluation.It is proved that our method is effective.
基金
supported by the National Key Research and Development Program under Grant 2018YFB1703400
the National Natural Science Foundation of China under Grants U1801263 and U1701262。