The complex nature of lithium-ion battery degradation has led to many machine learning based approaches to health forecasting being proposed in literature. However, machine learning can be computationally intensive. Linear approaches are faster but have previously been too inflexible for successful prognosis. For both techniques, the choice and quality of the inputs is a limiting factor of performance. Piecewise-linear models, combined with automated feature selection, offer a fast and flexible alternative without being as computationally intensive as machine learning. Here, a piecewise-linear approach to battery health forecasting was compared to a Gaussian process regression tool and found to perform equally well. The input feature selection process demonstrated the benefit of limiting the correlation between inputs. Further trials found that the piecewise-linear approach was robust to changing input size and availability of training data.
翻译:锂离子电池退化的复杂性质导致文献中提议了许多基于机器学习的保健预测方法,然而,机器学习可以进行大量计算;线性方法较快,但以前过于灵活,无法成功地预测;对于这两种技术,投入的选择和质量是一个限制性性能的因素;小线性模型,加上自动地物选择,提供了一种快速和灵活的替代方法,而没有像机器学习那样在计算上密集。在这里,对电池健康预测采用的小线性方法,与高斯进程回归工具相比,效果同样好。投入特征选择过程显示了限制投入之间相互关系的好处。进一步试验发现,小线性方法对于改变投入规模和提供培训数据来说是有力的。