电池健康建模的贝叶斯非参数方法

J. Joseph, F. Doshi-Velez, N. Roy
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引用次数: 6

摘要

许多消费产品的电池不仅是产品成本的重要组成部分,而且通常是第一个故障点。准确预测剩余电池寿命可以通过减少不必要的电池更换来降低成本。不幸的是,电池动力学非常复杂,我们经常缺乏手工构建模型所需的领域知识。在这项工作中,我们采用数据驱动的方法,旨在从训练数据中学习电池死亡时间模型。利用混合权先验的狄利克雷过程,我们学习了电池健康的无限混合模型。我们模型的贝叶斯方面有助于避免过度拟合,而模型的非参数性质允许数据控制模型的大小,防止欠拟合。我们通过使用镍氢电池组的真实数据进行死亡时间预测来证明我们模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian nonparametric approach to modeling battery health
The batteries of many consumer products are both a substantial portion of the product's cost and commonly a first point of failure. Accurately predicting remaining battery life can lower costs by reducing unnecessary battery replacements. Unfortunately, battery dynamics are extremely complex, and we often lack the domain knowledge required to construct a model by hand. In this work, we take a data-driven approach and aim to learn a model of battery time-to-death from training data. Using a Dirichlet process prior over mixture weights, we learn an infinite mixture model for battery health. The Bayesian aspect of our model helps to avoid over-fitting while the nonparametric nature of the model allows the data to control the size of the model, preventing under-fitting. We demonstrate our model's effectiveness by making time-to-death predictions using real data from nickel-metal hydride battery packs.
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