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Remaining Useful Life Transfer Prediction and Cycle Life Test Optimization for Different Formula Li-ion Power Batteries Using a Robust Deep Learning Method ?

机译:使用强大的深度学习方法

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Aiming at providing life information of different formula batteries for designers iteratively selecting an appropriate formula, cycle life tests are demanded to long-term perform until battery capacity reaching a pre-set failure threshold. However, the time-consuming test brings a high and unbearable cost to battery enterprise specifically focusing on cost and efficiency. For this practical problem, a prediction-based test optimization method is proposed to estimate the battery remaining useful life to replace its test life, and to shorten the test cycles for saving the test-cost. The prediction accuracy and robustness to the variation on battery formula and test temperature are guaranteed by an instance-based transfer learning method combined with a highly robust deep learning method named stacked denoising autoencoder. An average Euclidean distance-based transferability measurement method selects the most similar historical test data of batteries with other different formulas. It helps to compensate for the lost trend information of the predicted battery caused by cycles reduction and to augment the data for effectively training the prediction model. The actual test data from a battery company verify the accurate prediction and significant cost saving. Nearly more than 30% of the test cycles are optimized for different formula batteries on average.
机译:旨在为设计者提供不同配方电池的生活信息,迭代选择适当的公式,要求循环寿命测试长期执行,直到电池容量达到预设故障阈值。然而,耗时的测试为电池企业专门专注于成本和效率的电池企业带来了高度令人无法忍受的成本。对于这种实际问题,提出了一种预测的测试优化方法来估计电池剩余的使用寿命来取代其测试寿命,并缩短测试周期以节省测试成本。基于实例的传输学习方法,将基于实例的转移学习方法与名为堆叠的DeaNisient AutoEncoder的高度强大的深度学习方法结合的预测精度和测试温度的预测精度和鲁棒性。平均基于欧几里德距离的可转换性测量方法选择具有其他不同公式的电池的最相似的历史测试数据。它有助于补偿由减少循环引起的预测电池的丢失信息,并增加数据以有效地训练预测模型。来自电池公司的实际测试数据验证了准确的预测和显着的节省成本。几乎超过30%的测试循环平均针对不同的配方电池进行了优化。

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