PINEAPPLE: Physics-Informed Neuro-Evolution Algorithm for Prognostic Parameter Inference in Lithium-Ion Battery Electrodes
Karkulali Pugalenthi, Jian Cheng Wong, Qizheng Yang, Pao-Hsiung Chiu, My Ha Dao, Nagarajan Raghavan, Chinchun Ooi

TL;DR
PINEAPPLE is a physics-informed neural network framework combined with evolutionary algorithms that enables fast, accurate, and interpretable real-time estimation of internal battery states from voltage data, aiding battery management.
Contribution
The paper introduces PINEAPPLE, a novel physics-informed neuro-evolution algorithm that achieves zero-shot prediction and robust parameter inference for lithium-ion batteries, outperforming traditional methods in speed and interpretability.
Findings
Achieves sub-0.1% test error in electrode behavior prediction.
Provides robust cycle-dependent internal parameter inference across multiple batteries.
Offers an order-of-magnitude speed-up over conventional solvers.
Abstract
Accurate, real-time, yet non-destructive estimation of internal states in lithium-ion batteries is critical for predicting degradation, optimizing usage strategies, and extending operational lifespan. Here, we introduce PINEAPPLE (Physics-Informed Neuro-Evolution Algorithm for Prognostic Parameter inference in Lithium-ion battery Electrodes), a novel framework that integrates physics-informed neural networks (PINNs) with an evolutionary search algorithm to enable rapid, scalable, and interpretable parameter inference with potential for application to next-generation batteries. The meta-learned PINN utilizes fundamental physics principles to achieve accurate zero-shot prediction of electrode behavior with test errors below 0.1 while maintaining an order-of-magnitude speed-up over conventional solvers. PINEAPPLE demonstrates robust parameter inference solely from voltage-time…
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Taxonomy
TopicsAdvanced Battery Technologies Research · Machine Learning in Materials Science · Machine Fault Diagnosis Techniques
