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knowledge_base:professional:battery [2025/07/07 17:39] – [Dual Battery System] Normal User | knowledge_base:professional:battery [2025/07/08 15:40] (current) – [Modeling from Advanced BMS Work Shop AAC 2025] Normal User | ||
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* SYNDy approach | * SYNDy approach | ||
* SPM -> ESPM | * SPM -> ESPM | ||
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+ | ==== Raw Notes ==== | ||
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+ | * PCA - Principal Component Analysis (PCA) and neural networks are powerful tools in data analysis, and they can be used together in various ways. PCA is often used as a preprocessing step for neural networks, particularly with high-dimensional data, to reduce dimensionality and improve model performance. Additionally, | ||
+ | * Sys ID - surrogate AI model types and how to choose - simple feedforward, | ||
+ | * Model Conversion, Training methods - PyTorch, TensorFlow, MATLA | ||
+ | * RNN vs LSTM vs GRU vs Transformers - https:// | ||
+ | * Virtual sensor - How to identify if the import has correlation to output to reduce the order of the system - perturbation sensitivity analysis. | ||
+ | * Imitation learning | ||
+ | * NLP/QP solving for MPC is expensive | ||
+ | * Neural state space model | ||
+ | * Reinforcement learning (RL) | ||
+ | * Pruning and projection (structure compression), | ||
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