An Enhanced Cascaded Deep Learning Framework for Multi-Cell Voltage Forecasting and State of Charge Estimation in Electric Vehicle Batteries Using LSTM Networks

dc.contributor.authorSupavee Pourbunthidkul
dc.contributor.authorNarawit Pahaisuk
dc.contributor.authorPopphon Laon
dc.contributor.authorNongluck Houngkamhang
dc.contributor.authorPattarapong Phasukkit
dc.date.accessioned2026-05-08T19:18:42Z
dc.date.issued2025-6-17
dc.description.abstractEnhanced Battery Management Systems (BMS) are essential for improving operational efficacy and safety within Electric Vehicles (EVs), especially in tropical climates where traditional systems encounter considerable performance constraints. This research introduces a novel two-tiered deep learning framework that utilizes a two-stage Long Short-Term Memory (LSTM) framework for precise prediction of battery voltage and SoC. The first tier employs LSTM-1 forecasts individual cell voltages across a full-scale 120-cell Lithium Iron Phosphate (LFP) battery pack using multivariate time-series data, including voltage history, vehicle speed, current, temperature, and load metrics, derived from dynamometer testing. Experiments simulate real-world urban driving, with speeds from 6 km/h to 40 km/h and load variations of 0, 10, and 20%. The second tier uses LSTM-2 for SoC estimation, designed to handle temperature-dependent voltage fluctuations in high-temperature environments. This cascade design allows the system to capture complex temporal and inter-cell dependencies, making it especially effective under high-temperature and variable-load environments. Empirical validation demonstrates a 15% improvement in SoC estimation accuracy over traditional methods under real-world driving conditions. This study marks the first deep learning-based BMS optimization validated in tropical climates, setting a new benchmark for EV battery management in similar regions. The framework's performance enhances EV reliability, supporting the growing electric mobility sector.
dc.identifier.doi10.3390/s25123788
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/16650
dc.publisherSensors
dc.subjectAdvanced Battery Technologies Research
dc.subjectElectric Vehicles and Infrastructure
dc.subjectAdvancements in Battery Materials
dc.titleAn Enhanced Cascaded Deep Learning Framework for Multi-Cell Voltage Forecasting and State of Charge Estimation in Electric Vehicle Batteries Using LSTM Networks
dc.typeArticle

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