The significance of state-of-charge  
  Everoze   Partner Nithin Rajavelu considers the crucial importance of properly   measuring and managing battery state-of-charge (SoC) for the efficiency,   longevity, and safety of battery energy storage system (BESS)  projects,  especially in lithium ferro-phosphate (LFP) devices, which  are widely  used for large-scale storage.
   September 26, 2024 Nithin Rajavelu 
    
  Inaccurate measurements of SoC can prevent battery storage assets from participating in ancillary and balancing service markets.
  Photo: Business Wire
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  SoC   is typically expressed as a percentage of a battery’s total energy   storage capacity. For example, an SoC of 50% means a battery is   half-charged. Accurate and reliable SoC measurement is essential for   optimizing battery performance and maximizing revenue. Inaccurate SoC   measurements can have significant financial implications. For instance,   overestimating SoC can prevent an asset from delivering the full energy   volume traded in energy markets, resulting in imbalance costs.   Similarly, inaccurate SoC could mean an asset cannot provide ancillary   or balancing services when required by a grid operator, leading to   penalties for underperformance.
  Errors of up to 5% can occur in   the SoC measurement of advanced, well-maintained battery systems, and   can be significantly higher in poorly managed systems.
  It is   impossible to directly measure the SoC of a lithium-ion battery.   Instead, various SoC measurement methods estimate the value based on   voltage, current, and temperature measurements.
  SoC measurement  is  influenced by various factors, including type of battery and cell   chemistry; cell voltage, usage patterns, including C-rate (the time   taken to fully charge) and the depth of discharge; ageing; and   environmental conditions such as temperature.
  Classic SoC   measurement methods, such as coulomb counting track the amount of charge   entering and leaving a battery. More advanced techniques, such as   Kalman filtering, combine multiple measurement methods and use   mathematical models to improve accuracy.
  A robust battery   management system (BMS) is essential for monitoring the various   parameters, measuring (or rather, estimating) SoC using the algorithms   employed, and calibrating the resulting SoC as appropriate.
  Unique  challenges
  The  devil as always is in the detail, as LFP batteries pose  unique  challenges for SoC estimation. LFP batteries have a flatter  voltage  curve than other lithium-ion chemistries, meaning the voltage  changes  less significantly with SoC and making it more challenging to  estimate  SoC accurately using voltage-based methods alone. This flat  curve  requires more sophisticated algorithms and additional data  points, such  as temperature and current, to achieve precise SoC  estimation.
  Real-time,  voltage-based SoC measurements which  require look-up tables are prone  to errors as the voltage curve shifts  upward during charging and shifts  downward during discharging,  introducing hysteresis – the phenomenon of  physical effects trailing a  change in status – into the measurements.  This effect introduces an  additional layer of complexity and an SoC  algorithm and models need to  adjust for this hysteresis to improve  accuracy.
  Despite their  robustness, LFP batteries can suffer from  SoC drift over time. Errors  in coulomb counting – including  initial-value errors, noise errors, and  current measurement errors – can  accumulate over time. Regular  calibration of SoC measurements using  periodic full charge and  discharge cycles is necessary to correct such  errors and restore  accuracy.
  While LFP batteries are generally  more tolerant to  temperature variation, extreme temperatures can still  affect SoC  accuracy. Advanced BMS solutions are needed to dynamically  adjust SoC  calculations based on real-time temperature data.
  As  LFP  batteries age, their capacity gradually decreases and internal   resistance increases, affecting SoC measurements. The same voltage or   coulomb count might correspond to different SoC levels as the battery   ages, leading to inaccuracies if SoC estimation algorithms are not   adapted to account for such changes. Continuous monitoring and adaptive   algorithms that adjust for ageing parameters are necessary to maintain   SoC accuracy over a battery’s lifetime.
  SoC issues can also   exacerbate imbalances across battery racks and modules within a string.   In a large BESS, multiple LFP battery modules are connected in series  to  form a rack and multiple racks connected in parallel configurations.  If  SoC is not accurately managed, some modules or racks may become   overcharged while others are undercharged, leading to uneven wear and   reduced overall efficiency.
  Effective management of SoC is not   just a technical necessity – it is the linchpin for unlocking the true   potential of BESS systems. The right BMS transforms these challenges   into opportunities by using cutting-edge adaptive algorithms and   real-time data to adapt and optimize. With robust SoC measurements,   operators can reduce imbalance, maintain system health, and maximize   efficiency, all while safeguarding their investment.
 
  
  About the author: Nithin Rajavelu  has  been advising on renewable energy projects since 2011 and is a  partner  at Everoze. He specializes in technical, commercial, and  strategy advice  for investors and asset owners of utility-scale battery  projects. He  has worked across Europe, North America, and the  Asia-Pacific region,  and previously contributed to project finance and  merger and acquisition  deals as a technical adviser for PV and onshore  and offshore wind  projects.
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