Thermal Diffusion Probability Evaluation of Lithium-Ion Battery Modules for Energy Storage Systems Based on Fuzzy Reasoning

Lithium-ion battery modules (LIBMs) are critical components in modern energy storage systems. However, thermal runaway incidents pose significant risks to system reliability. Existing qualitative models struggle to quantify thermal diffusion probability under dynamic operating conditions. This study proposes a fuzzy reasoning-based method to evaluate thermal diffusion probability in LIBMs, integrating COMSOL simulations, fuzzy logic, and an improved optimization algorithm.


1. Modeling Thermal Diffusion in Lithium-Ion Battery Modules

1.1 Electrochemical-Thermal Coupling Model

A multi-physics model was developed in COMSOL to simulate LIBM behavior under thermal runaway. The model integrates:

  • Electrochemical Submodel: Governed by the P2D (pseudo-two-dimensional) equations:∇⋅(σeff​∇ϕs​)=jLi​,∇⋅(Deff​∇c)=∂tc​where σeff​ is effective conductivity, ϕs​ is solid-phase potential, Deff​ is diffusion coefficient, and c is lithium concentration.
  • Thermal Submodel: Energy conservation equation:ρCp​∂tT​=∇⋅(kT)+Qtotal​where Qtotal​ includes heat from internal short circuits (Qisc​) and side reactions (Qside​).
  • Internal Short-Circuit Model: Joule heating during thermal runaway:Qisc​=Ishort2​Rcell​,Ishort​=Rshort​Vocv​−Vmin​​

1.2 Side Reaction Kinetics

Four key exothermic reactions were modeled (SEI decomposition, anode/electrolyte reactions, etc.):dtdci​​=Ai​exp(−RTEi​​)ciγi​​(1−ci​)δi

Thermodynamic parameters are summarized in Table 1.

Table 1: Thermodynamic Parameters of Side Reactions

ReactionAi​ (s⁻¹)Ei​ (kJ/mol)ΔHi​ (J/g)
SEI decomposition1.67×10¹⁵135257
Anode-electrolyte2.5×10¹⁹1451718
Electrolyte oxidation5.6×10¹⁴1201322
Cathode decomposition1.5×10¹⁵160427

2. Factors Influencing Thermal Diffusion in LIBMs

2.1 Module Arrangement

Three configurations (Fig. 1a–c) were tested to analyze contact area effects:

Table 2: Thermal Runaway Propagation Under Different Arrangements

ConfigurationTmax​ (°C)Propagation Time (s)
(a) Compact944–9921199–1672
(b) Spaced952–9991247–1720
(c) Offset947–9931573–2017

Reduced contact area in Configuration (c) delayed thermal runaway by 28% compared to (a).

2.2 Heating Methods

Constant, stepwise, and linear heating were applied to trigger thermal runaway:

Table 3: Thermal Response Under Heating Methods

Heating MethodTmax​ (°C)Propagation Time (s)
Constant (190°C)944–9921199–1672
Stepwise (100→190°C)916–10092654–3079
Linear (0→190°C)886–10163141–3546

Slower heating increased temperature gradients between adjacent cells, accelerating heat transfer.

2.3 State of Charge (SOC)

Higher SOC accelerated thermal runaway due to greater active material availability:

Table 4: SOC Impact on Thermal Runaway

SOC (%)Tmax​ (°C)Propagation Time (s)
100944–9921199–1672
75861–9201234–1785
60808–8641279–1874

A 40% SOC reduction delayed propagation by 32%.


3. Fuzzy Reasoning System for Thermal Diffusion Probability

3.1 Input-Output Variables

A Mamdani-type fuzzy system was designed with:

  • Inputs:
    • Cell temperature (Tself​)
    • Inter-cell distance (DN​)
    • Ambient temperature (Tenv​)
  • Output: Thermal diffusion probability (Ptr​)

Membership functions (MFs) for inputs and output are shown in Fig. 2. Triangular MFs were chosen for computational efficiency.

3.2 Fuzzy Rule Base

Thirty-six rules were formulated based on experimental insights. Examples include:

  • Rule 1: IF Tself​ is High AND DN​ is Small THEN Ptr​ is Very High.
  • Rule 2: IF Tenv​ is Medium AND Tself​ is Medium THEN Ptr​ is Moderate.

Table 5: Fuzzy Rule Matrix (Simplified)

Tenv​Tself​DNPtr​
LowLowLargeVery Low
HighHighSmallVery High

3.3 Optimization of Membership Functions

An Improved Dung Beetle Optimizer (IDBO) was developed to refine MF parameters:

  • Dynamic Spiral Search: Enhanced global exploration:β=ezrcos(2πr),z=emcos(πl)
  • Adaptive Weighting: Balanced exploitation/exploitation:φ1​=1−l3,φ2​=l3

Table 6: Optimized MF Parameters

Parameterμ1​μ2​μ3​μ4​μ5​μ6​μ7​
Value0.660.342.720.870.290.620.77

4. Validation and Comparative Analysis

4.1 Accuracy Metrics

The Pearson Correlation Coefficient (PCC) between Tself​ and Ptr​ improved from 0.893 (unoptimized) to 0.978 after IDBO optimization.

Table 7: Algorithm Performance Comparison

AlgorithmPCCConvergence Iterations
PSO0.93745
SSA0.93138
DBO0.90228
IDBO0.97822

4.2 Case Study: Random Heating Scenario

Under Tenv​=145∘C and offset arrangement, the model predicted:

  • Cell 1Ptr​=0.984 (Actual Tmax​=945∘C)
  • Cells 2–4Ptr​<0.45 (No thermal runaway observed)

5. Conclusion

This work presents a fuzzy reasoning-based framework for evaluating thermal diffusion probability in lithium-ion battery modules. Key findings include:

  • Module arrangement and heating methods significantly influence heat propagation rates.
  • Higher SOC accelerates thermal runaway by increasing reactive material availability.
  • The IDBO-optimized fuzzy system achieved a 9.5% improvement in PCC over conventional methods.

This methodology enables real-time risk assessment for lithium-ion battery energy storage systems, enhancing operational safety and reliability. Future work will integrat

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