Evaluating Degradation Coefficients from Existing System Models
Abstract
:1. Introduction
Entropy Generation, a Measure of System Degradation
2. Existing System Characterization Models and Material Constants
2.1. Grease
Operational Mechanism | Transformation Measure | System Model | Notes |
---|---|---|---|
Mechanical | Shear stress (Yield stress ) | Power-law: | Earliest widely adopted model, limited to a narrow range of medium shear rates [32]. K is consistency factor and n is flow index. |
Herschel-Bulkley: | Currently the most widely used. Good correlation with data at shear rates between 0.001 and 1000 s−1 [33,34]. n ≈ 0.5 for greases. | ||
Sisko [35]: | Typically applied to high shear rates (>1000 s−1). | ||
Maxwell: | Widely used to describe viscoelasticity using a spring in series with a viscous damper. Gives an accurate time-based shear stress response at constant shear but does not accurately describe response to constant shear stress [36]. | ||
Gecim and Winer [37]: | Adds a nonlinearity to the Newtonian component in the Maxwell model using the limiting shear stress concept [37]. | ||
Shear strain | Kevin-Voigt: | Connects the spring and damper in parallel and accounts for the constant shear stress time-dependent strain response. Does not accurately predict relaxation [36]. | |
Viscosity | Mewis [38]: | Gives rate of change of viscosity at constant shear rate. Constants ki are empirically determined. | |
Cross [39]: | Gives the rate of bond breakdown in grease in terms of number of linkages N. The number of links per chain N is further related to viscosity. | ||
Thermal | Shear stress | Uses the Arrhenius formulation to describe grease response to temperature changes [36]. is activation energy, R is universal gas constant. | |
Yield stress | Lugt [32]: | Extends the Arrhenius formulation to yield stress . Constant b is empirical. | |
Viscosity | Lugt [32]: | Arrhenius formulation using viscosity. | |
Chemical | Shear stress | Osara [2]: | Based on Rhee’s [40] % degradation = e−kt |
Viscosity | Osara [2]: | Extends Rhee’s [40] % degradation = e−kt to viscosity. | |
Mass | Lugt [41]: | Describes oxidation in grease via mass change. Here, k is rate constant. |
2.2. Electrochemical Energy Storage
Transformation Measure | System Model | Notes |
---|---|---|
Voltage | Ohm’s law: voltage as a function of current and resistance. | |
Charge content | Charge levels via Coulomb counting. | |
Concentration change | Evaluates active species concentration change via Faraday’s electrolysis laws, where is current efficiency, t is time, n is number of active species and F is Faraday’s constant. | |
Internal resistance | A measure of the battery’s degradation via its resistance to charge flow, where is open-circuit voltage. | |
Fractional conversion | Fraction of active species converted during electrochemical reaction, where m is amount of reactant (mass or number of moles). | |
Mass transport coefficient | Measures flow/consumption of active species in electrochemical systems with significant mass transfer/diffusion, where is limiting current, A is electrode area and c is active species concentration. |
2.3. General Fatigue
Transformation Measure | System Model | Notes |
---|---|---|
Stress/Strength | Bending Stress: Shear Stress: Fatigue Strength (HCF): | Based on Hookean mechanics, which assumes elastic response to loading. The fatigue strength (N) equations are obtained from load-to-failure tests on standard specimens. Special factors are included to account for materials, surface finishes and other physical aspects of the specimen. Typically used in high-cycle fatigue analysis. Here, y is distance, e is endurance strength, Ne is endurance cycle number, and b and are empirically determined parameters. |
Strain | Coffin-Manson equation: empirically determined plastic strain response to loading, in addition to elastic strain. Typically used for low-cycle fatigue, where b and c are evaluated from empirical load-to-failure data. Nf is number of cycles to failure. | |
CDM Damage | Based on Continuum Damage Mechanics, the damage variable D predicts a logarithmic load-to-failure response [45]. | |
Fracture rate | Paris law for predicting crack growth, where a is crack length, is stress intensity range per cycle, C and m are empirical material constants. |
3. The Degradation-Entropy Generation (DEG) Theorem
3.1. DEG Methodology Procedure
3.2. DEG Coefficients
4. A Brief Review of Existing DEG Models
4.1. Frictional Wear
4.2. Grease
4.3. Electrochemical Energy Storage Systems
4.4. General Fatigue
4.5. Combined Adhesive and Abrasive Wear
5. Degradation Coefficients from a Combination of the DEG Models and Other Existing Multi-Physics Models
5.1. Grease
5.2. Electrochemical Energy Storage Systems
5.3. General Fatigue
5.4. High-Rate Processes and Multiple Simultaneous Dissipation Mechanisms
5.5. Unsteady Interactions
6. Summary and Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Nomenclature | Name |
B | Degradatioin (or DEG) Coefficient |
q | Charge content or capacity |
F | Force |
S | Entropy or entropy content |
S’ | Entropy generation or production |
t | Time |
T | Temperature |
E | Voltage |
V | Volume |
w | Degradation measure |
N | Number of cycles or Normal force |
Symbols | |
σ | Stress or strength |
ε | Strain |
τ | Shear stress or shear strength |
γ | Shear strain |
η | Viscosity |
μ | Chemical potential |
ρ | Density |
Subscripts & Acronyms | |
0 | Initial |
f | Failure or Final |
VT | Electro-Chemico-Thermal |
MST, μΤ | MicroStructuroThermal |
min | Minimum |
rev | Reversible |
phen | Phenomenological |
DEG | Degradation-Entropy Generation |
N | Number of cycles |
W | Work or Load |
Appendix A. Entropy Generation in Active Systems
Appendix A.1. The Single-Variable System and Minimum Entropy Generation
Mechanism | Minimum Entropy Generation |
---|---|
Solid Interfacial Sliding—Friction | |
Battery Cycling | |
Heat Transfer | |
Lubricant Shearing | |
Diffusion | |
Abrasion/Cutting | |
Reactions (Chemical, Nuclear, etc.) | |
Stress/Fatigue Loading | |
Fracture |
Appendix A.2. The Thermodynamic Simple System and Phenomenological Entropy Generation
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Mechanism | Measure | System Model | DEG Model | Degradation Coefficient |
---|---|---|---|---|
Mechanical | Shear stress | Maxwell: | ||
Shear strain | Kevin-Voigt: | |||
Viscosity | Mewis: Cross: | |||
Yield stress | H-B: | |||
Consistency | ||||
Thixotropic Index | ||||
Thermal | Yield stress | |||
Viscosity | ||||
Chemical | Shear stress | |||
Viscosity | ||||
Mass |
Measure | System Model | DEG Model | Degradation Coefficient |
---|---|---|---|
Voltage | |||
Charge content | |||
Concentration change | |||
Internal resistance | |||
Fractional conversion | |||
Mass transport coefficient |
Measure | System Model | DEG Model | Degradation Coefficient |
---|---|---|---|
Stress/Strength | |||
Strain | |||
CDM Damage | |||
Fracture rate |
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Osara, J.A.; Bryant, M.D. Evaluating Degradation Coefficients from Existing System Models. Appl. Mech. 2021, 2, 159-173. https://doi.org/10.3390/applmech2010010
Osara JA, Bryant MD. Evaluating Degradation Coefficients from Existing System Models. Applied Mechanics. 2021; 2(1):159-173. https://doi.org/10.3390/applmech2010010
Chicago/Turabian StyleOsara, Jude A., and Michael D. Bryant. 2021. "Evaluating Degradation Coefficients from Existing System Models" Applied Mechanics 2, no. 1: 159-173. https://doi.org/10.3390/applmech2010010
APA StyleOsara, J. A., & Bryant, M. D. (2021). Evaluating Degradation Coefficients from Existing System Models. Applied Mechanics, 2(1), 159-173. https://doi.org/10.3390/applmech2010010