Abstract

Herein, a useful model is developed for electrical conductivity of polymer nanocomposites integrating carbon black (CB) named as PCBs. The developed Kovacs model provides a clearer understanding of how key parameters such as interphase thickness (t), tunnel size (λ), network fraction and tunneling resistance (R<sub>t</sub>) affect the conductivity of PCBs. Empirical results of many samples corroborate the precision and logical consistency of the refined model. The electrical conductivity of PCBs exhibits an inverse relationship with the radius of CB nanoparticles (R), percolation threshold, tunneling resistance and tunneling distance, underscoring the need to minimize these parameters to enhance the conductivity. Conversely, increasing some factors such as CB volume portion (φ<sub>f</sub>), interphase thickness, and network fraction positively impacts the conductivity of PCBs. The highest amount of the smallest CB nanoparticles can provide the highest conductivity in PCBs. R = 5 nm and φ<sub>f</sub> = 0.08 improve the PCB conductivity to 5 S/m. Nevertheless, R = 30 nm and φ<sub>f</sub> = 0.01 cause an insulative sample. Also, the densest interphase (t = 20 nm) and the narrowest tunnels (λ = 1 nm) produce the superlative conductivity of 1.9 S/m at φ<sub>f</sub> = 0.05, while t < 3 nm cannot enhance the PCB conductivity.

Keywords

Carbon black nanoparticlesElectrical conductivityInterphase networkPolymer compositeTunneling resistance

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Publication Info

Year
2025
Type
article
Volume
15
Issue
1
Pages
43554-43554
Citations
0
Access
Closed

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Cite This

Fereshteh Abdollahi, Mohsen Mohammadi, Yasser Zare et al. (2025). Unraveling of electrical conductivity for nanocomposites containing carbon black: a new insight into tunneling resistance. Scientific Reports , 15 (1) , 43554-43554. https://doi.org/10.1038/s41598-025-27527-3

Identifiers

DOI
10.1038/s41598-025-27527-3
PMID
41372277
PMCID
PMC12695930

Data Quality

Data completeness: 81%