A Study of Independency on Fuzzy Resolving Sets of Labelling Graphs
Abstract
:1. Introduction
2. Preliminaries
3. Independent Fuzzy Resolving Set (IFRS)
3.1. Theorem: On Fuzzy Graph,
- (ii)
- Consider , then there is a possibility that all the vertices are not adjacent to each other and also an FRS. Hence, .
- (iii)
- If, , then there is an equal chance that not all the vertices are adjacent to each other. We can find an independent set and FRS using a strong arc. Hence, completes the observation. □
3.2. Theorem: If Is a CFG, Then, Does Not Exist
3.3. Theorem: An Union of Two IFRS Need Not Be an IFRS But an Intersection of Two IFRS May Be an IFRS
3.4. Remark
3.5. Theorem: Every Does Not Have to Be a But Every Is
3.6. Discussion
4. Independent Fuzzy Resolving Domination Set (IFRDS)
4.1. Theorem: If Is a CFG, Then, Does Not Exist
4.2. Theorem: An IFRDS Is Always an FRDS But FRDS Need Not Have to Be an IFRDS
4.3. Theorem: Consider as a Star FG and If μ Is Not Constant for All the Nodes, Then, IFRDS Exists and 2
4.4. Theorem: The Union and Intersection of Two IFRDS May Not Be an IFRDS
4.5. Discussion
5. Fuzzy Modified Labelling Resolving Set
5.1. Fuzzy Modified Antimagic Lableling Resolving Set
5.1.1. Theorem
5.1.2. Result
5.1.3. Theorem: The MFRN of G Is 2 If G Is an FMA Labelling Four Cycle
5.2. Modified Fuzzy Graceful Lableling Resolving (FMGLR) Set
5.2.1. Lemma
5.2.2. Theorem: The Modified Fuzzy Graceful Resolving Number of G Is Two If G Is an FMG Labelling
5.2.3. Theorem: If H Is the Aconnected FRS of a Modified Fuzzy Graceful Labelling Graph G, Then H Is an FSRS of G
5.2.4. Theorem: The Resolving Number of a Modified Fuzzy Graceful Labelling of the Wheel Graph Is ‘2’
6. Application
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CFG | Complete fuzzy graph |
FMA | Fuzzy modified antimagic |
FMARS | Fuzzy modified antimagic resolving set |
FMG | Fuzzy modified graceful |
FMLRN | Fuzzy modified labelling resolving number |
FRDN | Fuzzy Resolving Domination number |
FRDS | Fuzzy Resolving Domination Set |
FRN | Fuzzy resolving number |
FRS | Fuzzy resolving set |
FSRML | Fuzzy Super Resolving set of modified labelling |
FSRS | Fuzzy super resolving set |
IFRDN | Independent fuzzy resolving domination number |
IFRDS | Independent Fuzzy Resolving domination Se |
FG | Fuzzy graph |
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Shanmugapriya, R.; Hemalatha, P.K.; Cepova, L.; Struz, J. A Study of Independency on Fuzzy Resolving Sets of Labelling Graphs. Mathematics 2023, 11, 3440. https://doi.org/10.3390/math11163440
Shanmugapriya R, Hemalatha PK, Cepova L, Struz J. A Study of Independency on Fuzzy Resolving Sets of Labelling Graphs. Mathematics. 2023; 11(16):3440. https://doi.org/10.3390/math11163440
Chicago/Turabian StyleShanmugapriya, Ramachandramoorthi, Perichetla Kandaswamy Hemalatha, Lenka Cepova, and Jiri Struz. 2023. "A Study of Independency on Fuzzy Resolving Sets of Labelling Graphs" Mathematics 11, no. 16: 3440. https://doi.org/10.3390/math11163440
APA StyleShanmugapriya, R., Hemalatha, P. K., Cepova, L., & Struz, J. (2023). A Study of Independency on Fuzzy Resolving Sets of Labelling Graphs. Mathematics, 11(16), 3440. https://doi.org/10.3390/math11163440