Analyzing Impact of Processing Parameters and Material Properties on Symmetry of Wire-Arc Directed Energy Deposit Beads
Abstract
:1. Introduction
Contributions
- A novel technique to characterize asymmetrical bead geometries.
- To the best of our knowledge, the first comparison between bead geometry asymmetry, processing parameters, and material properties.
- A multi-material analysis of the relationship between material characteristics and the degree of substrate warping caused by wire-arc DED bead deposits.
2. Background
3. Methodology
3.1. Depositing Wire-Arc DED Beads
3.2. Calculating Asymmetry
3.3. Calculating Substrate Curvature
Filtering Experimental Data
3.4. Computing Thermophysical Properties
4. Results and Discussion
4.1. Asymmetry Measurements
4.2. Impact of Asymmetrically Deposited Beads
4.3. Substrate Warping
4.4. Impact of Substrate Warping
4.5. Utilizing Results to Improve Manufacturing
4.6. Improving Experimental Design
5. Conclusions
- The asymmetry of each bead was calculated using a normalized Euclidean distance equation and compared between each other using a correlation matrix, finding that none of the parameters had a particularly strong correlation with asymmetry. Peak curvature, feed rate and width had the strongest correlations with −0.24, −0.21 and −0.21, respectively.
- Correlation matrix between process parameters, physical properties and warping revealed the strongest correlation with feed rate, travel speed, substrate mean heat capacity, substrate means thermal diffusivity, wire mean heat capacity and wire means thermal diffusivity with −0.26, −0.01, 0.60, −0.67, 0.47 and −0.40, respectively.
- Heat capacity and thermal diffusivity were the most relevant features examined.
- As substrate heat capacity decreased, substrate warping increased.
- As substrate thermal conductivity increased, warping decreased.
- As substrate thermal diffusivity increased, substrate warping decreased.
- Thermal conductivity exhibits a dominating role over heat capacity to cause an increase in thermal conductivity and decrease in resultant warping.
- Increased wire feed rates caused decreased warping effects.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameter | Correlation |
---|---|
Feed rate | −0.26 |
Travel speed | −0.01 |
Substrate mean heat capacity | 0.60 |
Substrate mean thermal diffusivity | −0.67 |
Wire mean heat capacity | 0.47 |
Wire mean thermal diffusivity | −0.40 |
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Price, S.; Judd, K.; Gleason, M.; Tsaknopoulos, K.; Cote, D.L.; Neamtu, R. Analyzing Impact of Processing Parameters and Material Properties on Symmetry of Wire-Arc Directed Energy Deposit Beads. Metals 2024, 14, 905. https://doi.org/10.3390/met14080905
Price S, Judd K, Gleason M, Tsaknopoulos K, Cote DL, Neamtu R. Analyzing Impact of Processing Parameters and Material Properties on Symmetry of Wire-Arc Directed Energy Deposit Beads. Metals. 2024; 14(8):905. https://doi.org/10.3390/met14080905
Chicago/Turabian StylePrice, Stephen, Kiran Judd, Matthew Gleason, Kyle Tsaknopoulos, Danielle L. Cote, and Rodica Neamtu. 2024. "Analyzing Impact of Processing Parameters and Material Properties on Symmetry of Wire-Arc Directed Energy Deposit Beads" Metals 14, no. 8: 905. https://doi.org/10.3390/met14080905
APA StylePrice, S., Judd, K., Gleason, M., Tsaknopoulos, K., Cote, D. L., & Neamtu, R. (2024). Analyzing Impact of Processing Parameters and Material Properties on Symmetry of Wire-Arc Directed Energy Deposit Beads. Metals, 14(8), 905. https://doi.org/10.3390/met14080905