Modelling of geometry for directed energy deposition via machine learning

Predicting the geometry of bead in multi-track and multi-layer Directed Energy Deposition (DED) presents a challenge due to variations in process parameters, resulting in changes in geometry from one layer or track to another. To address this issue, a Long Short-Term Memory (LSTM) model is applied t...

全面介紹

Saved in:
書目詳細資料
主要作者: Hong, Weidong
其他作者: Li Hua
格式: Final Year Project
語言:English
出版: Nanyang Technological University 2023
主題:
在線閱讀:https://hdl.handle.net/10356/167105
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
機構: Nanyang Technological University
語言: English
實物特徵
總結:Predicting the geometry of bead in multi-track and multi-layer Directed Energy Deposition (DED) presents a challenge due to variations in process parameters, resulting in changes in geometry from one layer or track to another. To address this issue, a Long Short-Term Memory (LSTM) model is applied to model and predict the bead geometry in multi-track and multi-layer deposition, specifically height and waviness by predicting the 2nd order polynomial coefficients. The LSTM model is designed to capture long-term dependencies in the dataset containing process parameters and corresponding bead geometries. The process parameters used in this study include laser power, scanning speed, powder mass flow rate, hatch spacing value and z-incremental value. The applied model is trained, validated and tested using process parameters and the corresponding coefficients of unique sample name and layer number combination. The LSTM model achieved a considerable good 2 score of 0.81 for the coefficients, and 0.77 for height, but a poor score of -0.79 for waviness. The model’s performance in predicting the detailed waviness variations between the curves requires further improvement. Despite the limitations in waviness prediction, the model demonstrated its usefulness in capturing general trend of bead geometry changes under varying process parameters, particularly laser power and powder mass flow rate. To further assess the model, standard deviation of the curve heights are also analysed through which it revealed that adjusting the aforementioned parameters has the potential to decrease the variability in the curves height. This study highlights the potential of using a many to many LSTM model in bead geometry modelling and parameter selection in the field of additive manufacturing.