TY - JOUR
T1 - Application of bp artificial neural network in preparation of ni–w graded coatings
AU - Feng, Pei
AU - Shi, Yuhua
AU - Shang, Peng
AU - Wei, Hanjun
AU - Peng, Tongtong
AU - Pang, Lisha
AU - Feng, Rongrong
AU - Zhang, Wenyuan
N1 - Publisher Copyright:
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.
PY - 2021/11/1
Y1 - 2021/11/1
N2 - The internal stress difference between soft-ductile aluminum alloy substrate and hard-brittle Ni–W alloy coating will cause stress concentration, thus leading to the problem of poor bonding force. Herein, this work prepared the Ni–W graded coating on aluminum alloy matrix by the pulse electrodeposition method in order to solve the mechanical mismatch problem between substrate and coatings. More importantly, a backward propagation (BP) neural network was applied to efficiently optimize the pulse electrodeposition process of Ni–W graded coating. The SEM, EDS, XRD, Vickers hardness tester and Weighing scales are used to analyze the micromorphology, chemical element, phase composition, and micro hardness as well as oxidation weight increase, respectively. The results show that the optimal process conditions with BP neural network are as follows: the bath temperature is 30◦ C, current density is 15 mA/cm2 and duty cycle is 0.3. The predicted value of the model agrees well with the experimental value curve, the relative error is minor. The maximum error is less than 3%, and the correlation coefficient is 0.9996. The Ni–W graded coating prepared by BP neural network shows good bonding with the substrate which has flat and smooth interface. The thickness of the coating is about 136 µm, which slows down the oxidation of the substrate and plays an effective role in protecting the substrate.
AB - The internal stress difference between soft-ductile aluminum alloy substrate and hard-brittle Ni–W alloy coating will cause stress concentration, thus leading to the problem of poor bonding force. Herein, this work prepared the Ni–W graded coating on aluminum alloy matrix by the pulse electrodeposition method in order to solve the mechanical mismatch problem between substrate and coatings. More importantly, a backward propagation (BP) neural network was applied to efficiently optimize the pulse electrodeposition process of Ni–W graded coating. The SEM, EDS, XRD, Vickers hardness tester and Weighing scales are used to analyze the micromorphology, chemical element, phase composition, and micro hardness as well as oxidation weight increase, respectively. The results show that the optimal process conditions with BP neural network are as follows: the bath temperature is 30◦ C, current density is 15 mA/cm2 and duty cycle is 0.3. The predicted value of the model agrees well with the experimental value curve, the relative error is minor. The maximum error is less than 3%, and the correlation coefficient is 0.9996. The Ni–W graded coating prepared by BP neural network shows good bonding with the substrate which has flat and smooth interface. The thickness of the coating is about 136 µm, which slows down the oxidation of the substrate and plays an effective role in protecting the substrate.
KW - Backward propagation (BP) neural network
KW - High temperature oxidation
KW - Ni–W graded coatings
KW - Pulse electrodeposi-tion
UR - http://www.scopus.com/inward/record.url?scp=85119265672&partnerID=8YFLogxK
U2 - 10.3390/ma14226781
DO - 10.3390/ma14226781
M3 - 文章
AN - SCOPUS:85119265672
SN - 1996-1944
VL - 14
JO - Materials
JF - Materials
IS - 22
M1 - 6781
ER -