Author:
Patil Suvarna M.,Kundale Somnath S.,Sutar Santosh S.,Patil Pramod J.,Teli Aviraj M.,Beknalkar Sonali A.,Kamat Rajanish K.,Bae Jinho,Shin Jae Cheol,Dongale Tukaram D.
Abstract
AbstractIn the present study, various statistical and machine learning (ML) techniques were used to understand how device fabrication parameters affect the performance of copper oxide-based resistive switching (RS) devices. In the present case, the data was collected from copper oxide RS devices-based research articles, published between 2008 to 2022. Initially, different patterns present in the data were analyzed by statistical techniques. Then, the classification and regression tree algorithm (CART) and decision tree (DT) ML algorithms were implemented to get the device fabrication guidelines for the continuous and categorical features of copper oxide-based RS devices, respectively. In the next step, the random forest algorithm was found to be suitable for the prediction of continuous-type features as compared to a linear model and artificial neural network (ANN). Moreover, the DT algorithm predicts the performance of categorical-type features very well. The feature importance score was calculated for each continuous and categorical feature by the gradient boosting (GB) algorithm. Finally, the suggested ML guidelines were employed to fabricate the copper oxide-based RS device and demonstrated its non-volatile memory properties. The results of ML algorithms and experimental devices are in good agreement with each other, suggesting the importance of ML techniques for understanding and optimizing memory devices.
Funder
Bharati Vidyapeeth Deemed to be University
MAHAJYOTI Fellowship
Shivaji University, Kolhapur
RUSA-Industry Sponsored Centre for VLSI System Design
National Research Foundation of Korea
Publisher
Springer Science and Business Media LLC
Cited by
10 articles.
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