Work place: Sister Nivedita University, Kolkata, 700156, India
E-mail: souvikpal22@gmail.com
Website:
Research Interests: Big Data, Wireless Sensor Networks, Data Analysis, Cloud Computing
Biography
Souvik Pal, Ph.D, MCSI; MCSTA/ACM, USA; MIAENG, Hong Kong; MIRED, USA; MACEEE, New Delhi ; MIACSIT, Singapore; MAASCIT, USA is Associate Professor in the Department of Computer Science and Engineering, Sister Nivedita University, India. He is editor/author of 18 Elsevier/Springer/CRC Press/Apple Academic Press Books and he is owner of 02 patents. Dr. Pal has more than 120 research article including journal, conference & book chapters. His research area includes Cloud Computing, Big Data, Wireless Sensor Network (WSN), Internet of Things, and Data Analytics.
By Pijush Dutta Gour Gopal Jana Shobhandeb Paul Souvik Pal Sumanta Dey Arindam Sadhu
DOI: https://doi.org/10.5815/ijem.2024.01.05, Pub. Date: 8 Feb. 2024
Predicting the liquid flow rate in the process industry has proved to be a critical problem to solve. To develop a mathematical, in-depth of physics-based prognostics understanding is often required. However, in a complex process control system, sometimes proper knowledge of system behaviour is unavailable, in such cases, the complement model-based prognostics transform into a smart process control system with the help of Artificial Intelligence. In previous research a number of prognostic methods, based on classical intelligence techniques, such as artificial neural networks (ANNs), Fuzzy logic controller, Adaptive Fuzzy inference system (ANFIS) etc., utilized in a liquid flow process model to predict the effectiveness. Due to system complexity, Computational time &over fitting the performance of the AI has been limited. In this work we proposed three machine learning regression model: Random Forest (RF), decision Tree (DT) & linear Regression (LR) to predict the flow rate of a process control system. The effectiveness of the model is evaluated in terms of training time, RMSE, MAE & accuracy. Overall, this study suggested that the Decision Tree outperformed than other two models RF & LR by achieving the maximum accuracy, least RMSE & Computational time is 98.6%, 0.0859 & 0.115 Seconds respectively.
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