Souvik Pal

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.

Author Articles
AI-Based Smart Prediction of Liquid Flow System Using Machine Learning Approach

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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