Nagarajapandian M, Kanthalakshmi S, Devan P Arun Mozhi, Bingi Kishore
Department of Electronics and Instrumentation Engineering, Sri Ramakrishna Engineering College, Coimbatore, 641022, Tamil Nadu, India.
Department of Electrical and Electronics Engineering, PSG College of Technology, Coimbatore, 641004, Tamil Nadu, India.
Sci Rep. 2024 Oct 9;14(1):23568. doi: 10.1038/s41598-024-74813-7.
The multivariable process plays a significant role in industrial applications, and designing a controller for the Multi-Input Multi-Output process is challenging due to dynamic process changes and interactions between system variables. Traditionally, the PI family of controllers has been used for its simple design, easy tuning, and quick deployment. However, these processes require complex control actions due to multiple loops in process plants. Thus, this paper proposes an Iterative Learning Controller Dead-time compensating PI, which utilizes the newly developed hybrid Simulated Annealing-Ant Lion Optimization algorithm for Single-Input Single-Output process simulation and real-time experimentation on the Quadruple Tank System. To validate the effectiveness of the developed controller, Machine Learning techniques such as regression and ensemble trees are used to accurately predict the actual system response using error values from respective processes. The simulation and experimental results demonstrate that the proposed controller achieved better performance. The regression and ensemble tree algorithm models effectively predicted the actual response. The obtained data shows that the proposed controller improved system stability and robustness by minimizing nearly half of the overshoot and improving settling time, with an average of 29.9596% faster than the other controller in the SISO process and 14.6116% in the MIMO process.
多变量过程在工业应用中起着重要作用,由于动态过程变化和系统变量之间的相互作用,为多输入多输出过程设计控制器具有挑战性。传统上,PI 系列控制器因其设计简单、易于调整和快速部署而被使用。然而,由于过程工厂中的多个回路,这些过程需要复杂的控制动作。因此,本文提出了一种迭代学习控制器死区时间补偿 PI,它利用新开发的混合模拟退火 - 蚁狮优化算法对单输入单输出过程进行模拟,并在四水箱系统上进行实时实验。为了验证所开发控制器的有效性,使用回归和集成树等机器学习技术,利用各个过程的误差值准确预测实际系统响应。仿真和实验结果表明,所提出的控制器具有更好的性能。回归和集成树算法模型有效地预测了实际响应。获得的数据表明,所提出的控制器通过将超调量减少近一半并改善调节时间,提高了系统的稳定性和鲁棒性,在单输入单输出过程中比其他控制器平均快 29.9596%,在多输入多输出过程中快 14.6116%。