School of Mechanical Engineering, Dr. Vishwanath Karad, MIT-World Peace University & Head of Innovation, Heating, Thermax Limited, Pune, India.
Birla Institute of technology and Science Pilani, Goa Campus, Goa, India.
ISA Trans. 2023 May;136:571-589. doi: 10.1016/j.isatra.2022.10.036. Epub 2022 Nov 1.
Pressure and water level control are quite challenging in grate-fired boilers due to higher combustion lag. Fluctuation in the pressure and the water level is more evident in the coal-fired grate boilers due to the presence of lower volatile and higher char. This results in suboptimal operation and poor performance of the boiler. This paper presents a novel predictive and dynamic simulation model for the drum dynamics analysis of a grate-fired boiler by combining a data-driven model and a thermodynamic model. A data-driven methodology is employed for the estimation of combustion, heat transfers, and circulation performance of the boiler. A novel thermodynamic model is proposed for the boiler dynamics of a hybrid boiler. The proposed data-driven model has been integrated with the thermodynamic model to reduce the randomness and improve consistency. Pressure and water level errors are estimated by comparing the predicted value and experimental result and the multi-objective optimisation technique is employed for the minimisation of errors. The Stochastic Gradient Descent algorithm is proposed for its ability to quick learning and adaptation to variations in fuel and combustion characteristics. The model demonstrates good accuracy in predicting the combustion and boiler dynamics of a grate-fired boiler. The proposed model has good potential to be used for the reciprocating grate solid-fuel boiler control in fluctuating load conditions.
由于燃烧滞后较大,在炉排燃烧锅炉中,压力和水位控制极具挑战性。由于低挥发性和高碳含量的存在,燃煤炉排锅炉中的压力和水位波动更为明显。这导致了锅炉运行不理想和性能不佳。本文提出了一种新颖的预测和动态模拟模型,通过结合数据驱动模型和热力学模型,对炉排燃烧锅炉的汽包动态进行分析。采用数据驱动方法来估算锅炉的燃烧、传热和循环性能。提出了一种用于混合锅炉锅炉动力学的新型热力学模型。所提出的数据驱动模型已与热力学模型集成,以减少随机性并提高一致性。通过比较预测值和实验结果来估计压力和水位误差,并采用多目标优化技术来最小化误差。由于 Stochastic Gradient Descent 算法具有快速学习和适应燃料和燃烧特性变化的能力,因此被采用。该模型在预测炉排燃烧锅炉的燃烧和锅炉动态方面表现出良好的准确性。该模型具有很好的潜力,可用于在波动负荷条件下控制往复炉排固体燃料锅炉。