通过综合数据驱动的机器学习方法预测燃气轮机的氮氧化物排放量

Kazi Ekramul Hoque, Tahiya Hossain, Abm Mominul Haque, Md. Abdul Karim Miah, MD Azazul Haque
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引用次数: 0

摘要

减少氮氧化物排放是当代工程和能源生产中的一项重要工作,因为这些排放与不利的环境和健康影响密切相关。本研究评估了通过几种综合数据驱动的机器学习方法预测燃气轮机氮氧化物排放的情况。研究还评估了集合机器学习模型与传统方法相比的性能,结果表明集合模型具有更高的准确性。具体来说,随机森林模型的准确率为 91.68%,XGBoost 的准确率为 91.54%,而 CATBoost 的准确率最高,为 92.76%。这些发现凸显了数据驱动的机器学习技术在提高燃气轮机氮氧化物排放预测方面的能力。这种提升有助于在实际应用中开发和实施更有效的控制和减排策略。通过应用这些先进的机器学习方法,燃气轮机行业可以在优化运行效率的同时最大限度地减少对环境的影响。这项研究还提供了有关集合机器学习模型有效性的宝贵见解,促进了我们对这些模型在解决燃气轮机氮氧化物排放这一关键问题方面能力的了解。
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NOx Emission Predictions in Gas Turbines through Integrated Data-Driven Machine Learning Approaches
The reduction of NOx emissions is a paramount endeavor in contemporary engineering and energy production, as these emissions are closely linked to adverse environmental and health impacts. The prediction of NOx emission from gas turbines through several integrated data-driven machine learning methods have been evaluated in study. The study also assesses the performance of ensemble machine learning models in comparison to conventional methods, with results indicating the superior accuracy of ensemble models. Specifically, the Random Forest model achieved an accuracy rate of 91.68%, XGBoost yielded an accuracy of 91.54%, and CATBoost exhibited the highest accuracy at 92.76%. These findings highlight the capability of data-driven machine learning techniques to enhance NOx emission predictions in gas turbines. This enhancement aids in the development and implementation of more effective control and mitigation strategies in practical applications. Through the application these advanced machine learning approaches, the gas turbine industry can play a pivotal role in minimizing its environmental impact while optimizing operational efficiency. This study also provides valuable insights into the effectiveness of ensemble machine learning models, advancing our understanding of their capabilities in addressing the critical issue of NOx emissions from gas turbines.
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