Optimization of Chemical Engineering Processes in the Mining and Metal Industry

Santosh Walke, M. Naniwadekar, Chetan M. Thakar, M. Mandake, Ravi W. Tapre, Sandhya D. Jadhav
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Abstract

Process optimization is an important area of research in the mining and metal industries. The application of mathematical models and optimization techniques has led to significant improvements in process efficiency, reduced operating costs, and improved product quality. The use of simulation tools has also allowed for the development of virtual plants that can be used to test different process scenarios and optimize plant performance. To completely reap the rewards of process optimisation, there are still several issues that need to be resolved. The integration of sustainability and environmental impact assessments into the optimisation process is one of the major issues. This necessitates the creation of models that can take the environmental impact of various process factors into consideration and enable process optimisation using environmental standards. The creation of more complicated mathematical models that can capture the intricate interconnections between various process factors presents another difficulty. Advanced machine learning and data analytics methods like neural networks and genetic algorithms must be used for this. Despite these challenges, the future of process optimization looks promising. Emerging technologies, such as the Internet of Things and big data analytics, are opening up new opportunities for process optimization. The use of sensors and real-time data analytics can provide plant operators with the information they need to make real-time decisions and optimize plant performance. Process optimization is a critical area of research for the mining and metal industries. The use of mathematical models, optimization techniques, and simulation tools has led to significant improvements in process efficiency and product quality.
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优化采矿和金属工业的化学工程流程
工艺优化是采矿和金属行业的一个重要研究领域。数学模型和优化技术的应用大大提高了工艺效率,降低了运营成本,提高了产品质量。模拟工具的使用也使得虚拟工厂的开发成为可能,可以用来测试不同的工艺方案并优化工厂性能。要完全获得工艺优化的回报,仍有几个问题需要解决。将可持续发展和环境影响评估纳入优化流程是主要问题之一。这就需要建立模型,将各种工艺因素对环境的影响考虑在内,并利用环境标准实现工艺优化。创建更复杂的数学模型,以捕捉各种工艺因素之间错综复杂的相互联系,是另一个难题。为此,必须使用神经网络和遗传算法等先进的机器学习和数据分析方法。尽管存在这些挑战,工艺优化的未来仍充满希望。物联网和大数据分析等新兴技术正在为工艺优化带来新的机遇。传感器和实时数据分析的使用可为工厂操作人员提供实时决策和优化工厂绩效所需的信息。工艺优化是采矿和金属行业的一个重要研究领域。数学模型、优化技术和仿真工具的使用大大提高了工艺效率和产品质量。
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来源期刊
Journal of Mines, Metals and Fuels
Journal of Mines, Metals and Fuels Energy-Fuel Technology
CiteScore
0.20
自引率
0.00%
发文量
101
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