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Energy Consumption Optimization of High Sulfur Natural Gas Purification Plant Based on Back Propagation Neural Network and Genetic Algorithms

机译:基于背部传播神经网络和遗传算法的高硫天然气净化厂能耗优化

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In order to effectively reduce the energy consumption of high sulfur natural gas purification process, in this paper, optimization model based on the genetic algorithm (GA) was developed. The natural gas purification process steady state model was established by using process simulation software ProMax. 8 key operating parameters of the purification system were determined by the process simulation model and energy consumption analysis. To reduce the calculation time and to solve the no convergence problems in the process simulation model, the BP (Back Propagation) neural network model was applied to train and test the simulated data. Then the BP model was incorporated into Genetic Algorithms to develop the energy consumption optimization model. A case study was performed in a high-sulfur natural gas purification plant with the capacity of 300xl04 NmVd. And the results demonstrate that the energy consumption of the purification plant was reduced by 12.7%.
机译:为了有效降低高硫天然气净化过程的能耗,在本文中,开发了基于遗传算法(GA)的优化模型。通过使用流程仿真软件突出建立天然气净化过程稳态模型。 8纯化系统的关键操作参数由过程仿真模型和能耗分析确定。为了减少计算时间并解决过程仿真模型中没有收敛问题,将BP(反向传播)神经网络模型应用于培训和测试模拟数据。然后将BP模型纳入遗传算法中以开发能量消耗优化模型。在高硫天然气净化厂中进行案例研究,其容量为300xL04 nmVD。结果表明,净化厂的能量消耗减少了12.7%。

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