一种确定地下水井整体能量效率指标的神经网络方法

N.J. Saggioro, J. A. Cagnon, I. D. da Silva
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引用次数: 0

摘要

在大多数情况下,地下水井的配水系统使用电潜泵。所有的电能都用于泵;然而,这些系统的其他组件(管道,阀门等)也负责更高或更低的电能消耗。因此,系统的管理者和操作人员应该了解整个过程的能量行为,以便对其进行适当的管理。这项工作通过使用数学方程和神经网络提出了地下水水井的“全球能源效率指标”。仿真结果验证了该方法的有效性。
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A neural approach for determination of global energetic efficiency indicator in groundwater wells
In most of the cases, the systems of water distribution from groundwater wells use electrical submersible pumps. All electrical energy is applied to the pumps; however, other components (pipes, valves, etc.) of these systems are also responsible by the higher or lower consumption of electric energy. The supervisors and operators of the systems should thus have knowledge of the global energetic behavior of the process in order to administrate it properly. This work suggests a 'global energy efficiency indicator' for groundwater wells by using mathematical equations and neural networks. Simulation results are presented in order to demonstrate the validity of the proposed approach.
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