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Process optimization for zero-liquid discharge desalination of shale gas flowback water under uncertainty

机译:页岩气回水零排液脱盐工艺优化

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摘要

Sustainable and efficient desalination is required to treat the large amounts of high-salinity flowback water from shale gas extraction. Nevertheless, uncertainty associated with well data (including water flowrates and salinities) strongly hampers the process design task. In this work, we introduce a new optimization model for the synthesis of zero-liquid discharge (ZLD) desalination systems under uncertainty. The desalination system is based on multiple-effect evaporation with mechanical vapor recompression (MEE-MVR). Our main objective is energy efficiency intensification through brine discharge reduction, while accounting for distinct water feeding scenarios. For this purpose, we consider the outflow brine salinity near to salt saturation condition as a design constraint to achieve ZLD operation. In this innovative approach, uncertain parameters are mathematically modelled as a set of correlated scenarios with known probability of occurrence. The scenarios set is described by a multivariate normal distribution generated via a sampling technique with symmetric correlation matrix. The stochastic multiscenario non-linear programming (NLP) model is implemented in GAMS, and optimized by the minimization of the expected total annualized cost. An illustrative case study is carried out to evaluate the capabilities of the proposed new approach. Cumulative probability curves are constructed to assess the financial risk related to uncertain space for different standard deviations of expected mean values. Sensitivity analysis is performed to appraise optimal system performance for distinct brine salinity conditions. This methodology represents a useful tool to support decision-makers towards the selection of more robust and reliable ZLD desalination systems for the treatment of shale gas flowback water.
机译:为了处理来自页岩气提取的大量高盐度回流水,需要可持续和有效的脱盐。然而,与井数据相关的不确定性(包括水流量和盐度)极大地阻碍了过程设计任务。在这项工作中,我们为不确定性下的零液体排放(ZLD)脱盐系统的合成引入了一种新的优化模型。脱盐系统基于具有机械蒸汽再压缩(MEE-MVR)的多效蒸发。我们的主要目标是通过减少盐水排放来提高能效,同时考虑到不同的给水情况。为此,我们将盐饱和条件附近的流出盐水盐度视为实现ZLD操作的设计约束。在这种创新方法中,不确定参数被数学建模为一组具有已知发生概率的相关场景。场景集由通过具有对称相关矩阵的采样技术生成的多元正态分布描述。随机多情景非线性规划(NLP)模型是在GAMS中实现的,并通过最小化预期的年度总成本进行了优化。进行了说明性的案例研究,以评估所提出的新方法的功能。构建累积概率曲线以针对预期平均值的不同标准偏差评估与不确定空间有关的财务风险。进行灵敏度分析以评估针对不同盐水盐度条件的最佳系统性能。该方法学是一种有用的工具,可支持决策者选择更强大和可靠的ZLD海水淡化系统来处理页岩气返排水。

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