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Development of a predictive model to determine the temporal variability in mine feed water quality towards informing and forecasting plant operating strategy – a South African coal mine water treatment plant case study

机译:建立预测模型以确定矿井给水水质随时间的变化,以指导和预测工厂的运营策略–南非煤矿水处理厂案例研究

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The feed water quality associated with mine water treatment is typically characterised by a dynamic variability resulting from the fact that the final feed water to the water treatment plant (WTP) can be an amalgamation of water streams emanating from a number of sources. Consequently, the ability to deal with the dynamic nature of the feed water quality towards successful and sustainable mine water treatment goes beyond a proactive approach and requires a systemic, predictive approach. This paper discusses the development of an unsteady state mass balance model on a surface dam located on a coal mine towards predicting the dynamic fluctuations in total dam volume and its total dissolved solids (TDS) concentration in the feed water to a NuWater 20 MLD mobile WTP, comprising chemical conditioning, ultrafiltration and reverse osmosis (RO). The unsteady state mass balance, incorporated water entering the dam via the opencast pits, underground compartments, seasonal rainfall and the RO brine return. Water leaving the dam comprised the feed water to the WTP, partial brine treatment, surface evaporation and seepage. Validation of the model using actual data over an 8-month period showed excellent results. The model showed that without water treatment, the dam would overflow in 218 days. Although the dam's volume could be sustained at the ideal volume by treating 14.2 MLD, its TDS would exceed the maximum environmental limit in 197 days. Consequently, the combination of a 13.2 MLD WTP with a 1 MLD brine treatment plant provided the optimal water treatment strategy to sustainably maintain the dam's TDS concentration and volume within acceptable limits over the 5-year investigation period. This paper demonstrates the importance of using a predictive methodology for forecasting feed water characteristics and as an early warning system for most water treatment systems that are subjected to dynamic conditions.
机译:与矿井水处理有关的给水水质通常以动态变化为特征,这是由于水处理厂(WTP)的最终给水可能是多种来源的水流的混合。因此,处理进水水质动态特性以实现成功和可持续的矿井水处理的能力超出了积极主动的方法,需要系统的,可预测的方法。本文讨论了位于煤矿的地表水坝上的非稳态质量平衡模型的发展,以预测NuWater 20 MLD移动式WTP给水总水坝体积及其总溶解固体(TDS)浓度的动态波动。 ,包括化学调节,超滤和反渗透(RO)。不稳定状态的质量平衡,包括通过露天矿坑,地下隔室,季节性降雨和反渗透盐水返回而进入大坝的水。离开大坝的水包括到污水处理厂的给水,部分盐水处理,地表蒸发和渗漏。使用8个月期间的实际数据对模型进行验证显示出了极好的结果。模型显示,如果不进行水处理,大坝将在218天之内溢出。尽管通过处理14.2 MLD可以将大坝的体积维持在理想的水平,但其TDS将超过197天的最大环境限值。因此,将13.2 MLD WTP与1 MLD盐水处理厂相结合可提供最佳的水处理策略,以在5年的调查期内将大坝的TDS浓度和体积可持续地维持在可接受的范围内。本文证明了使用预测方法预测给水特性并作为大多数受动态条件影响的水处理系统的预警系统的重要性。

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