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Household water use and conservation models using Monte Carlo techniques

机译:使用蒙特卡洛技术的家庭用水和节水模型

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The increased availability of end use measurement studies allows for mechanistic and detailed approaches to estimating household water demand and conservation potential. This study simulates water use in a single-family residential neighborhood using end-water-use parameter probability distributions generated from Monte Carlo sampling. This model represents existing water use conditions in 2010 and is calibrated to 2006-2011 metered data. A two-stage mixed integer optimization model is then developed to estimate the least-cost combination of long- and short-term conservation actions for each household. This least-cost conservation model provides an estimate of the upper bound of reasonable conservation potential for varying pricing and rebate conditions. The models were adapted from previous work in Jordan and are applied to a neighborhood in San Ramon, California in the eastern San Francisco Bay Area. The existing conditions model produces seasonal use results very close to the metered data. The least-cost conservation model suggests clothes washer rebates are among most cost-effective rebate programs for indoor uses. Retrofit of faucets and toilets is also cost-effective and holds the highest potential for water savings from indoor uses. This mechanistic modeling approach can improve understanding of water demand and estimate cost-effectiveness of water conservation programs.
机译:最终用途测量研究可用性的提高允许采用机械和详细的方法来估算家庭用水需求和保护潜力。这项研究使用蒙特卡洛采样法生成的最终用水参数概率分布来模拟单户住宅社区的用水。该模型表示2010年的现有用水状况,并已根据2006-2011年的计量数据进行了校准。然后,建立了一个两阶段混合整数优化模型,以估算每个家庭的长期和短期保护行动的最低成本组合。这种成本最低的保护模型可以估算出各种价格和折扣条件下合理保护潜力的上限。这些模型改编自约旦以前的工作,并应用于加利福尼亚州旧金山湾东部地区圣拉蒙的一个社区。现有条件模型产生的季节性使用结果非常接近计量数据。成本最低的节约模型表明,洗衣机回扣是室内使用的最具成本效益的回扣计划之一。水龙头和马桶的翻新也具有成本效益,并且在室内使用方面具有最大的节水潜力。这种机械建模方法可以增进对水需求的理解,并估算节水计划的成本效益。

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