设计城市供水系统的非线性价格表以平衡收益和节约目标

F. Wolak
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引用次数: 13

摘要

本文制定并估计了在价格上涨的情况下家庭层面的计费循环用水需求模型,该模型考虑了月度天气变化、家庭财产上的植被数量以及家庭人口统计数据导致的客户层面需求异质性的影响。该模型利用美国人口普查数据在公用事业服务区域的家庭人口统计分布来恢复这些因素对水需求的影响。根据美国国家航空航天局的卫星数据获得了家庭财产上植被数量的指数。家庭级需求模型用于计算任何可能的价格表下公用事业级水需求和收入的分布。公用事业公司可以利用客户需求结构的知识来设计非线性定价计划,以实现竞争性收入或节水目标,这对于水务公司管理日益不确定的水资源供应,同时仍保持财务可行性至关重要。根据可观察到的家庭特征,了解这些需求在不同客户之间的差异,可以使公用事业公司减少公用事业范围内的收入或任何定价计划所面临的销售风险。了解不同客户的需求结构如何变化,可以用于设计个性化的(基于可观察到的家庭人口特征)增加的大宗价格表,以进一步降低公用事业公司在全系统范围内面临的风险。对于所考虑的公用事业公司来说,了解客户层面的人口统计数据,预测家庭之间的需求差异,将公用事业公司全系统收入的不确定性从70%降低到96%。通过重新设计电力公司的非线性价格表,以最大限度地降低其在服务区域内家庭需求分布所面临的收入风险,将电力公司全系统收入的不确定性进一步降低到5%至15%的范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing Nonlinear Price Schedules for Urban Water Utilities to Balance Revenue and Conservation Goals
This paper formulates and estimates a household-level, billing-cycle water demand model under increasing block prices that accounts for the impact of monthly weather variation, the amount of vegetation on the household’s property, and customer-level heterogeneity in demand due to household demographics. The model utilizes US Census data on the distribution of household demographics in the utility’s service territory to recover the impact of these factors on water demand. An index of the amount of vegetation on the household’s property is obtained from NASA satellite data. The household-level demand models are used to compute the distribution of utility-level water demand and revenues for any possible price schedule. Knowledge of the structure of customer-level demand can be used by the utility to design nonlinear pricing plans that achieve competing revenue or water conservation goals, which is crucial for water utilities to manage increasingly uncertain water availability yet still remain financially viable. Knowledge of how these demands differ across customers based on observable household characteristics can allow the utility to reduce the utility-wide revenue or sales risk it faces for any pricing plan. Knowledge of how the structure of demand varies across customers can be used to design personalized (based on observable household demographic characteristics) increasing block price schedules to further reduce the risk the utility faces on a system-wide basis. For the utilities considered, knowledge of the customer-level demographics that predict demand differences across households reduces the uncertainty in the utility’s system-wide revenues from 70 to 96 percent. Further reductions in the uncertainty in the utility’s system-wide revenues in the, range of 5 to 15 percent, are possible by re-designing the utility’s nonlinear price schedules to minimize the revenue risk it faces given the distribution of household-level demand in its service territory.
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