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Analysis of aggregated functional data from mixed populations with application to energy consumption

机译:分析混合人群的汇总功能数据并应用于能耗

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Understanding energy consumption patterns of different types of consumers is essential in any planning of energy distribution. However, obtaining individual-level consumption information is often either not possible or too expensive. Therefore, we consider data from aggregations of energy use, that is, from sums of individuals' energy use, where each individual falls into one of C consumer classes. Unfortunately, the exact number of individuals of each class may be unknown due to inaccuracies in consumer registration or irregularities in consumption patterns. We develop a methodology to estimate both the expected energy use of each class as a function of time and the true number of consumers in each class. To accomplish this, we use B-splines to model both the expected consumption and the individual-level random effects. We treat the reported numbers of consumers in each category as random variables with distribution depending on the true number of consumers in each class and on the probabilities of a consumer in one class reporting as another class. We obtain maximum likelihood estimates of all parameters via a maximization algorithm. We introduce a special numerical trick for calculating the maximum likelihood estimates of the true number of consumers in each class. We apply our method to a data set and study our method via simulation.
机译:在计划能源分配时,了解不同类型消费者的能源消耗模式至关重要。但是,获得个人级别的消费信息通常是不可能或太昂贵的。因此,我们考虑来自能源使用总量的数据,即来自个人能源使用总和的数据,其中每个人都属于C类消费者类别。不幸的是,由于消费者注册的不正确或消费模式的不规范,每个类别的确切人数可能是未知的。我们开发了一种方法来估算每个类别的预期能源使用量与时间的函数关系,以及每个类别中真实的用户数量。为了达到这个目的,我们使用B样条对期望的消耗和个体水平的随机效应进行建模。我们将每个类别中报告的消费者数量视为随机变量,其分布取决于每个类别中消费者的真实数量以及一个类别中消费者报告另一类别的消费者的概率。我们通过最大化算法获得所有参数的最大似然估计。我们引入了一种特殊的数字技巧,用于计算每个类别中真实消费者数量的最大似然估计。我们将我们的方法应用于数据集并通过仿真研究我们的方法。

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