结合条件需求与工程模型的电力使用贝叶斯方法

A Bayesian Approach to Combining Conditional Demand and Engineering Models of Electricity Usage

Review of Economics and Statistics · 1987
被引 37
人大 AFT50ABS 4

中文导读

提出贝叶斯方法,将工程估计与条件需求估计两种电力使用信息来源正式结合,利用观测数据修正先验信念,得到后验分布以描述家电使用模式。

Abstract

Load forecasting models employed in the electric utility industry have become increas ingly dependent upon information about the electricity used by indivi dual appliances (i.e., end uses). Currently, information on appliance usage is obtained from two fundamentally different sources: (1) engi neering estimates and (2) conditional demand estimates. Bayesian anal ysis provides the means by which these two sources can be formally co mbined. Observed usage data (via the conditional demand approach) are used to modify a set of prior beliefs (the engineering approach), transforming them into a posterior distribution that describes appliance usage patterns and reflects the evidence provided by both approaches. Coauthors are Joseph A. Herriges, Kenneth E. Train, and Robert J. Windle. Copyright 1987 by MIT Press.

贝叶斯方法条件需求模型工程模型电器用电量