Forecasting Electricity Smart Meter Data Using Conditional Kernel Density Estimation
Siddharth Arora, James W. Taylor

TL;DR
This paper introduces a nonparametric conditional kernel density estimation method for predicting individual smart meter electricity consumption, capturing seasonality and enabling cost-effective demand management.
Contribution
It presents a novel application of CKD with decay parameters for nonparametric density forecasting of smart meter data, outperforming basic benchmarks.
Findings
Kernel methods outperform non-seasonal benchmarks
Density estimates enable effective prediction intervals
Cost-saving strategies can be derived from density-based tariff switching
Abstract
The recent advent of smart meters has led to large micro-level datasets. For the first time, the electricity consumption at individual sites is available on a near real-time basis. Efficient management of energy resources, electric utilities, and transmission grids, can be greatly facilitated by harnessing the potential of this data. The aim of this study is to generate probability density estimates for consumption recorded by individual smart meters. Such estimates can assist decision making by helping consumers identify and minimize their excess electricity usage, especially during peak times. For suppliers, these estimates can be used to devise innovative time-of-use pricing strategies aimed at their target consumers. We consider methods based on conditional kernel density (CKD) estimation with the incorporation of a decay parameter. The methods capture the seasonality in…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Forecasting Techniques and Applications · Energy, Environment, and Transportation Policies
