A performance evaluation framework for building fault detection and diagnosis algorithms

Date Published
06/2019
Publication Type
Journal Article
Authors
DOI
10.1016/j.enbuild.2019.03.024
Abstract

Fault detection and diagnosis (FDD) algorithms for building systems and equipment represent one of the most active areas of research and commercial product development in the buildings industry. However, far more e↵ort has gone into developing these algorithms than into assessing their performance. As a result, considerable uncertainties remain regarding the accuracy and e↵ectiveness of both research-grade FDD algorithms and commercial products—a state of a↵airs that has hindered the broad adoption of FDD tools. This article presents a general, systematic framework for evaluating the performance of FDD algorithms. The article focuses on understanding the possible answers to two key questions: in the context of FDD algorithm evaluation, what defines a fault and what defines an evaluation input sample? The answers to these questions, together with appropriate performance metrics, may be used to fully specify evaluation procedures for FDD algorithms.

Journal
Energy and Buildings
Volume
192
Year of Publication
2019
Pagination
84 - 92
ISSN Number
03787788
URL
Short Title
Energy and Buildings
Keywords
Organizations
Research Areas
File(s)
Download citation