Fault Detection Analysis of Building Energy Consumption Using Data Mining Techniques
نویسندگان
چکیده
This study describes three different data mining techniques for detecting abnormal lighting energy consumption using hourly recorded energy consumption and peak demand (maximum power) data. Two outliers’ detection methods are applied to each class and cluster for detecting abnormal consumption in the same data set. In each class and cluster with anomalous consumption the amount of variation from normal is determined using modified standard scores. The study will be helpful for building energy management systems to reduce operating cost and time by not having to detect faults manually or diagnose false warnings. In addition, it will be useful for developing fault detection and diagnosis model for the whole building energy consumption. © 20xx The Authors. Published by Elsevier Ltd. Selection and peer-review under responsibility of KES International Energy Monitoring; Energy Consumption; Energy Performance; Data Analysis; Fault Detection; Outlier Detection
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