SMARTIK: ARSITEKTUR SISTEM MONITORING PENGGUNAAN LISTRIK DENGAN DETEKSI ANOMALI ISOLATION FOREST
Abstract
Monitoring electricity usage is important for electricity consumers. The electrical installation lines installed at the customer's premises are distributed via Miniature Circuit Breakers (MCBs) to each existing area or room and are then used for various electronic equipment. The challenge of presenting a system that can identify and view electricity usage patterns based on time series data on each route has the potential to support wise electricity use. The aim of this research is to build an electricity usage monitoring system architecture which is then called SMARTIK. The advantage proposed by SMARTIK is the detection of electrical energy usage anomalies, which are read from each existing electrical installation line. Anomaly detection is performed using a machine learning method, namely a Isolation Forest
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