Search Results for author: Stephen Makonin

Found 7 papers, 4 papers with code

Exploring Bayesian Surprise to Prevent Overfitting and to Predict Model Performance in Non-Intrusive Load Monitoring

no code implementations16 Sep 2020 Richard Jones, Christoph Klemenjak, Stephen Makonin, Ivan V. Bajic

We compare the performance of several benchmark NILM algorithms supported by NILMTK, in order to establish a useful threshold on the two combined measures of surprise.

Non-Intrusive Load Monitoring

PowerGAN: Synthesizing Appliance Power Signatures Using Generative Adversarial Networks

no code implementations20 Jul 2020 Alon Harell, Richard Jones, Stephen Makonin, Ivan V. Bajic

Non-intrusive load monitoring (NILM) allows users and energy providers to gain insight into home appliance electricity consumption using only the building's smart meter.

Generative Adversarial Network Non-Intrusive Load Monitoring

Towards Comparability in Non-Intrusive Load Monitoring: On Data and Performance Evaluation

1 code implementation20 Jan 2020 Christoph Klemenjak, Stephen Makonin, Wilfried Elmenreich

In this paper, we draw attention to comparability in NILM with a focus on highlighting the considerable differences amongst common energy datasets used to test the performance of algorithms.

Non-Intrusive Load Monitoring

On Metrics to Assess the Transferability of Machine Learning Models in Non-Intrusive Load Monitoring

1 code implementation12 Dec 2019 Christoph Klemenjak, Anthony Faustine, Stephen Makonin, Wilfried Elmenreich

To assess the performance of load disaggregation algorithms it is common practise to train a candidate algorithm on data from one or multiple households and subsequently apply cross-validation by evaluating the classification and energy estimation performance on unseen portions of the dataset derived from the same households.

BIG-bench Machine Learning Non-Intrusive Load Monitoring

Universal Non-Intrusive Load Monitoring (UNILM) Using Filter Pipelines, Probabilistic Knapsack, and Labelled Partition Maps

1 code implementation15 Jul 2019 Alejandro Rodriguez-Silva, Stephen Makonin

Being able to track appliances energy usage without the need of sensors can help occupants reduce their energy consumption to help save the environment all while saving money.

Signal Processing

Wavenilm: A causal neural network for power disaggregation from the complex power signal

1 code implementation23 Feb 2019 Alon Harell, Stephen Makonin, Ivan V. Bajić

Non-intrusive load monitoring (NILM) helps meet energy conservation goals by estimating individual appliance power usage from a single aggregate measurement.

Non-Intrusive Load Monitoring

Load Disaggregation Based on Aided Linear Integer Programming

no code implementations24 Mar 2016 Md. Zulfiquar Ali Bhotto, Stephen Makonin, Ivan V. Bajic

Load disaggregation based on aided linear integer programming (ALIP) is proposed.

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