Deep Learning-Based Real-Time Building Occupancy Detection Using AMI Data

Building occupancy patterns facilitate successful development of the smart grid by enhancing building-to-grid integration efficiencies. Current occupancy detection is limited by the lack of widely deployed non-intrusive sensors and the insufficient learning power of shallow machine learning algorithms. This paper seeks to detect real-time building occupancy from Advanced Metering Infrastructure (AMI) data based on a deep learning architecture. The developed deep learning model consists of a convolutional neural network (CNN) and a long short-term memory (LSTM) network. Specifically, a CNN with convolutional and max-pooling layers extracts spatial features in the AMI data. Then, the forward and backward dependencies within the CNN feature maps are learned by a bidirectional LSTM (BiLSTM) structure with three hidden layers. Case studies based on a publicly available dataset show that the developed CNN-BiLSTM model consistently and robustly outperforms the state-of-the-art machine learning classifiers and other advanced deep learning architectures with around 90% occupancy detection accuracy and high detection confidence.

[1]  Silvia Santini,et al.  Occupancy Detection from Electricity Consumption Data , 2013, BuildSys@SenSys.

[2]  Han Zou,et al.  Device-free occupancy detection and crowd counting in smart buildings with WiFi-enabled IoT , 2018, Energy and Buildings.

[3]  Ram Rajagopal,et al.  Smart Meter Driven Segmentation: What Your Consumption Says About You , 2013, IEEE Transactions on Power Systems.

[4]  Pietro Siciliano,et al.  People occupancy detection and profiling with 3D depth sensors for building energy management , 2015 .

[5]  Qianchuan Zhao,et al.  Occupancy detection in the office by analyzing surveillance videos and its application to building energy conservation , 2017 .

[6]  Mithat Gonen,et al.  Analyzing Receiver Operating Characteristic Curves with SAS , 2007 .

[7]  Jie Zhang,et al.  Assessment of aggregation strategies for machine-learning based short-term load forecasting , 2020, Electric Power Systems Research.

[8]  Chongqing Kang,et al.  Deep Learning-Based Socio-Demographic Information Identification From Smart Meter Data , 2019, IEEE Transactions on Smart Grid.

[9]  Ming Jin,et al.  Virtual Occupancy Sensing: Using Smart Meters to Indicate Your Presence , 2017, IEEE Transactions on Mobile Computing.

[10]  Sepp Hochreiter,et al.  Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs) , 2015, ICLR.

[11]  Prashant J. Shenoy,et al.  Non-Intrusive Occupancy Monitoring using Smart Meters , 2013, BuildSys@SenSys.

[12]  E. Valuations A REVIEW ON EVALUATION METRICS FOR DATA CLASSIFICATION EVALUATIONS , 2015 .

[13]  Andrew Peacock,et al.  An evidence based approach to determining residential occupancy and its role in demand response management , 2016 .

[14]  Yi Fang,et al.  Siamese CNN-BiLSTM Architecture for 3D Shape Representation Learning , 2018, IJCAI.

[15]  Talal Rahwan,et al.  Automatic HVAC Control with Real-time Occupancy Recognition and Simulation-guided Model Predictive Control in Low-cost Embedded System , 2017, ArXiv.

[16]  Jiebo Luo,et al.  User attribute discovery with missing labels , 2018, Pattern Recognit..

[17]  Pierre Pinson,et al.  Global Energy Forecasting Competition 2012 , 2014 .

[18]  Pascal Vincent,et al.  Representation Learning: A Review and New Perspectives , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[19]  Andrew Zisserman,et al.  Very Deep Convolutional Networks for Large-Scale Image Recognition , 2014, ICLR.

[20]  Jean-François Toubeau,et al.  Deep Learning-Based Multivariate Probabilistic Forecasting for Short-Term Scheduling in Power Markets , 2019, IEEE Transactions on Power Systems.

[21]  Silvia Santini,et al.  The ECO data set and the performance of non-intrusive load monitoring algorithms , 2014, BuildSys@SenSys.

[22]  Jie Zhao,et al.  Occupant behavior and schedule modeling for building energy simulation through office appliance power consumption data mining , 2014 .

[23]  Rouzbeh Razavi,et al.  Occupancy detection of residential buildings using smart meter data: A large-scale study , 2019, Energy and Buildings.

[24]  Fred Popowich,et al.  Exploiting HMM Sparsity to Perform Online Real-Time Nonintrusive Load Monitoring , 2016, IEEE Transactions on Smart Grid.

[25]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[26]  Yoshua Bengio,et al.  Understanding the difficulty of training deep feedforward neural networks , 2010, AISTATS.

[27]  Geoffrey E. Hinton,et al.  Visualizing Data using t-SNE , 2008 .

[28]  Geoffrey E. Hinton,et al.  Speech recognition with deep recurrent neural networks , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[29]  Nan Li,et al.  Measuring and monitoring occupancy with an RFID based system for demand-driven HVAC operations , 2012 .

[30]  Bing Dong,et al.  Integrated building control based on occupant behavior pattern detection and local weather forecasting , 2011 .

[31]  Nan Li,et al.  Linking energy-cyber-physical systems with occupancy prediction and interpretation through WiFi probe-based ensemble classification , 2019, Applied Energy.

[32]  Marco Levorato,et al.  Residential Consumer-Centric Demand Side Management , 2018, IEEE Transactions on Smart Grid.

[33]  Yeng Chai Soh,et al.  Smartphone Inertial Sensor-Based Indoor Localization and Tracking With iBeacon Corrections , 2016, IEEE Transactions on Industrial Informatics.

[34]  Bri-Mathias Hodge,et al.  Unsupervised Clustering-Based Short-Term Solar Forecasting , 2019, IEEE Transactions on Sustainable Energy.

[35]  Prabir Barooah,et al.  Energy-efficient control of under-actuated HVAC zones in commercial buildings , 2015 .

[36]  Silvia Santini,et al.  Household occupancy monitoring using electricity meters , 2015, UbiComp.

[37]  Luis M. Candanedo,et al.  Accurate occupancy detection of an office room from light, temperature, humidity and CO2 measurements using statistical learning models , 2016 .

[38]  Han Zou,et al.  Towards occupant activity driven smart buildings via WiFi-enabled IoT devices and deep learning , 2018, Energy and Buildings.

[39]  Zhiyong Cui,et al.  Deep Bidirectional and Unidirectional LSTM Recurrent Neural Network for Network-wide Traffic Speed Prediction , 2018, ArXiv.

[40]  Jacopo Torriti,et al.  Demand Side Management for the European Supergrid: Occupancy variances of European single-person households , 2012 .

[41]  Iakovos Michailidis,et al.  Occupancy-based demand response and thermal comfort optimization in microgrids with renewable energy sources and energy storage , 2016 .

[42]  Jie Zhang,et al.  Reinforced Deterministic and Probabilistic Load Forecasting via $Q$ -Learning Dynamic Model Selection , 2020, IEEE Transactions on Smart Grid.

[43]  Mani B. Srivastava,et al.  Inferring occupancy from opportunistically available sensor data , 2014, 2014 IEEE International Conference on Pervasive Computing and Communications (PerCom).

[44]  Haibin Yu,et al.  Joint Household Characteristic Prediction via Smart Meter Data , 2019, IEEE Transactions on Smart Grid.