4.6 Article

AI-big data analytics for building automation and management systems: a survey, actual challenges and future perspectives

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Article Computer Science, Information Systems

Multi-Behavior with Bottleneck Features LSTM for Load Forecasting in Building Energy Management System

Van Bui et al.

Summary: This study proposes a novel multi-behavior with bottleneck features long short-term memory (LSTM) model for load forecasting in building energy management systems, combining the predictive behavior of long-term, short-term, and weekly feature models. The model offers improved performance and stability compared to single-model LSTM, displaying excellent adaptability to unexpected situations.

ELECTRONICS (2021)

Article Computer Science, Artificial Intelligence

Digital Twins for the built environment: learning from conceptual and process models in manufacturing

Juan Manuel Davila Delgado et al.

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ADVANCED ENGINEERING INFORMATICS (2021)

Article Energy & Fuels

Space cooling energy usage prediction based on utility data for residential buildings using machine learning methods

Yanxiao Feng et al.

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APPLIED ENERGY (2021)

Article Construction & Building Technology

Transfer learning based methodology for migration and application of fault detection and diagnosis between building chillers for improving energy efficiency

Xu Zhu et al.

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BUILDING AND ENVIRONMENT (2021)

Article Computer Science, Information Systems

A new weighted fuzzy C-means clustering for workload monitoring in cloud datacenter platforms

Saloua El Motaki et al.

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CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS (2021)

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Blockchain Enabled Reparations in Smart Buildings-Cyber Physical System

Anupam Tiwari et al.

Summary: Blockchain technology is rapidly evolving globally, not only associated with bitcoin and finance, but also widely used in various fields, including smart buildings. Smart buildings use the internet of things, sensors, and cloud connectivity to improve efficiency and sustainability, and there is great growth potential in the future.

DEFENCE SCIENCE JOURNAL (2021)

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Edge HVAC Analytics

Ioan Petri et al.

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ENERGIES (2021)

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System-level fouling detection of district heating substations using virtual-sensor-assisted building automation system

Ryunhee Kim et al.

Summary: An automated fouling detection method for district heating substations (DHS) is proposed, which significantly improves detection performance for light fouling conditions with the assistance of virtual sensors. Virtual measurements are fed into the input layer of the detection model to reinforce the physical relationship of the trained model and address the issue of sensor absences.

ENERGY (2021)

Article Computer Science, Artificial Intelligence

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Yassine Himeur et al.

Summary: In recent years, recommender systems have developed significantly alongside the advancements in IoT and AI technologies. In the building sector, energy efficiency has become a hot research topic where recommender systems play a major role in promoting energy saving behavior. However, further investigations and solutions are needed to address challenges and enable the widespread adoption of this technology.

INFORMATION FUSION (2021)

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Adaboost-based Integration Framework Coupled Two-stage Feature Extraction with Deep Learning for Multivariate Exchange Rate Prediction

Jujie Wang et al.

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NEURAL PROCESSING LETTERS (2021)

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Marijana Zekic-Susac et al.

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Zeyu Wang et al.

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A Review of Deep Reinforcement Learning for Smart Building Energy Management

Liang Yu et al.

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IEEE INTERNET OF THINGS JOURNAL (2021)

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Cheng Fan et al.

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SUSTAINABLE CITIES AND SOCIETY (2021)

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Behavioural patterns in aggregated demand response developments for communities targeting renewables

Carlos Cruz et al.

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SUSTAINABLE CITIES AND SOCIETY (2021)

Proceedings Paper Computer Science, Artificial Intelligence

Appliance identification using a histogram post-processing of 2D local binary patterns for smart grid applications

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2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR) (2021)

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Mohamad Khalil et al.

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2021 12TH INTERNATIONAL RENEWABLE ENGINEERING CONFERENCE (IREC 2021) (2021)

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IEEE TRANSACTIONS ON POWER SYSTEMS (2021)

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INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS (2021)

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IEEE ACCESS (2021)

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