[HTML][HTML] Ai-driven innovations in building energy management systems: A review of potential applications and energy savings

DMTE Ali, V Motuzienė, R Džiugaitė-Tumėnienė - Energies, 2024 - mdpi.com
Despite the tightening of energy performance standards for buildings in various countries
and the increased use of efficient and renewable energy technologies, it is clear that the …

Integrating Blockchain in Smart Grids for Enhanced Demand Response: Challenges, Strategies, and Future Directions

P Koukaras, KD Afentoulis, PA Gkaidatzis, A Mystakidis… - Energies, 2024 - mdpi.com
This research, conducted throughout the years 2022 and 2023, examines the role of
blockchain technology in optimizing Demand Response (DR) within Smart Grids (SGs). It …

[HTML][HTML] Daily peak demand forecasting using Pelican Algorithm optimised Support Vector Machine (POA-SVM)

IT Akinola, Y Sun, IG Adebayo, Z Wang - Energy Reports, 2024 - Elsevier
The knowledge of daily peak load consumption is crucial for energy planning, energy
management, and resource allocation, as it is an essential element of supply-side …

Energy Forecasting: A Comprehensive Review of Techniques and Technologies

A Mystakidis, P Koukaras, N Tsalikidis, D Ioannidis… - Energies, 2024 - mdpi.com
Distribution System Operators (DSOs) and Aggregators benefit from novel energy
forecasting (EF) approaches. Improved forecasting accuracy may make it easier to deal with …

[HTML][HTML] Using crafted features and polar bear optimization algorithm for short-term electric load forecast system

M Bhatnagar, G Rozinaj, R Vargic - Energy and AI, 2025 - Elsevier
Short-term load forecasting (STLF) can be utilized to predict usage fluctuation in a short time
period and accurate forecasting can save a big chunk of a country's economic loss. This …

[HTML][HTML] Improved Bacterial Foraging Optimization Algorithm with Machine Learning-Driven Short-Term Electricity Load Forecasting: A Case Study in Peninsular …

FA Zaini, MF Sulaima, IAWA Razak, ML Othman… - Algorithms, 2024 - mdpi.com
Accurate electricity demand forecasting is crucial for ensuring the sustainability and
reliability of power systems. Least square support vector machines (LSSVM) are well suited …

Urban traffic congestion prediction: a multi-step approach utilizing sensor data and weather information

N Tsalikidis, A Mystakidis, P Koukaras, M Ivaškevičius… - Smart Cities, 2024 - mdpi.com
The continuous growth of urban populations has led to the persistent problem of traffic
congestion, which imposes adverse effects on quality of life, such as commute times, road …

[HTML][HTML] Optimizing Nurse Rostering: A Case Study Using Integer Programming to Enhance Operational Efficiency and Care Quality

A Mystakidis, C Koukaras, P Koukaras, K Kaparis… - …, 2024 - pmc.ncbi.nlm.nih.gov
Background/Objectives: This study addresses the complex challenge of Nurse Rostering
(NR) in oncology departments, a critical component of healthcare management affecting …

[PDF][PDF] Leveraging Feature Sets and Machine Learning for Enhanced Energy Load Prediction: A Comparative Analysis

FPS Almeida, M Castelli, N Côrte-Real - Emerging Science Journal, 2024 - run.unl.pt
Accurate cooling consumption forecasts are crucial for optimizing energy management,
storage, and overall efficiency in interconnected HVAC systems. Weather conditions …

[HTML][HTML] Neural Prophet driven day-ahead forecast of global horizontal irradiance for efficient micro-grid management

SOG Torto, RK Pachauri, JG Singh - e-Prime-Advances in Electrical …, 2024 - Elsevier
This study introduces an innovative approach to day-ahead solar irradiance forecasting,
utilizing the NeuralProphet model—a deep learning-based extension of the Prophet tool—to …