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Mahsa Khorram
Mahsa Khorram
Assistant Researcher, GECAD Research Center
Verified email at isep.ipp.pt
Title
Cited by
Cited by
Year
Load forecasting in an office building with different data structure and learning parameters
D Ramos, M Khorram, P Faria, Z Vale
Forecasting 3 (1), 242-255, 2021
252021
Office building participation in demand response programs supported by intelligent lighting management
M Khorram, O Abrishambaf, P Faria, Z Vale
Energy Informatics 1 (1), 1-14, 2018
252018
A methodology for energy key performance indicators analysis
P Faria, F Lezama, Z Vale, M Khorram
Energy Informatics 4 (1), 6, 2021
162021
Demand response implementation in an optimization based SCADA model under real-time pricing schemes
M Khorram, P Faria, O Abrishambaf, Z Vale
International Symposium on Distributed Computing and Artificial Intelligence …, 2018
162018
Lighting consumption optimization using fish school search algorithm
P Faria, Â Pinto, Z Vale, M Khorram, FB de Lima Neto, T Pinto
2017 IEEE Symposium Series on Computational Intelligence (SSCI), 1-5, 2017
142017
Consumption optimization in an office building considering flexible loads and user comfort
M Khorram, P Faria, O Abrishambaf, Z Vale
Sensors 20 (3), 593, 2020
102020
Lighting consumption optimization in an office building for demand response participation
M Khorram, P Faria, O Abrishambaf, Z Vale
2018 Clemson University Power Systems Conference (PSC), 1-5, 2018
102018
Optimizing lighting in an office for demand response participation considering user preferences
M Khorram, P Faria, Z Vale
2019 International Conference on Smart Energy Systems and Technologies (SEST …, 2019
92019
Optimization-based home energy management system under different electricity pricing schemes
M Khorram, P Faria, Z Vale
2018 IEEE 16th International Conference on Industrial Informatics (INDIN …, 2018
92018
Sequential tasks shifting for participation in demand response programs
M Khorram, P Faria, Z Vale, C Ramos
Energies 13 (18), 4879, 2020
82020
Lighting consumption optimization in a SCADA model of office building considering user comfort level
M Khorram, P Faria, Z Vale
International Symposium on Distributed Computing and Artificial Intelligence …, 2019
82019
Air conditioner consumption optimization in an office building considering user comfort
M Khorram, P Faria, O Abrishambaf, Z Vale
Energy Reports 6, 120-126, 2020
72020
Consumption Optimization of an Office Building using Different Approaches
M Khorram, P Faria, O Abrishambaf, Z Vale
2018 IEEE Symposium Series on Computational Intelligence (SSCI), 1634-1638, 2018
62018
Key performance indicators regarding user comfort for building energy consumption management
M Khorram, P Faria, O Abrishambaf, Z Vale
Energy Reports 6, 87-92, 2020
52020
Energy consumption management in buildings in the context of voluntary and mandatory demand response programs in smart grids
M Khorram, M Zheiry, P Faria, Z Vale
2020 IEEE PES Innovative Smart Grid Technologies Europe (ISGT-Europe), 275-279, 2020
52020
CO2 Concentration Forecasting in an Office Using Artificial Neural Network
M Khorram, P Faria, O Abrishambaf, Z Vale, J Soares
2019 20th International Conference on Intelligent System Application to …, 2019
42019
Load Shifting Implementation in a Laundry Room under Demand Response Program
M Khorram, P Faria, Z Vale
2020 IEEE International Conference on Environment and Electrical Engineering …, 2020
22020
Air Conditioning Consumption Optimization Based on CO2 Concentration Level
M Khorram, M Zheiry, P Faria, Z Vale
2019 20th International Conference on Intelligent System Application to …, 2019
22019
Economic Impact of an Optimization-Based SCADA Model for an Office Building
M Khorram, P Faria, O Abrishambaf, Z Vale
Hybrid Intelligent Systems: 18th International Conference on Hybrid …, 2020
12020
Load Forecasting in an Office Building with Different Data Structure and Learning Parameters. Forecasting 2021, 3, 242–255
D Ramos, M Khorram, P Faria, Z Vale
Feature Papers of Forecasting 2021, 139, 2021
2021
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