Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Amin Shokri Gazafroudi is active.

Publication


Featured researches published by Amin Shokri Gazafroudi.


congress on evolutionary computation | 2017

Organization-based Multi-Agent structure of the Smart Home Electricity System

Amin Shokri Gazafroudi; Tiago Pinto; Francisco Prieto-Castrillo; Javier Prieto; Juan M. Corchado; Aria Jozi; Zita Vale; Ganesh Kumar Venayagamoorthy

This paper proposes a Building Energy Management System (BEMS) as part of an organization-based Multi-Agent system that models the Smart Home Electricity System (MASHES). The proposed BEMS consists of an Energy Management System (EMS) and a Prediction Engine (PE). The considered Smart Home Electricity System (SHES) consists of different agents, each with different tasks in the system. In this context, smart homes are able to connect to the power grid to sell/buy electrical energy to/from the Local Electricity Market (LEM), and manage electrical energy inside of the smart home. Moreover, a Modified Stochastic Predicted Bands (MSPB) interval optimization method is used to model the uncertainty in the Building Energy Management (BEM) problem. A demand response program (DRP) based on time of use (TOU) rate is also used. The performance of the proposed BEMS is evaluated using a JADE implementation of the proposed organization-based MASHES.


Archive | 2018

Decentralized Control of DR Using a Multi-agent Method

Soroush Najafi; Saber Talari; Amin Shokri Gazafroudi; Miadreza Shafie-khah; Juan M. Corchado; João P. S. Catalão

Demand response (DR) is one of the most cost-effective elements of residential and small industrial building for the purpose of reducing the cost of energy. Today with broadening of the smart grid, electricity market and especially smart home, using DR can reduce cost and even make profits for consumers. On the other hand, utilizing centralized controls and have bidirectional communications Bi-directional communication between DR aggregators and consumers make many problems such as scalability and privacy violation. In this chapter, we propose a multi-agent method based on a Q-learning algorithm Q-learning algorithm for decentralized control of DR. Q-learning is a model-free reinforcement learning Reinforcement learning technique and a simple way for agents to learn how to act optimally in controlled Markovian domains. With this method, each consumer adapts its bidding and buying strategy over time according to the market outcomes. We consider energy supply for consumers such as small-scale renewable energy generators. We compare the result of the proposed method with a centralized aggregator-based approach that shows the effectiveness of the proposed decentralized DR market Decentralized DR market.


practical applications of agents and multi agent systems | 2017

Organization-Based Multi-agent System of Local Electricity Market: Bottom-Up Approach

Amin Shokri Gazafroudi; Francisco Prieto-Castrillo; Tiago Pinto; Juan M. Corchado

This work proposes a organization-based Multi-Agent System that models Local Electricity Market (MASLEM). A bottom-up approach is implemented to manage energy in this work. In this context, agents are able to connect to each other and the power grid to transact electrical energy, and manage their inside electrical energy independently. A Demand Response Program (DRP) based on Indirect Load Control (ILC) method is also used. The performance of our work is evaluated through an Agent Based Modeling (ABM) implementation.


international symposium on ambient intelligence | 2017

A Review of Multi-agent Based Energy Management Systems

Amin Shokri Gazafroudi; Juan Francisco de Paz; Francisco Prieto-Castrillo; Gabriel Villarrubia; Saber Talari; Miadreza Shafie-khah; João P. S. Catalão

This paper proposes a review of Energy Management Systems (EMSs) based on Multi-Agent Systems (MASs). Also, goal, scale, strategy and software are discussed as different characteristics of the EMSs. Then, multi agent-based structure of the EMSs is described. Finally, challenges and future discussions related to the EMSs are presented in this paper.


Complexity | 2018

An Ising Spin-Based Model to Explore Efficient Flexibility in Distributed Power Systems

Francisco Prieto-Castrillo; Amin Shokri Gazafroudi; Javier Prieto; Juan M. Corchado

This paper analyses customers’ demand flexibility in a local power trading scenario through an Ising spin-based model. We look at quantitative information on the two-way relationships between power exchanges and spin dynamics. To this end, a modified version of the Metropolis-Hastings algorithm was implemented, including a gradient descent through the constraint surface. This allowed us to analyse the system on a large scale (considering the cumulated benefit of all the actors involved) and also from the perspective of total aggregation. In a maximum flexibility scenario, the total aggregation profit increases with the number of aggregators. We also investigate numerically the effect of aggregator boundaries on the spin dynamics.


practical applications of agents and multi agent systems | 2017

Economic Evaluation of Predictive Dispatch Model in MAS-Based Smart Home

Amin Shokri Gazafroudi; Francisco Prieto-Castrillo; Tiago Pinto; Aria Jozi; Zita Vale

This paper proposes a Predictive Dispatch System (PDS) as part of a Multi-Agent system that models the Smart Home Electricity System (MASHES). The proposed PDS consists of a Decision-Making System (DMS) and a Prediction Engine (PE). The considered Smart Home Electricity System (SHES) consists of different agents, each with different tasks in the system. A Modified Stochastic Predicted Bands (MSPB) interval optimization method is used to model the uncertainty in the Home Energy Management (HEM) problem. Moreover, the proposed method to solve HEM problem is based on the Moving Window Algorithm (MWA). The performance of the proposed Home Energy Management System (HEMS) is evaluated using a JADE implementation of the MASHES.


2017 IEEE Conference on Control Technology and Applications (CCTA) | 2017

Mitigation of active and reactive demand response mismatches through reactive power control considering static load modeling in distribution grids

Reza Bajool; Miadreza Shafie-khah; Amin Shokri Gazafroudi; João P. S. Catalão

Demand response is known as one of the basic components of smart grids that plays an important role in shaping load curves. In most of the prior reports on applying demand response programs, reactive power and load dependency to voltage magnitude have been ignored in distribution grids. In this paper, firstly, we show that the ignorance of the mentioned phenomena can cause a mismatch between the expected value of demand response and the experimental value. This mismatch is known as the demand response mismatch (DRM), which is dependent on some parameters such as load type, load reduction percentage, and network power factor. To overcome this problem, this paper presents a reactive power control model. In addition, a mixed integer nonlinear program is proposed to find the optimal size and location of STATCOMs and the optimal transformer tap settings that minimize the DRM. In this paper, the 16-bus U.K. generic distribution system (UKGDS) is employed to prove the capability of the presented method in DRM reduction.


2017 19th International Conference on Intelligent System Application to Power Systems (ISAP) | 2017

Reserve costs allocation model for energy and reserve market simulation

Tiago Pinto; Amin Shokri Gazafroudi; Francisco Prieto-Castrillo; Gabriel Santos; F.J.G. Silva; Juan M. Corchado; Zita Vale

This paper proposes a new model to allocate reserve costs among the involved players, considering the characteristics of the several entities, and the particular circumstances at each moment. The proposed model is integrated in the Multi-Agent Simulator of Competitive Electricity Markets (MASCEM), which enables complementing the multi-agent simulation of diverse electricity market models, by including the joint simulation of energy and reserve markets. In this context, the proposed model allows allocating the payment of reserve costs that result from the reserve market. A simulation based on real data from the Iberian electricity market — MIBEL, is presented. Simulation results show the advantages of the proposed model in sharing the reserve costs fairly and accordingly to the different circumstances. This work thus contributes the study of novel market models towards the evolution of power and energy systems by adapting current models to the new paradigm of high penetration of renewable energy generation.


Energies | 2017

Energy Flexibility Management Based on Predictive Dispatch Model of Domestic Energy Management System

Amin Shokri Gazafroudi; Francisco Prieto-Castrillo; Tiago Pinto; Javier Prieto; Juan M. Corchado; Javier Bajo


international conference on control decision and information technologies | 2017

Residential energy management using a novel interval optimization method

Amin Shokri Gazafroudi; Francisco Prieto-Castrillo; Juan M. Corchado

Collaboration


Dive into the Amin Shokri Gazafroudi's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Tiago Pinto

University of Salamanca

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Miadreza Shafie-khah

University of Beira Interior

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Saber Talari

University of Beira Interior

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Javier Bajo

Technical University of Madrid

View shared research outputs
Researchain Logo
Decentralizing Knowledge