the instrument of negotiating on the low sensor level.
In (Nguyen and Flueck, 2015), the idea of an agent-
based distributed power flow solver for unbalanced
radial distribution systems based on MAS is
presented. Since the 2000's researchers have tried to
use intelligent agents because of three main key
features: autonomy, local view, and decentralization.
However, most methods use agents to model lines,
switching devices, voltage regulators, transformers,
distributed energy storage systems, and batteries (for
example to solve the backward/forward sweep
technique problem to solve the power flow
iteratively) (Boudaoud, Labiod, Boutaba, Guessoum,
2000).
MAS is widely used in Smart Homes (Li,
Logenthiran, Woo, 2015) to optimize the energy
consumption on a local house/flat level. Agents help
to plan the optimal solution of energy consumption,
but they do not provide a real-time response to all
unpredictable events. They are used to achieve high
comfort level, energy efficiency, and energy price
through negotiation between devices.
In (Omarov, Altayeva, 2018) the methodology of
MAS is used in intelligent control systems that covers
all the monitored zones of a building and, if
necessary, provides the greatest possible overall
comfort in the building while reducing the required
electric power.
A more comprehensive simulation approach that
accounts for the MAS-related protocols as described in
the FIPA specification is presented in (Le, Bui, Ngo,
2018). It shows promising results for system evaluation
under various settings and design trade-offs.
Agents communication is performed to transfer
neighbouring information between subsystems. It is
shown the possibility of parallel work in different
parts of the distributed network (Shum, 2106).
Agent approach is fundamentally based on
negotiation to find the optimal (or close to the optimal
solution). For this purpose, Combinatorial Auctions
can also be used. The proposed combinatorial
auctions algorithms showed an advantage over a more
rigid scheduling algorithm (Brena, Handlin, Angulo,
2015). This approach can predict and plan but not
manage the system in real-time.
One of the main advantages of MAS is the ability
to work in decentralized systems for electricity
provision (Svítek, Skobelev, Kozhevnikov 2020). It
Is Used Extensively in Research Projects (Morte,
2016) To Develop Distributed Control Systems
Comprised of a Network of Communicating Units.
The Task To Be Solved Is The Issue of Complexity
That Scales Up Exponentially, Limiting The
Development of Smart Grid Technologies.
Decentralization of The Network With The Help
of Multiagent Systems for Electric Vehicles
Infrastructure Is Described in (Jordán, Palanca, Del
Val, Julian, Botti, 2018). Agents Collect, Evaluate
and Manage Data from Elements To Create an
Optimal Cooperation Algorithm.
in (Loni, Parand, 2017) The Game Theory for The
Smart Grid Topic Is Implemented. The Game Theory
Models The Behaviour of Independent and Rational
Agents To Maximize The Profit. Authors Survey
Several Game Theory-based Applications, Incredibly
Cooperative Game Theory To Solve Relevant
Problems in Micro Grids.
a Tremendous Analysis of The MAS Application
in SG Is Done in (Mahela Et Al., 2020).
Comprehensive Overview of Multi-Agent Systems
for Controlling Smart Grids. CSEE Journal of Power
and Energy Systems.). Completed The Review of
General Concepts of Smart Grids and MAS,
Technologies and Standards, Intelligent Agents in SG
and Commercial Projects The Authors See The
Future of MAS in Coordinated Control Replacing
SCADA Systems.
based on The Topic Domain Review, We Can
Define The Trend for MAS Coordinated Control of
The SG and Lack Decision-Making Solutions That
Can Be Applied for Limited Tasks With Severe
Constraints. on The Other Hand, It Is Clear That The
Multiagent Approach Can Be Successfully Used for
Distributed Problem Solving in Decentralized SG
Architectures.
in Our Project, We Extend The SG Concept from
Electricity To All Types of Resources (Electricity,
Gas, Heat). for Citizens It Is a Part of Utility
Provision of The Smart City Concept in General
(Přibyl, Horák, 2015).
The State-of-The-Art Review Highlights The
Main Advantages of MAS. Multiagent Resource
Planning System for Utility Provision Can Plan and
Optimize Utility Provision as a Multi-Criteria Task,
Moving from Determining The Optimum Under
given Constraints (Reliability, Quality,
Environmental Friendliness) To Finding The Optimal
Level Ratio of These Properties.
3 MULTIAGENT SYSTEM FOR
UTILITY PROVISION
3.1 System Functions
Base on the state of the art and market analysis the
consumer-friendly MAS with the following functions
was developed. Main system functions: