EP2836880A1 - Verfahren und system zur steuerung einer energiemanagementanlage - Google Patents

Verfahren und system zur steuerung einer energiemanagementanlage

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Publication number
EP2836880A1
EP2836880A1 EP13714981.1A EP13714981A EP2836880A1 EP 2836880 A1 EP2836880 A1 EP 2836880A1 EP 13714981 A EP13714981 A EP 13714981A EP 2836880 A1 EP2836880 A1 EP 2836880A1
Authority
EP
European Patent Office
Prior art keywords
agents
energy
agent
installation
elements
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Withdrawn
Application number
EP13714981.1A
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English (en)
French (fr)
Inventor
Benoît LACROIX
David Mercier
Cédric Paulus
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Commissariat a lEnergie Atomique et aux Energies Alternatives CEA
Original Assignee
Commissariat a lEnergie Atomique et aux Energies Alternatives CEA
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Publication date
Application filed by Commissariat a lEnergie Atomique et aux Energies Alternatives CEA filed Critical Commissariat a lEnergie Atomique et aux Energies Alternatives CEA
Publication of EP2836880A1 publication Critical patent/EP2836880A1/de
Withdrawn legal-status Critical Current

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Classifications

    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05FSYSTEMS FOR REGULATING ELECTRIC OR MAGNETIC VARIABLES
    • G05F1/00Automatic systems in which deviations of an electric quantity from one or more predetermined values are detected at the output of the system and fed back to a device within the system to restore the detected quantity to its predetermined value or values, i.e. retroactive systems
    • G05F1/66Regulating electric power
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B13/00Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion
    • G05B13/02Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric
    • G05B13/04Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators
    • G05B13/042Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators in which a parameter or coefficient is automatically adjusted to optimise the performance
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B13/00Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion
    • G05B13/02Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric
    • G05B13/04Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators
    • G05B13/048Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators using a predictor
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B19/00Programme-control systems
    • G05B19/02Programme-control systems electric
    • G05B19/418Total factory control, i.e. centrally controlling a plurality of machines, e.g. direct or distributed numerical control [DNC], flexible manufacturing systems [FMS], integrated manufacturing systems [IMS] or computer integrated manufacturing [CIM]
    • G05B19/41845Total factory control, i.e. centrally controlling a plurality of machines, e.g. direct or distributed numerical control [DNC], flexible manufacturing systems [FMS], integrated manufacturing systems [IMS] or computer integrated manufacturing [CIM] characterised by system universality, reconfigurability, modularity
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02PCLIMATE CHANGE MITIGATION TECHNOLOGIES IN THE PRODUCTION OR PROCESSING OF GOODS
    • Y02P80/00Climate change mitigation technologies for sector-wide applications
    • Y02P80/10Efficient use of energy, e.g. using compressed air or pressurized fluid as energy carrier
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02PCLIMATE CHANGE MITIGATION TECHNOLOGIES IN THE PRODUCTION OR PROCESSING OF GOODS
    • Y02P90/00Enabling technologies with a potential contribution to greenhouse gas [GHG] emissions mitigation
    • Y02P90/02Total factory control, e.g. smart factories, flexible manufacturing systems [FMS] or integrated manufacturing systems [IMS]

Definitions

  • the invention relates to a method and a control system of an energy management installation.
  • a targeted application relates to the field of energy management of a building or several buildings, or heat networks, including the control of thermal systems for the building (s).
  • document EP-A1 -1635286 proposes a system for controlling energy elements, described in the form of consumer agents and energy generating agents, connected through a network enabling them to communicate. These agents are able to negotiate to determine the amount of energy that a producing agent must send to a consumer agent. Through an auction system, consumers are allocated a certain amount of energy. The offers can in particular take into account the cost of electricity. But the negotiations between the agents only concern a quantity of energy. It can not therefore be used to optimize consumption a system in which some of the producing elements have a cost that is not directly related to the quantity produced. In addition, it is not intended to optimize according to different criteria.
  • this approach has been designed to respond to issues specific to electrical energy, and it can not meet the specificities introduced when certain producers produce and deliver thermal energy, for example via aeraulic vectors and / or or hydraulic.
  • thermal energy the production of certain producers is dependent on the distribution means used: for example, the efficiency of a heat pump depends on the flow of air passing through it, a flow of air that is itself the carrier of energy.
  • carriers can verify the existence and availability of a link between a consumer and an energy producer. However, they do not take into account the distribution costs associated with the transportation of energy. These costs may be, for example, losses, or the operating cost of the actuators of the installation, such as ventilators in a Vogellic or circulators in hydraulics.
  • WO2008 / 014562 a distributed energy management system architecture is proposed. It relies on different agents representing energy resources, who can communicate with each other. A specific agent, called stockbroker, provides control of the system. However, this approach is dedicated to the use of electrical energy, and does not allow to integrate the physical constraints of thermal energy distribution. It is also not suitable for managing building energy systems, which require the representation of complex and interdependent resources. Many scientific publications are also interested in multi-agent approaches.
  • a first category of approaches is concerned with the energy management of buildings.
  • Abras et al "Advantages of MAS for the resolution of a power management problem in smart homes” proposes a system of energy control in the habitat, from a multi-agent modeling based on a mechanism to two levels: one layer provides responsive control of the system, and one anticipative layer performs longer-term planning.
  • the approach is restricted to the control of electrical systems.
  • a second category of approaches focuses on applications involving non-electrical distribution vectors, such as hydraulics.
  • non-electrical distribution vectors such as hydraulics.
  • a multi-agent modeling is used to optimize the operation of heat networks, the aim being to minimize the energy consumption of a water network. hot water providing heating and hot water production functions.
  • the system is described as producer agents, redistribution agents and consumer agents.
  • the redistribution agents have the role of recovering the consumption of their customers as well as their forecasts, and to provide this information to the agent producer, who controls the demand.
  • the approach takes into account the constraints specific to hydraulic networks, such as the production time and the inertia of the systems.
  • Document GB2448896 proposes a building management system based on a set of sensors for estimating the thermal characteristics of the energy converters, the thermal properties of the building, its occupancy profile, as well as a forecast of the demand for energy. energy. With these elements, a schedule is prepared, using a centralized optimization method, and a reactive correction is added in case of observed deviation.
  • the proposed model takes into account some of the new sources of energy production, such as photovoltaic solar panels and heat pumps. Nevertheless, the automatic load recognition system used for the estimation does not allow to take into account energy sources such as solar thermal panels. Moreover, the approach does not take into account the consumption of distribution auxiliaries. Finally, the optimization process used is based solely on the minimization of heat losses and does not allow to take into account different optimization criteria.
  • the document WO201 1/072332 proposes a method and a system for controlling the ventilation, heating and cooling of buildings.
  • the method is based on a thermal model of the building, and realizes an optimization based on the price of electricity, the weather forecasts and the satisfaction of the users.
  • the proposed method relies solely on a simplified model of the building, which does not integrate the specificities of the different energy sources and does not take into account the distribution auxiliaries.
  • the proposed optimization method does not optimize according to different criteria and is not extensible to the consideration of domestic hot water production.
  • US7783390 discloses methods and systems for optimizing demand control and power generation. The principle used is to shift the consumption of appliances to the periods during which energy is the least expensive and to supply energy to the grid when the price of energy is high.
  • the approach is focused solely on electrical resources and does not consider the thermal of the building. Object of the invention
  • the aim of the present invention is to propose a control solution for an installation that manages energy and overcomes the disadvantages listed above.
  • an object of the invention is to provide a solution that allows optimization of energy management according to different criteria of energy consumption (in particular the operating cost and the environmental cost).
  • Another object of the invention is to provide a solution that takes into account the specificities of new energy sources (solar thermal panels, heat pumps, etc.).
  • Another object of the invention is to provide a solution that takes into account the specificities of the energy transport vectors (in particular the hydraulic and aeraulic vectors) and the costs associated with them.
  • Another object of the invention is to provide a solution that increases the reusability of the developed systems.
  • a method for controlling an energy management installation comprises:
  • a modeling phase of the installation comprising: a step of developing a multi-agent control system including at least consumer agents, distributors and energy producers representative at least of an operation associated with elements of the installation respectively consumers, distributors and producers of energy, each of the agents integrating a model implemented by a calculator,
  • the models of energy distributors taking into account characteristics relating to the distributor elements of the installation, including distribution constraints and / or energy consumption and / or the financial and / or environmental costs of distribution and / or influence of the operation of the distributor elements on the operation of the producing elements,
  • a regulation phase of the installation comprising:
  • an optimization step using the integrated models of the control system agents so as to optimize the way of producing the energy by the producing agents, to distribute it by the distributor agents and to allocate it to the consumer agents, according to optimization criteria based on the energy consumption of the installation and / or on at least one other criterion such as the operating cost and / or the environmental cost of the installation and / or weather forecasts and / or or comfort parameters and / or observed and / or expected behavior of the users of the installation, a step of controlling the actuator elements of the installation based on the results of the optimization step from the implementation of integrated models to agents.
  • a control system of an energy management installation may comprise software and / or hardware elements that implement the control method.
  • it can be a management system that is thermal systems of a building, the elements for example, heating and / or ventilation and / or air conditioning and / or hot water production elements, either of a heat network or of an installation coupling thermal energy and electrical energy.
  • a third aspect of the invention relates to a computer-readable data recording medium, on which is recorded a computer program comprising computer program code means for implementing the phases and / or steps of the control method. .
  • a fourth aspect of the invention relates to a computer program comprising computer program code means adapted to the realization of the phases and / or steps of the control method, when the program is executed on a computer.
  • FIG. 1 is a schematic view of the description of the installation by an agent-based control system
  • FIG. 2 is a flowchart representing the phases and the successive steps of an exemplary control method according to the invention
  • FIG. 3 is a simplified diagram of an example of an installation on which the solution according to the invention could be applied
  • FIG. 4 is a schematic view of the modeling methodology of the installation of FIG. 3 in the form of a multi-agent control system
  • FIG. 5 is a graphical representation of an example of an algorithm implementing the main control system control loop (case of a centralized execution) applied to the case of FIGS. 3 and 4,
  • FIG. 6 is a graphical representation of the various steps of the optimization process applied to the case of FIGS. 3 and 4;
  • FIG. 7 is a modeling of the installation of FIG. 3 in the form of a multi-control system; agents
  • FIG. 8 represents the observed values of the temperature sensors of the installation over a period of 24 hours
  • FIG. 9 represents the commands of the various actuator elements of the installation calculated by the control system over the 24-hour period.
  • a control solution that is to say a control method and a control system, of a physical management installation of the energy.
  • a particular nonlimiting application targeted by the invention relates to the field of energy management of a building, including the control of elements or thermal systems for the building.
  • the physical installation mainly manages thermal energy dedicated to the building from various sources of energy.
  • the principle of the invention can be applied to any energy management installation, such as for example electrical energy or even a heat network installation, including several buildings.
  • the optional steps are illustrated by a dashed box.
  • the solution is to design and implement a control system to control the physical elements (actuators), ie the equipment of the installation and the distribution auxiliaries, which provide energy functions (for example thermal functions in building, such as heating, air conditioning, ventilation or domestic hot water production).
  • actuators ie the equipment of the installation and the distribution auxiliaries, which provide energy functions (for example thermal functions in building, such as heating, air conditioning, ventilation or domestic hot water production).
  • control system thus designed is used to perform an optimization of the energy management of the installation according to various criteria, selected by the user and based for example on the energy consumption of the installation and / or on at least another criterion such as the operating cost and / or the environmental cost of the installation.
  • One of the objectives of the control system is to ensure the management of the energy elements of the installation (for example the thermal elements of the building) while respecting the specifications (for example the comfort of the inhabitants of the building). In current approaches, this management of the energy elements of the installation is most often optimized according to the sole criterion formed by the total energy consumption of the installation.
  • control system aims to be configured for be able to achieve an optimization for example on an environmental or financial cost, according to the wishes of the user.
  • the energy (for example of a thermal nature) is transported by specific vectors, for example hydraulic or a somehowlic, at the distributor elements of the installation. This is the case for example of the energy produced by solar thermal panels.
  • These transport vectors imply the existence of physical connections between elements of the installation, which induce constraints during the optimization.
  • auxiliaries transporting thermal energy (for example, fans or circulators) account for a growing share of energy consumption, particularly in buildings with low energy consumption or positive energy (16%). on average in "BBC" buildings for "low energy buildings” residential or tertiary, and up to 30% in some cases). It is therefore necessary to explicitly integrate these constraints and these auxiliaries in the optimization process of the installation to improve its management.
  • the solution plans to model the installation with an agent-based virtual control system, explicitly integrating modeling of the distribution network.
  • the control system integrates in this modeling on the one hand a model for calculating the distribution costs associated with the transport of energy (these costs can be for example losses, or the operating cost of the actuators, such as fans or circulators) and on the other hand a process that makes it possible to optimize the operation of production with regard to distribution.
  • a physical energy management facility consists of a set of elements that consume, produce or distribute energy. All these elements (also called “devices”) are physically connected to each other by a power distribution network using an energy transport vector such as for example of a Vogellic or hydraulic nature.
  • the installation also comprises a set of sensor elements, and a set of actuator elements.
  • the objective is to design such a control system and then determine, at each time step of a subsequent control phase P2, the state that will be assigned to each of the actuator elements of the physical installation.
  • the proposed method is based on a first modeling phase P1, in which the installation physical is described as a multi-agent control system. Once this description has been completed, the proposed control system automatically regulates the physical installation according to the method described in phase P2.
  • the phase P1 of modeling of the installation comprises a step E1 of developing a multi-agent control system (detailed in FIG. 1) including at least representative consumer, distributor and energy producer agents. at least one operation associated with elements of the installation respectively consumers, distributors and producers of energy.
  • Each of the agents integrates a model implemented by a calculator.
  • the models of energy distributing agents take into account characteristics relating to the distributor elements of the installation, including distribution constraints and / or energy consumption and / or the financial and / or environmental costs of distribution and / or the influence of the operation of the distributor elements on the operation of the producing elements.
  • the physical installation is first modeled as a multi-agent control system 100 composed of different agents.
  • the control system 100 firstly contains software representations of the sensor elements 1 10 (physical) and actuator elements 120 of the physical installation (here associated with a building 130).
  • the software representations are intended to ensure the link between the control (or control) of the software type vis-à-vis the hardware elements 1 10, 120.
  • the control system 100 also contains a representation in the form of agents of the devices, the distribution network, and complementary elements in relation to the system. Different types of agents are distinguished according to their function:
  • consumer agent 150 an element of the installation whose function is to consume energy (for example to ensure the comfort of the building occupant by using thermal energy produced and distributed) is modeled in the control-system by a consumer agent 150 ("consumer i", i ranging from 1 to m),
  • distributor agent 160 an element of the installation whose function is to distribute energy between the producing elements and the consumer elements is modeled in the control system by a distributor agent 160 ("distributor", i varying from 1 to k) .
  • a distributor agent 160 thus modeled a subpart of the distribution network, most often associated with one or more actuators of the installation. It can be considered that each distribution agent 160 of the control system is associated with at least one other "provider" type agent and at least one other "client” type agent.
  • an element of the installation or outside the installation whose function is to provide the control system 100 information ("information i", i ranging from 1 to p) complementary to the real environment of the physical installation is modeled in the control system 100 command by an environmental agent 170.
  • phase P2 of regulating the installation comprises:
  • an optimization step E10 using the integrated models of the control system agents so as to optimize the way of producing the energy by the producing agents, to distribute it by the distributor agents and to allocate it to the consumer agents, according to optimization criteria based on the energy consumption of the installation and / or on at least one other parameter such as the operating cost and / or the environmental cost of the installation and / or the weather forecast and / or or comfort parameters and / or the behavior observed and / or expected of the users of the installation, a step E17, 18 of control of the actuator elements of the installation, the manner of ordering them being based on the results of the optimization step from the implementation of integrated models to the control-command system agents.
  • the notion of "behavior" in the previous paragraph incorporates all the useful behavioral characteristics but also the aspects related to the presence or the absence of the users, their habits of heating, refreshing and consumption of domestic hot water ...
  • Each agent of the control system is thus associated with an internal model that differs according to the type of agent.
  • the internal model associated with each distributor agent of the multi-agent control system calculates a distribution cost due to the energy transfer by the distributor agent associated with a given energy requirement and / or the resources needed for the distribution agent. distributor agent, associated with this energy need.
  • the internal model associated with each producing agent of the multi-agent control system calculates the necessary energy resources that the producing agent can provide to the distributing agents and / or a need in energy to be supplied to the producing agent to produce these necessary resources and / or a cost of producing the necessary resources.
  • the internal model associated with each consumer agent of the multi-agent control system calculates energy needs to be provided to the consumer agent and / or satisfaction associated with resources received by the consumer agent.
  • These internal models can for example be energy models, which perform a balance on a device or sub-part of the distribution network of the installation. They can also be models characterizing the operation of a device according to external parameters. Finally, they can be prediction models for estimating the value or future state of an element of the installation. Existing approaches are based solely on a thermal model of the building or on the estimation of the contribution of different devices. In contrast to that in the solution according to the invention, the integration of an operating model of each of the devices (producing elements and / or distributors and / or consumers) and of models representing the distribution network makes it possible to take account of new elements, such as the contribution of solar thermal panels, the specificities of operation of heat pumps, or the influence of the energy distribution methods produced, on the production of this energy.
  • the development step E1 may optionally include a step E2 for providing the environmental agents used during the optimization step E10.
  • These environmental agents belong to the multi-agent control system and are representative of parameters external to the facility, such as the financial cost associated with the energy from which the generating elements of the facility generate energy and / or or the operating cost and / or environmental cost and / or weather forecasts and / or comfort parameters and / or observed and / or expected behavior of the users of the facility.
  • the phase P1 for modeling the physical installation by the multi-agent control system 100 also comprises a step E3 for setting up software representations 190, 195 associated with sensor elements 1 10 and / or actuator elements 120 of the installation.
  • the software representation 190 associated with each sensor element 1 10 of the installation and the software representation 195 associated with each actuator element 120 of the installation is associated on the one hand with a history and a forecast whose values are observable by the agents of the control system 100, and secondly to a single agent of the control system 100 responsible for updating this software representation.
  • the agent with which the software representation 190 associated with a given sensor element 1 10 is associated contains a prediction model implemented by a computer configured to perform a prediction of the software representations 190 of the sensor elements 1 10 associated therewith.
  • the agent associated with the software representation 195 of a given actuator element 120 contains a planning model implemented by a computer configured so as to perform a planning of the software representations 195 of the actuator elements 120 associated therewith. These models can also be contained directly in the software representation of the sensors 190 or the actuators 195.
  • control phase P2 of the physical installation can be provided in the manner described below with reference to the steps E4 to E18 ( Figure 2).
  • This description corresponds to a centralized implementation of the approach, that is to say in the case where all the agents would be executed on the same computer.
  • the approach is also quite applicable in the case of a decentralized implementation, that is to say in the case where one or more agents would be executed on different computers (an agent representing a device can for example be deported on a calculator on the device itself).
  • the regulation phase P2 comprises a step E4 of receiving by the multi-agent control system 100 values from the sensor elements of the installation and a step E5 initialization of the multi-agent control system 100 from the values received in the receiving step E4.
  • the initialization step E5 comprises a step E6 of updating the control system 100 during which each of the agents of the control system 100 updates the forecast of the software representations 190 associated with the sensor elements 1 associated with this agent, from the values received at the reception step E4 and from the implementation of the prediction model by a calculator.
  • the instantaneous values of the sensor software representations 190 associated with the sensor elements 1 10 are updated with the values observed in the physical installation.
  • all the agents of the control system 100 update the prediction of each software representation of the sensors 190 for which they are responsible.
  • the initialization step E5 also comprises a determination step E7:
  • Steps E6 and E7 can be performed simultaneously or sequentially, in any order between them.
  • the operation can therefore be the following: an agent, when it receives the observed value of a sensor element 1 10, updates the instantaneous value of the software representation 190 associated with this sensor element 1 10. It then immediately sets to energy needs forecast (if it is a consumer agent 150) or its energy resource forecast (if it is a producer agent 140), without waiting for all the values of 10 sensors were received by all agents of the system. Steps E6 and E7 are then combined.
  • step E5 can advantageously be implemented in this way. This second possibility offers the advantage of greater flexibility to the system. In other words, based on their internal model during the initialization step E5, the consumer agents 150 of the control system 100 then build their energy demand forecast to meet their objective function, and the production agents 140 of the control system 100 Control System 100 build their resource forecast and associated costs.
  • the regulation phase P2 can comprise a step E8 of selection of the optimization criteria then used during the following stages of the control phase P2 (in particular during the optimization step E10) and then a step E9 of acquisition by the control system of the optimization criteria selected in the selection step E8.
  • these steps E8 and E9 are performed during the modeling phase P1, or preconfigured in the system, or entered at another time (before step E5, for example).
  • the distributed hierarchical optimization step E10 performed following the initialization step E5 comprises at least one step E1 1 of collecting, for each of the control system distribution agents, forecasts of the needs of each of its "client” agents. In energy, based on predictions of the energy needs of the consumer agents, and resource forecasts of each of its agents "suppliers" in energy, from forecasts of resources of producing agents.
  • each control system 100 distributor agent is associated with at least one other "provider” type agent and at least one other "client” type agent, these "supplier” and “client” agents being producer agents or distributor agents or consumer agents depending on the location on the distribution network, which allows the implementation of steps E1 1 collection. More specifically, the steps E1 1 for collecting forecasts of energy requirements of the "client” agents and of the energy resource forecasts of the "supplier” agents are advantageously repeated alternately, by successive iterations at the level of each distributing agent. From the foregoing, it follows that the distributed hierarchical optimization step E10, based on the control system distributing agents and operating iteratively, first makes it possible to trace and consolidate the needs of the consumer agents towards the agents.
  • the optimization step E10 comprises an optional step E12 of adjusting the resource forecasts of the "supplier” agents and the forecasts of the energy requirements of the "client” agents during which, starting from forecasts of resources available at the level of the producing agents, the distributing agents optimize with their agents "suppliers” resources to meet the energy needs of their agents "customers”.
  • the method comprises a mandatory step E13 during which the distributors select the resources according to the optimization criteria acquired in step E9, taking into account any adjustments of step E12.
  • the optimization step E10 necessarily comprises an allocation step E14 of assigning (or assigning) the "client” agents the resources selected in step E13 and an optional step E15 of verifying the satisfaction of the consumer agents and / or "client” agents receiving the resources assigned to the allocation step E14.
  • the steps E12, E13, E14 and E15 can be iterated (either all or only some of them) until the satisfaction of the consumer agents and / or the agents. customers "is satisfied.
  • the optimization step E10 finally comprises an obligatory step E16 of setting up a resource planning to be received and / or produced by the producing, distributing and consuming agents, each planning being established from the resources assigned to the project. step E14 of allocation and corresponding to a state of the actuator elements 120 of the physical installation 200.
  • the plans made in step E16 correspond to a fixed state of all the software representations of the actuators 195 associated with the actuator elements 120 of the installation 200 for each future time step, calculated by virtue of their internal model. At the end of the time step, this state is assigned to each of the software representations 195 associated with the actuator elements 120 by the agent responsible for it.
  • the control phase P2 of the installation may comprise, to concretely carry out the control of the actuator elements of the installation according to the results and forecasts of step E10, d.
  • a step E17 for planning the control of the actuator elements of the physical installation (this command can be carried out in any suitable manner)
  • a control step itself from the control planning resulting from step E17 for example in the form of a step E18, described below, issuing control commands by the control system to the actuator elements.
  • the state at the next time step of the software representations 195 associated with the actuator elements 120 is assigned to the physical actuators 120 of the installation, which realizes the control of the system.
  • the method may comprise a step E18 of sending control commands by the control system to the actuator elements, these control commands being configured so as to place each of the actuator elements in the state corresponding to the planning previously implemented in step E16.
  • the invention also relates to a control system of an energy management installation, comprising software and / or hardware elements that implement the control method described above.
  • the control system is a system for managing the thermal systems of the building, the consumer elements being chosen, for example, from heating and / or ventilation elements and / or from air conditioning and / or hot water production.
  • the installation may also concern a heat network or a system coupling thermal and electrical energy.
  • the invention also relates, on the one hand, to a computer-readable data recording medium on which is recorded a computer program comprising computer program code means for implementing the phases and / or steps of the method of control, and secondly a computer program comprising a computer program code means adapted to the realization of the phases and / or steps of the control method when the program is executed on a computer.
  • the proposed approach makes it possible to optimize according to various criteria, such as, for example, energy consumption and / or operating cost and / or environmental cost (for example carbon trace).
  • various criteria such as, for example, energy consumption and / or operating cost and / or environmental cost (for example carbon trace).
  • the internal models of producer and distributor agents allow them to calculate the energy needs associated with their function.
  • environmental agents such as forecasts of electricity cost and environmental cost
  • each agent can calculate his own costs.
  • the control system can then use this information during the optimization step E10 and privilege the chosen optimization criterion.
  • environmental agents make the approach highly scalable. For example, the dynamic variation of electricity prices will soon appear following the large-scale deployment of smart meters. This variation can easily be integrated through the environmental agents, without modifying the approach or the operation of the control system.
  • the approach allows to take into account the specificities of new sources of energy. Indeed, in some cases, there is a coupling between the devices producing thermal energy and the manner in which this energy is distributed. This is the case, for example, for air / water or air / air heat pumps, the efficiency of which depends on the flow of air passing through them.
  • the solution according to the invention explicitly describes the energy distribution network, and integrates an internal model for each of the elements modeling a sub-part of this network.
  • the distributor agents can optimize their own operation in coordination with the producing agents.
  • This explicit representation of the distribution network also makes it possible to take into account the specificities related to air or hydraulic transport vectors.
  • the agents representing this network integrate in their internal model a modeling of the operation of the auxiliaries which convey the energy through the physical installation. These auxiliaries induce additional needs (because of an electrical consumption for example) and resources (due to losses in the form of heat for example).
  • the optimization process thus makes it possible to integrate these elements into the regulation of the installation.
  • each device of the installation is represented by an agent, which is an autonomous entity answering precise specifications.
  • agent which is an autonomous entity answering precise specifications.
  • the replacement of one agent by another has no influence on the operation of the control system.
  • agents representing similar entities for example, two heat pumps of different brands
  • the main application studied is the management of thermal systems for the building.
  • the solution according to the invention is particularly adapted to the context of the regulation of devices providing heating and / or cooling and / or ventilation and / or hot water production functions, these devices being often dedicated to buildings low consumption.
  • the solution according to the invention is applicable to any facility managing energy. It can take into account any type of energy production (wood or gas boilers, for example).
  • the electrical dimension for example solar photovoltaic panels and electric convectors.
  • the proposed solution can also be physically distributed between different devices, which does not restrict it to fully integrated devices or the use of a centralized controller.
  • the application framework is the management of thermal systems for the building.
  • BBC energy-efficient buildings
  • manufacturers have developed ranges of dedicated appliances or installations. These allow to provide with a single equipment several functions in the building, such as heating and / or cooling and / or ventilation and / or the production of hot water.
  • These devices described as multi-function devices, typically combine different elements such as:
  • a double flow heat exchanger allowing a heat exchange between the extracted air and the air blown, for example to preheat the fresh air entering the building using the hot air extracted from it in winter
  • a heat pump providing part of the heating requirements of the hot water tank and / or the building
  • a domestic hot water tank the heating of which can be supplemented by an electric auxiliary or solar thermal panels.
  • the heating vector of the building is generally air in order to provide a simple and compact physical installation: the heating infrastructure is indeed common to that of ventilation.
  • the installation is instrumented using different sensors, which provide information to observe its state over time.
  • control method can thus, for example, apply to the design of the regulation of such multifunction devices.
  • implementation of the control method will be described in connection with an apparatus for performing the functions of domestic hot water production and / or ventilation and / or heating and / or cooling.
  • Such an apparatus may, for example, combine, in particular with reference to FIG. 4, the following elements: a double-flow exchanger 10, performing a heat exchange between a blown flow going from a fresh air zone 1 1 to a zone air entering the building 12 and a stream extracted from a stale air zone 13 to an outgoing air zone 14 outside the building,
  • the production of hot water 19 is provided by the balloon 18 three zones.
  • the lower zone of the balloon 18 is heated by the solar thermal panels 17, the central zone of the balloon 18 is heated by the heat pump 15, and the upper zone is heated by the electric resistance element 16.
  • the heating function of the building is provided by the combination of the double-flow recuperator 10 and an exchanger 21 between the central portion of the balloon 18 and the incoming airflow.
  • the heat pump 15 thus simultaneously provides a heating function and a hot water production function.
  • the air flow through these devices is provided by unrepresented fans.
  • the physical installation is first modeled as a 100 multi-agent control system, the characteristics of which are presented in FIG. figure 4.
  • the multi-agent control system 100 has an internal representation of time and knows the time separating two time steps, which allows it to manipulate temporal notions. These two elements allow him to build forecasts over a period defined anticipation, called the forecast horizon. A parameterizable length history is also defined.
  • a set of devices 180 integrated in the control system 100 makes it possible to perform the interface between the physical system (corresponding to the physical installation) and its modeling in the form of a multi-agent control system 100, and to make complementary information available.
  • a device 180 is a structure for representing software information. This information may for example be associated with a sensor 1 10 or a physical actuator 120, a cost, or a virtual sensor.
  • a device 180 contains in particular a forecast of its values over the forecast horizon, and a history. For example, if one wishes to represent in the system 100 the instantaneous cost of the electricity coming from the network, and to associate to it a forecast on the time horizon and a history, one defines then a device 180 which makes it possible to represent these information.
  • a sensor software representation 190 is the software representation of a physical sensor 1 10.
  • An actuator software representation 195 is the software representation of a physical actuator 120. The sensor 190 and actuator software representations 195 make it possible to provide the interface between the control command and the physical installation 200.
  • this sensor element 1 10 can be associated with a sensor software representation 190 which makes it possible to represent in the system 100 multi-agents the current value of the physical sensor 1 10 and to associate a forecast and a history.
  • this actuator element 120 can be associated with an actuator software representation 195 which allows the multi-system 100 to agents to calculate an update of its state, a planning of its future states and to keep a history of its values.
  • the multi-agent control system 100 comprises four types of virtual agents: producer agents 140, consumer agents 150, distributor agents 160 and environmental agents 170.
  • a producer agent 140 is an agent whose function is to transform energy in thermal energy. It contains an internal model implemented by a computer, which allows it in particular to calculate for a given duration the thermal energy resources it can produce, and the energy consumed for this production.
  • a producer agent also contains a set of devices 180 associated with an internal model. Among these devices 180 may be sensor software representations 190 and actuator software representations 195.
  • an electrical resistance can be modeled by a generating agent 140. Its internal model can describe the heat energy supplied and the energy consumed (in this case electrical energy), for example as follows: E-produced ⁇ Consumed ⁇ P max t with Pmax the maximum power of the resistor and At the operating time.
  • the resistor may be associated with the actuator software representation 195 controlling its start-up and shutdown.
  • the internal model of this actuator software representation 195 can be based on a production planning: the resistance is active if a production is necessary and is otherwise inactive.
  • a consumer agent 150 is an agent whose function is to ensure the comfort of the occupant by using thermal energy.
  • a consumer agent 150 is associated with an objective function. Typically, this function can be a setpoint 210, possibly multiple (heating and cooling instructions in a building, for example).
  • a consumer agent 150 also contains a utility function. This can be a simple function, for example taking into account the respect or not of the objective, or an advanced function, integrating for example the notions of amplification of the discomfort over time. Utility can also be used to define a priority between different consumers of the system.
  • a consumer agent 150 also contains an internal model enabling it in particular to calculate its energy needs in order to satisfy its objective function.
  • it contains a set of devices 180 associated with an internal model. Among these devices 180 may be sensor software representations 190, but no actuator software representation 195.
  • thermal comfort can be modeled by a consumer agent 150. Its objective function can be to achieve a constant setpoint 210 at 19 degrees Celsius and its internal model can be a thermal model of the building to determine the energy needed to to reach the instruction 210, such as for example according to the following description: Enecessaire ⁇ CAP * (Tset - TNT) + UA * (3/2 * Tmt - T CO ns / 2 - T ext) * Has with AU CAP constant building characteristics.
  • a distributor agent 160 is an agent whose function is to influence the transfer of thermal energy into the building.
  • a distributing agent 160 models a sub-part of the distribution network 220 of the physical system 200: the set of distribution agents 160 makes it possible to represent the network of hydraulic or aeraulic connections between the devices 230 of the physical system 200.
  • a distribution agent 160 contains an internal model, which allows to model the constraints and the costs related to the routing of the energy. This can be network-related losses and / or the cost of running a fan to provide airflow between different appliances 230.
  • a dispensing agent 160 contains a set of "client” agents, which can be either consumer agents 150 or other distributors 160. It also contains a set of "provider” agents, which can be either producing agents 140 or other distributing agents 160.
  • a producing agent 140 can only be a "provider” agent of a single “distributor” agent, and a consumer agent 150 can only be a "client” agent of a single distributing agent 160.
  • a dispensing agent 160 can be a agent "client” or agent “provider” of any number of other distributors 160.
  • This definition leads to a hierarchical description of the control system 100.
  • a distributor agent 160 conti nt a set of devices 180 associated with an internal model. Among these devices 180 may be sensor software representations 190 and actuator software representations 195, the updating of which is incumbent upon it. For example, the fluid circuit between a solar thermal collector 17 and a balloon 18 can be modeled by a dispensing agent 160.
  • This agent 160 will have a "supplier” agent (the solar collector) and a “client” agent (the balloon) . It is associated with an actuator 120 constituted by the circulator for moving the fluid in the circuit.
  • the internal model of this circulator can be based on a production planning: it will be lit if a production is necessary and if it is turned off.
  • the internal model of the agent 160 can, for example, integrate the cost related to this distribution because of the consumption of the circulator, and calculated for example as follows:
  • An environmental agent 170 provides additional information on the actual environment of the physical system 200 by modeling some of its externalities. This information is represented as a set of devices 180 associated with an internal model. Among these devices 180 may be sensor software representations 190, but no actuator software representation 195. For example, the financial cost of electrical energy from the network can be managed by an environmental agent 170. This agent then ensures the day of a device representing this cost, using an internal model representing, for example, peak and off-peak hours, or dynamic variations in the price of electricity 240. An environmental agent 170 can also integrate a model associated with information relating to weather conditions 250 for example.
  • each device 180 can only be updated by a single agent of the control system 100.
  • Figure 5 shows an example algorithm for performing this operation for a centralized version of the regulation.
  • the main control loop of FIG. 5 manages all the operations triggered at each time step and makes it possible to regulate the physical installation. It is performed according to the control method described in Figure 2 previously introduced. In a distributed architecture, this loop is distributed on the various available calculation means, which correspond to subsystems of the system 100. The beginning of a time step is marked by the reception of the information of the corresponding physical installation. at the receiving step E4.
  • the first action of the multi-agent system 100 is then to update (the first part of the update step E6) the initial value of the prediction of each of the sensor software representations 190 by virtue of the physical value measured by the associated sensor element 1 10 physical. Then, each agent of the system 100 calculates the forecast of the future values of each sensor software representation 190 for which it is responsible, using the internal prediction model associated with this sensor software representation 190 (which corresponds to the second part of the update step E6). This operation is repeated for all index agents i.
  • the initial planning (planning) of the needs of the consumer agents 150 and the initial scheduling of resources for the producing agents 140 are then constructed (which corresponds to the determination step E7):
  • each consumer agent 150 builds a forecast describing its energy needs over the time horizon. This forecast is constructed using Agent 150's internal model, objective function, and utility function.
  • each producing agent 140 constructs a forecast describing the resources it is able to supply over the time horizon and the energy that will be consumed for this production. This prediction is constructed using the internal model of the agent 140. By relying on 180 complementary devices, indicating for example the costs associated with the considered energy, it is then possible to possibly integrate in this forecast. the financial cost associated with the production, and / or the environmental cost, and / or the coefficients of performance with respect to these quantities, and / or other criteria. Note that each producing agent 140 also contains a production schedule, which describes the planning of its production over the time horizon.
  • the resulting schedules correspond to a determined state of all the actuator software representations 195 of the system 100 over the time horizon. From these schedules, each agent updates the next value and the predictions of each actuator software representation 195 for which it is responsible. This corresponds to the step E17 of setting up. These operations are repeated for all the agents of the system, the index k varying from 0 to n.
  • the state of the actuator software representations 195 at the next time step (corresponding to the command scheduled by the agents) is sent to the physical actuators 120, which updates the physical actuators 120 and controls the installation. 200. This corresponds to the emission step E18.
  • the distributed hierarchical optimization step E10 is based on the distributor agents 160. Each distributing agent 160 waits if the prerequisites for its next internal step are not fulfilled. These prerequisites are of two types: when consolidating E1 1 needs, the planning (planning) of the needs of all its "client" agents must be up to date,
  • Each distributing agent 160 performs the following internal steps.
  • the distributor agent 160 retrieves from its "client” agents the schedule of their needs. When all schedules are up to date, he updates his own schedule of requirements. This update can for example be achieved by consolidating the needs of all its "client” agents and by associating them with a utility. This consolidation (symbolized by the first rectangle in the left chart) can for example be achieved by summing the needs of the "client” agents, adding to them the additional need associated with the distribution (step symbolized by the second rectangle in the left flow chart) calculated using the internal model of the distributor agent 160. This additional need makes it possible, for example, to integrate load or heat losses on the distribution network.
  • the utility associated with each of the needs can for example be the maximum of the utilities of the "client” agents having a need at this time step.
  • This schedule is then available from the "supplier” agents whose distributor agent 1 60 is itself a "client” agent.
  • the distributing agent 160 retrieves from its "supplier” agents the schedule of their resources.
  • the implementation of these principles makes it possible to perform another part of the collection step E1 1 described in FIG. 2.
  • An eventual adjustment step E12 then takes place to carry out an optimization (symbolized by the fourth and fifth rectangles in the left flowchart). Then a selection step E13 (symbolized by the first rectangle in the right flow chart) of the resources according to the selected criteria is obligatorily accomplished, as well as an allocation step E14 (symbolized by the second rectangle in the flowchart). right of Figure 6) resources to customers and finally, optionally, a verification step E15 (symbolized by the diamond in the right-hand diagram of Figure 6) of their satisfaction.
  • the objective is to select, among the resources available from the "provider" agents, the resources that minimize the optimization criteria chosen during step E8.
  • the total of the selected resources must also meet the requested comfort.
  • the system 100 checks (phase symbolized by the third diamond in the left-hand flowchart of Figure 6) if the need is covered. If it is not covered, the system 100 goes to the selection phase E13 of the resources. If it is covered, the system 100 proceeds to the step of optimizing the resources by maximizing the performance (step symbolized by the fourth rectangle in the left diagram of FIG. 6): the distributing agent 160 and its agents "suppliers" optimize all resources, in order to obtain a set that maximizes the performance corresponding to their operation in association. This stage makes it possible to take into account the influence of the methods of distribution of the energy on the production of this one.
  • the system 100 proceeds to the selection phase E13 of the resources. On the other hand, if the set of resources does not cover the need, the system 100 proceeds to the step of optimizing the resources closer to the need of the installation 200 (a step symbolized by the fifth rectangle in the organization chart of left of Figure 6).
  • the system 100 can adjust the quantity supplied as needed until the need is covered. Another possibility is to maximize the coefficient of performance of each available resource, until all the resources satisfy the need.
  • the distribution agent 160 has a schedule containing all the selected resources. Then, with reference to the right-hand flow diagram of FIG.
  • the system 100 selects resources E13, resource allocation E14 and satisfaction check E15.
  • a first selection phase E13 (a step symbolized by the first rectangle in the right-hand flow diagram of FIG. 6)
  • the system selects among the resources those that maximize the one or more selected criteria.
  • This selection can be done through different objective functions.
  • the chosen function may be a combination of different criteria, such as the financial cost and the environmental cost: U- 3 C 'financial + b Cenvironmental with a and b constants chosen according to a particular affinity of the user.
  • the objective can also be to prioritize resources according to certain criteria: for example, first select the resources with the lowest financial cost and then, at equal cost, those with the lowest environmental cost. For this type of selection, the use of a coefficient of performance is particularly interesting because it reflects energy efficiency with regard to cost (financial, environmental ). These criteria are parameterizable by the occupant through the interface of the system 100.
  • a resource allocation phase E14 (symbolized by the second rectangle in the right-hand diagram of FIG. 6) resources to the clients, a resource allocation according to the need and the utility is realized.
  • Resources are allocated based on the energy requirement and utility that each "client” agent associates with.
  • the distribution agent uses a utility function, defined as follows: for each "client” agent, if at the instant t this "client” agent has a non-zero energy requirement, then the utility for the resource is equal to the utility of this "client” agent.
  • This allocation E14 makes it possible to construct the production schedule of each "supplier” agent of the distributor agent 160, and the resource schedule of each of its "client” agents. In this step, the distributing agent 160 deduces from the available resources its own needs, which it added during the needs consolidation step in the left-hand organization chart.
  • step E15 the satisfaction associated with the allocation made is verified during step E15 (symbolized by the diamond in the right-hand diagram of FIG. 6) for each of the "client” agents. If the allocation satisfies all of them, it is retained. Otherwise, the allocation E14 and the verification E15 are iterated (new allocation symbolized by the second rectangle of the right-hand organization chart in Figure 6) to maximize the satisfaction of the "client” agents. Finally, the decisions taken are then available for the "client” agents and the "supplier” agents of the distributing agent (step symbolized by the third rectangle of the right-hand organization chart of FIG. 6). These are available for each "supplier” agent in the form of a production plan, and for each "customer” agent in the form of a resource plan.
  • each of the producing agents 140 and each of the distributors 160 has an up-to-date production schedule.
  • the physical system 200 that is to say the power management installation constituted by the multifunction device, consists of a set of sensor elements 1 10, actuator elements 120, and different devices. 230. It is instrumented by different sensors 1 10, detailed in the table below. Each of these sensor elements is associated with a sensor software representation 190. Sensor Description
  • Actuators make it possible to control the devices 230 and the distribution elements, such as circulators and fans (detailed in the table below). To each of these actuator elements 120 is associated an actuator software representation 195.
  • the apparatuses are the double-flow heat exchanger 10, the domestic hot water cylinder 18, the heat pump 15, the solar thermal panel 17 and the electric auxiliary heater 16 for the balloon 18.
  • the functions provided are the ventilation and / or heating and / or cooling and / or hot water production. These last three functions are associated with comfort objectives embodied in the form of instructions 210.
  • the producing agents 140 are the heat pump “PAC”, the solar thermal panel 17 “solar collector” and the electrical resistance resistor 16 labeled "resistance”,
  • the consumer agents 150 correspond to the "thermal comfort", materialized by the building 130, and comfort in domestic hot water (marked “comfort ECS").
  • Ventilation models the ventilation circuit, integrating the fans and the double-flow heat exchanger 10,
  • a "solar circulator” agent models the hydraulic network between the solar panel 17 and the balloon 18, incorporating a circulator
  • a "3 zone balloon” agent models the balloon 18 three zones, and an agent called “heating circulator”. Model the exchange network between the central zone of the balloon 18 and the air entering the house, integrating a circulator.
  • the first called “Weather” provides the forecast corresponding to the outdoor temperature sensor. It can be considered as a weather forecasting agent,
  • the second called “Electricity” ensures the forecast corresponding to the financial cost and the environmental cost of electrical energy from the electricity grid. It can be considered as an electrical network agent.
  • the heat pump 15 is modeled by a generating agent 140 called "PAC". It is associated with the actuator software representation 195 corresponding to the physical actuator allowing it to be switched on and off (Cde pac ). The heat pump 15 can only be controlled on / off, the internal model of this representation software actuator 195 corresponds to a start if energy must be produced at the corresponding time step and to a stop in the opposite case.
  • the internal model of the "PAC" agent can for example include a parameter of variation of yield according to the ventilation:
  • This model makes it possible to estimate the energy supplied by the heat pump 15 and to calculate the compromise between the ventilation and the heating power.
  • the solar panel 17 is modeled in the system 100 by a "producer” agent called “solar collector”. It is associated with the sensor corresponding to the temperature (T AC pteur) -
  • the internal model used for its prediction may for example be the readjusted value of the standby:
  • T final T C Aptor (tfinal ⁇ 24 h) + (T C apteur (tinitial) ⁇ T C apteur (tinitial ⁇ 24h)) with tfin at i the final time and i mma the initial time for the prediction .
  • T m is the average temperature of the sensor
  • T has the outside temperature
  • the panel 17 uses solar energy, its energy cost is zero.
  • the electrical resistance 16 is modeled by a "producer” agent called “Resistance”. It contains the actuator software representation 195 corresponding to its start and stop. The internal model this actuator representation 195 corresponds to a start if energy must be produced at the corresponding time step and a stop in the opposite case. The internal model of the resistance corresponds to its electric power: in operation, it produces its maximum power in thermal energy, and consumes the equivalent in electrical energy:
  • the thermal comfort is modeled by a consumer agent 150 called "thermal comfort" and materialized by the thermal zone of the building 130.
  • This agent 150 is associated with a sensor software representation 190 corresponding to the internal temperature of the building T in t.
  • the objective function corresponds to the instructions provided by the occupant.
  • the heating setpoint can be a time set corresponding to the recommendations of the RT2005 standard: set temperature of 19 degrees between 18:00 and 10:00 in the morning on weekdays, 16 degrees the rest of the time on weekdays, and set at 19 degrees the weekend.
  • the utility function can be associated with a relative priority between domestic hot water and heating requirements, which compete for the use of heat pump resources 15.
  • the internal model of the agent can be based on the thermal model of building 130:
  • Comfort in domestic hot water is modeled by a consumer agent 150 called "Comfort ECS".
  • Its objective function may for example correspond to an instruction T con s_ecs to meet the needs of the occupant at any time (constant at 50 ° C for example).
  • the internal model of the agent 150 may for example correspond to an instant response if necessary, depending on the temperature in the upper zone of the balloon 18: if it is no longer respected, a proportional energy demand to the gap is issued. For example :
  • Another type of internal model can use the domestic hot water consumption history to predict the associated energy requirements.
  • the utility function of the agent 150 can for example be used to manage the relative priority between the heating and the hot water production.
  • the distribution agents 160 model the energy distribution network within the installation.
  • the ventilation circuit incorporating the fans and the double-flow heat exchanger 10, is modeled by a "distributor” agent 160 called “Ventilation”. It is connected to a "provider” agent, the "PAC” agent, and to a “client” agent, the "3 zone balloon” agent described below. It is associated with two sensor software representations 190 corresponding to the outlet temperatures of the double-flow heat exchanger 10, stale air and fresh air.
  • the internal models of these sensor representations 190 correspond to the characteristics of the exchanger 10, and can for example be calculated as follows:
  • the agent "Ventilation” is associated with the actuator software representation 195 for controlling the fans (Cde V entii) -
  • the internal model associated with this actuator representation 195 makes it possible to obtain the following behavior: by default, the ventilation is at least, if not, the value used is that obtained after optimization with its agent "supplier", that is to say the agent "PAC” modeling the heat pump 15.
  • the internal model of the "Ventilation” agent allows to integrate the cost associated with ventilation. This cost is added during the selection step E13 of the resources, in order to take into account the global cost of a resource, including its routing.
  • the model can for example be the following: Consumed ⁇ Pmax * (do + dl * Y + 82 * Y 2 ) * t with a 0 , a 1; has 2 fan characteristic constants, ⁇ the control signal between 0 and 1, P max the maximum power of the fan and ⁇ the operating time.
  • the solar circuit of the installation which makes it possible to circulate a fluid between the solar collector 17 and the balloon 18, is modeled by a "distributor” agent 160 called “solar circulator". It is connected to a “client” agent, the “solar sensor” agent modeling the solar collector 17, and to a “supplier” agent, the "3-zone balloon” agent modeling the three-zone balloon 18.
  • the agent " Solar circulator” "integrates the actuator software representation 195 corresponding to the control of the circulator associated with this circuit.
  • the internal model of this actuator representation 195 may for example correspond to a variable speed control, in order to obtain a regulated speed so that the temperature difference between the low zone of the balloon 18 (T ba i_B) and the temperature of the solar collector 17 (T ca peter) be constant.
  • the internal model of the "solar collector” agent can for example be used to integrate the cost related to its operation:
  • the heating circuit of the installation of FIG. 3 makes it possible to exchange heat between the central part of the three-zone balloon 18 and the incoming air 12 in the building 130, and is modeled by a distributor agent 160 called "Heating circulator". . ". It is connected to a "client” agent, ie the "thermal comfort” agent modeling the thermal comfort of the building 130, and a “supplier” agent, ie the agent "3 zone balloon” modeling the three-zone balloon 18.
  • the agent "Heating circulator. Integrates the actuator software representation 195 corresponding to the circulator for performing this exchange.
  • the internal model of the agent "Circulateur chauff. Can for example be used to integrate the cost related to its operation:
  • the three-zone balloon 18, for its part, is modeled by a distributor agent 160 called “3 zone balloon".
  • This agent is connected to two agents “clients” agent “Circulator heating. Modeling the heating circuit and the agent “Comfort ECS” modeling comfort in hot water, and three agents “suppliers”, namely the agent “ventilation” modeling the ventilation, the agent “Resistance” modeling the resistance and the agent “Solar Circulator” modeling the solar circuit.
  • the agent “3 zone balloon” integrates the three sensor software representations 190 corresponding to the temperature measurements in the low, middle and high zones of the balloon (respectively Tbai_B > Tbaij i and T b ai_H) -
  • the internal model of these software representations sensors 190 can for example be a persistence model:
  • Tbal_H (tfinal) Tbal_ (tinitial)
  • the internal model of the agent "Ball 3 zones" can for example be the model proposed in the RT2012 standard.
  • the environmental agents 170 correspond to a weather forecasting agent called “Weather” and to an electrical network agent called “Electricity”.
  • the environmental weather forecasting agent 170 called "Weather” is associated with the sensor software representation 190 corresponding to the outside temperature T ex t.
  • Various internal models can be used to make a prediction for this sensor representation 190, such as the persistence of the observed temperature, the use of the day's temperature adjusted to that of the day, or even more advanced models.
  • the electrical network agent 170 called "Electricity" is associated with two devices c eu ros and c env respectively corresponding to the financial cost and the environmental cost of the electrical energy from the network.
  • the financial cost can be calculated using an internal model reflecting the operation of peak / off-peak hours:
  • each of the actuators and sensors software representations is well associated with an agent. All the physical actuator elements 120 are therefore well controlled by the control system 100 multi-agents.
  • FIG. 8 represents the observed values of the temperature sensors of the installation over a period of 24 hours.
  • the curve C1 corresponds to the evolution over time of the temperature in the high zone of the balloon T ba i_H,
  • the curve C2 corresponds to the evolution over time of the temperature in the middle zone of the balloon T ba i_M
  • the curve C3 corresponds to the evolution over time of the internal temperature Tint
  • the curve C4 corresponds to the evolution over time of the temperature in the low zone of the balloon T ba i_B
  • the curve C5 is the change in time of the temperature of the solar collector T ca pteur
  • FIG. 9 represents the commands of the different actuator elements 120 of the installation calculated by the control system 100 over the 24-hour period. More precisely :
  • the curve C7 corresponds to the evolution over time of the control of the heat pump 15, i.e. the software representation CdepAc,
  • the curve C8 corresponds to the evolution in time of the control of the electrical resistance 16 of supplement, ie the software representation Cde Re iec,
  • the curve C9 corresponds to the evolution in the time of the control of the ventilation, ie the software representation Cde V ent,
  • the curve C10 corresponds to the evolution in time of the control of the solar circulator, i.e. the software representation
  • the invention described above is a control method associated with a control system, for managing the actuator elements of an energy management facility. These include managing thermal elements of buildings or other installations using thermal systems such as for example heat networks.
  • the control system makes it possible to optimize this management according to different criteria other than solely the energy consumption by integrating the use of electric and non-electric energy sources. Moreover, it takes into account the constraints related to the network of distribution of energy and integrates the distribution auxiliaries into the optimization process. Finally, the solution according to the invention makes it possible to design a reusable system between different installations and systems. To do this, it follows from the foregoing that the method combines an agent-based description, and an optimization process based on this description.
  • the energy management facility by the elements that compose them, is described in the form of consumer agents, distributor agents, producer agents, and environmental agents. These agents include models allowing them to calculate in particular the needs, the resources or the cost associated with the consumption or the production of thermal energy, for example to ensure the functions of heating, cooling, ventilation, or of hot water production. Based on this description, the system then uses a distributed process to optimize energy production, including thermal, based on previously chosen and potentially distinct criteria of overall energy consumption.

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EP13714981.1A 2012-04-12 2013-04-11 Verfahren und system zur steuerung einer energiemanagementanlage Withdrawn EP2836880A1 (de)

Applications Claiming Priority (2)

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FR1253371A FR2989476B1 (fr) 2012-04-12 2012-04-12 Procede et systeme de pilotage d'une installation de gestion de l'energie
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