Patent application title: SYSTEM AND METHOD FOR ADJUSTING A FACILITY CONFIGURATION BASED ON A SET OF PARAMETERS FROM A DIGITAL TWIN
Inventors:
IPC8 Class: AG06F938FI
USPC Class:
1 1
Class name:
Publication date: 2020-08-27
Patent application number: 20200272472
Abstract:
Systems and methods for adjusting a facility configuration based on a set
of parameters from a digital twin are disclosed. An example system may
include an energy and compute facility having a compute task or resource,
and an energy source utilization requirement. The system may include a
controller having a facility model circuit to operate a digital twin for
the facility, a facility description circuit to interpret a set of
parameters from the digital twin, and a facility configuration circuit to
operate an adaptive learning system. The adaptive learning system is
configured to adjust a facility configuration based on the set of
parameters from the digital twin and perform a purchase or sale
transaction on an energy credit spot market or an energy credit forward
market.Claims:
1. A transaction-enabling system, comprising: an energy and compute
facility comprising: at least one of a compute task or a compute
resource; and at least one of an energy source or an energy utilization
requirement; and a controller, comprising: a facility model circuit
structured to operate a digital twin for the facility; a facility
description circuit structured to interpret a set of parameters from the
digital twin for the facility; and a facility configuration circuit
structured to operate an adaptive learning system, wherein the adaptive
learning system is configured to adjust a facility configuration based on
the set of parameters from the digital twin for the energy and compute
facility and by performing a purchase or sale transaction on at least one
of an energy credit spot market or an energy credit forward market.
2. The transaction-enabling system of claim 1, wherein the adaptive learning system comprises at least one of a machine learning system and an artificial intelligence (AI) system.
3. The transaction-enabling system of claim 1, wherein adjusting the facility configuration further comprises at least one operation selected from the operations consisting of: performing a purchase or sale transaction on one of an energy spot market or an energy forward market; or performing a purchase or sale transaction on one of a compute resource spot market or a compute resource forward market.
4. The transaction-enabling system of claim 1, wherein the energy and compute facility further comprises a networking task.
5. The system of claim 4, wherein adjusting the facility configuration further comprises performing a transaction-enabling purchase or sale transaction on at least one of a network bandwidth spot market, or a network bandwidth forward market.
6. The transaction-enabling system of claim 4, wherein adjusting the facility configuration further comprises performing a purchase or sale transaction on at least one of a spectrum spot market or a spectrum forward market.
7. The transaction-enabling system of claim 1, further comprising: wherein the facility description circuit is further structured to interpret detected conditions, wherein the detected conditions comprise at least one condition selected from the conditions consisting of: an input resource for the facility; a facility resource; an output parameter for the facility; or an external condition related to an output of the facility; and wherein the facility model circuit is further structured to update the digital twin for the facility in response to the detected conditions.
8. The transaction-enabling system of claim 1, further comprising an associated regenerative energy facility, and an energy requirement for at least one of a compute task, a networking task, or an energy consumption task.
9. The transaction-enabling system of claim 8, wherein the controller further comprises: an energy requirement circuit structured to determine an amount of energy for the associated regenerative energy facility to service the at least one of the compute task, the networking task, or the energy consumption task in response to the energy requirement for the at least one of the compute task, the networking task, or the energy consumption task.
10. The transaction-enabling system of claim 9, further comprising an energy distribution circuit structured to adaptively improve an energy delivery of energy produced by the associated regenerative energy facility between the at least one of the compute task, the networking task, or the energy consumption task.
11. A method, comprising: operating a model comprising a digital twin for a facility; interpreting a set of parameters from the digital twin for the facility; and operating an adaptive learning system, thereby adjusting a facility configuration based on the set of parameters from the digital twin for the facility, wherein adjusting the facility configuration comprises performing a purchase or sale transaction on at least one of an energy credit spot market or an energy credit forward market.
12. The method of claim 11, wherein adjusting the facility configuration further comprises performing a purchase or sale transaction on at least one of an energy spot market or an energy forward market.
13. The method of claim 11, wherein adjusting the facility configuration further comprises performing a purchase or sale transaction on at least one of a spectrum spot market or a spectrum forward market.
14. The method of claim 11, wherein adjusting the facility configuration further comprises performing a purchase or sale transaction on at least one of a compute resource spot market or a compute resource forward market.
15. The method of claim 11, wherein adjusting the facility configuration further comprises performing a purchase or sale transaction on at least one of a network bandwidth spot market, or a network bandwidth forward market.
16. The method of claim 11, further comprising: interpreting detected conditions relative to the facility, wherein the detected conditions comprise at least one condition selected from the conditions consisting of: an input resource for the facility; a facility resource; an output parameter for the facility; and an external condition related to an output of the facility; and operating the adaptive learning system, thereby updating the digital twin for the facility in response to the detected conditions.
17. The method of claim 11, further comprising operating an associated regenerative energy facility having an energy requirement for at least one of a compute task, a networking task, or an energy consumption task.
18. The method of claim 17, further comprising determining an amount of energy for the associated regenerative energy facility to service the at least one of the compute task, the networking task, or the energy consumption task in response to the energy requirement for the at least one of the compute task, the networking task, or the energy consumption task.
19. The method of claim 18, further comprising adaptively improving an energy delivery of energy produced by the associated regenerative energy facility between the at least one of the compute task, the networking task, or the energy consumption task.
20. The method of claim 11, wherein the adaptive learning system comprises at least one of a machine learning system and an artificial intelligence (AI) system.
Description:
User Contributions:
Comment about this patent or add new information about this topic: