High performance distributed computing environment particularly suited for reservoir modeling and simulation
US-2015263900-A1 · Sep 17, 2015 · US
US12019437B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12019437-B2 |
| Application number | US-202217722050-A |
| Country | US |
| Kind code | B2 |
| Filing date | Apr 15, 2022 |
| Priority date | Feb 10, 2017 |
| Publication date | Jun 25, 2024 |
| Grant date | Jun 25, 2024 |
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A web services platform includes a data collector and a timeseries service. The data collector is configured to collect feedback samples provided by one or more sensors of a building management system and generate one or more feedback timeseries including a plurality of the feedback samples. The timeseries service is configured to identify a feedback control workflow that uses the feedback timeseries as an input and defines one or more processing operations to be applied to the feedback samples of the feedback timeseries, perform the one or more processing operations defined by the feedback control workflow to generate a control signal timeseries including a set of control signal samples, and provide a control signal including at least one of the control signal samples or the control signal timeseries as an output to controllable building equipment of the building management system that operate using the control signal as an input.
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What is claimed is: 1. A web platform comprising: one or more processors; and one or more storage media storing instructions thereon that, when executed by the one or more processors, cause the one or more processors to: store a plurality of control workflows on the one or more storage media, a control workflow of the plurality of control workflows to execute for a piece of equipment and a second control workflow of the plurality of control workflows to execute for a second piece of equipment; receive a timeseries of data values from the piece of equipment of an environment located remote from the web platform; select, from the plurality of control workflows, the control workflow that uses the timeseries of data values as an input and defines one or more processing operations to be applied to the timeseries of data values responsive to a detection that the control workflow executes for the piece of equipment; execute the control workflow based on the timeseries of data values to generate a control signal; and provide the control signal to the piece of equipment of the environment, the piece of equipment operating based on the control signal. 2. The web platform of claim 1 , wherein the timeseries of data values include a plurality of feedback values measured by a sensor of the piece of equipment of the environment. 3. The web platform of claim 1 , wherein the control signal includes a timeseries comprising a set of control signal samples. 4. The web platform of claim 3 , wherein execution of the control workflow comprises: transforming one or more samples of the timeseries of data values into one or more samples of the control signal by applying the one or more samples of the timeseries of data values to the control workflow; and assembling the one or more samples of the control signal to form a control signal timeseries. 5. The web platform of claim 1 , wherein the instructions cause the one or more processors to: identify one or more other timeseries required as inputs to the control workflow, wherein the one or more other timeseries comprise a setpoint timeseries comprising a plurality of setpoint samples, the plurality of setpoint samples defining setpoints corresponding to samples of the timeseries of data values; and generate an enriched control workflow comprising the control workflow, the timeseries of data values, and the one or more other timeseries. 6. The web platform of claim 1 , further comprising: a directed acyclic graph (DAG) database storing a plurality of DAGs, each of the plurality of DAGs defining a particular control workflow; wherein the instructions cause the one or more processors to: determine whether any of the plurality of DAGs stored in the DAG database are configured to use the timeseries of data values as a DAG input. 7. The web platform of claim 1 , wherein the control workflow comprises at least one of a state-based control workflow, an extremum seeking control (ESC) workflow, a proportional-integral (PI) control workflow, a proportional-integral-derivative (PID) control workflow, or a model predictive control (MPC) workflow to transform the timeseries of data values into the control signal using a control technique. 8. The web platform of claim 1 , wherein the instructions cause the one or more processors to select the control workflow by: analyzing inputs of the plurality of control workflows including the control workflow; and selecting the control workflow from the plurality of control workflows in response to a determination that the input of the control workflow utilizes the timeseries of data values. 9. The web platform of claim 1 , wherein the instructions cause the one or more processors to execute a proportional-integral-derivative (PID) control workflow to: generate an error timeseries comprising a plurality of error samples, the plurality of error samples indicating a difference between one sample of the timeseries of data values and a corresponding setpoint; and generate the control signal by applying a set of PID control operations to the error timeseries. 10. The web platform of claim 9 , wherein applying the set of PID control operations to the error timeseries comprises: generating an integrated error timeseries based on the plurality of error samples of the error timeseries; generating a derivative error timeseries based on a change in value between consecutive samples of the error timeseries; calculating a proportional gain component by multiplying the error timeseries by a proportional gain parameter; calculating an integral gain component by multiplying the integrated error timeseries by an integral gain parameter; calculating a derivative gain component by multiplying the derivative error timeseries by a derivative gain parameter; and combining the proportional gain component, the integral gain component, and the derivative gain component to generate the control signal. 11. A method comprising: storing, by a cloud computing platform comprising one or more processors, a plurality of control workflows on the one or more storage media, a control workflow of the plurality of control workflows to execute for a piece of equipment and a second control workflow of the plurality of control workflows to execute for a second piece of equipment; receiving, by the cloud computing platform, a timeseries of data values from the piece of equipment of an environment located remote from the cloud computing system; selecting, by the cloud computing platform, from the plurality of control workflows, the control workflow that uses the timeseries of data values as an input and defines one or more processing operations to be applied to the timeseries of data values responsive to a detection that the control workflow executes for the piece of equipment; executing, by the cloud computing platform, the control workflow based on the timeseries of data values to generate a control signal; and providing, by the cloud computing platform, the control signal to the piece of equipment of the environment, the piece of equipment operating based on the control signal. 12. The method of claim 11 , wherein the timeseries of data values include a plurality of feedback values measured by a sensor of the piece of equipment of the environment. 13. The method of claim 11 , wherein the control signal includes a timeseries comprising a set of control signal samples. 14. The method of claim 13 , wherein executing, by the cloud computing system, the control workflow comprises: transforming one or more samples of the timeseries of data values into one or more samples of the control signal by applying the one or more samples of the timeseries of data values to the control workflow; and assembling the one or more samples of the control signal to form a control signal timeseries. 15. The method of claim 11 , further comprising: identifying, by the cloud computing system, one or more other timeseries required as inputs to the control workflow, wherein the one or more other timeseries comprise a setpoint timeseries comprising a plurality of setpoint samples, the plurality of setpoint samples defining setpoints corresponding to samples of the timeseries of data values; and generating, by the cloud computing system, an enriched control workflow comprising the control workflow, the timeseries of data values, and the one or more other timeseries. 16. The method of claim 11 , further comprising: determining, by the cloud computing platform, whether any of the plurality of DAGs stored in a DAG database storing a plurality of DAGs, each of the plurality
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