Systems and methods to detect dirt level of filters

US11009246B2 · US · B2

Patent metadata
FieldValue
Publication numberUS-11009246-B2
Application numberUS-201916555978-A
CountryUS
Kind codeB2
Filing dateAug 29, 2019
Priority dateAug 29, 2019
Publication dateMay 18, 2021
Grant dateMay 18, 2021

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  5. First independent claim

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Abstract

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An approach that collects sensor data associated with a building automation system having filters and determining the optimal timing of the replacement of filters that includes replacement dates based upon use, utility, and labor costs.

First claim

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What is claimed is: 1. A method for identification of a current filter dirty level, comprising: collecting differential pressure sensor data and flow data associated with a flow of materials through a physical filter; storing the differential pressure sensor data and flow data in a data store; filtering a predetermined set of the differential pressure sensor data and flow data to smooth the predetermine set of differential pressure sensor data that results in a first filtered data set; filtering the first filtered data set to further smooth the first filtered data that results in a second filtered data set; applying an edge detection filter to the second filter data set that results in an edge detection filtered data set; and determining a threshold for replacement of the physical filter and an optimal filter replacement date from with the edge detection filtered data set and the flow data. 2. The method for identification of the current filter dirty level of claim 1 , includes: collecting energy sensor data associated with the flow of materials through the physical filter; storing the energy sensor data in the data store; and determining a threshold for replacement of the physical filter and an optimal filter replacement date from with the edge detection filtered data set and the energy sensor data. 3. The method for identification of the current filter dirty level of claim 1 , where determining the optimal filter replacement date also uses historical outdoor air quality data. 4. The method for identification of the current filter dirty level of claim 1 , where determining the optimal filter replacement date also uses historical filter dirty level. 5. The method for identification of the current filter dirty level of claim 1 , where filtering the first filtered data is with a numerical regression method. 6. The method for identification of the current filter dirty level of claim 1 , where applying the edge detection filter is applying the edge detection filter selected from a group consisting of Sobel, Canny, Prewitt, or Laplacian edge detection approach. 7. The method for identification of the current filter dirtiness level of claim 1 , where the physical filter is an air filter. 8. The method for identification of the current filter dirtiness level of claim 1 , where the physical filter is a liquid filter. 9. The method for identification of an optimal filter replacement date of claim 1 , where determining the optimal filter replacement date, further includes using the energy sensor data. 10. The method for identification of an optimal filter replacement date of claim 1 , where determining the optimal filter replacement date includes using a labor cost and a filter cost. 11. A system that identifies a current filter dirty level, comprising: a plurality of sensors coupled to a controller collecting differential pressure sensor data and flow data associated with a flow of materials through a physical filter; a data store accessed by a building controller that stores the differential pressure sensor data and flow data; a first filtered data set generated by a first filter method being applied by the controller to a portion of the differential pressure sensor data and flow data contained in the data store; a second filtered data set generated by a second filter method being applied by the controller to the first filtered data set to further smooth the first filtered data set; an edge detection filter applied by the controller to the second filtered data set by the controller resulting in edge detection filtered data set; and a threshold for filter replacement and an optimal filter replacement date determined by the controller from the edge detection filtered data set and flow data. 12. The system of claim 11 , comprising: energy sensor data collected energy sensors associated with the flow of materials through the physical filter, where the energy sensor data is stored in the data store; and a threshold for replacement of the physical filter and an optimal filter replacement date are determined from with the edge detection filtered data set and the energy sensor data. 13. The system of claim 11 , where the optimal filter replacement date determined by the controller also uses historical outdoor air quality data. 14. The system of claim 11 , where the optimal filter replacement date determined by the controller also uses historical filter dirty level and flow data. 15. The system of claim 11 , where the first filter method is a least square regression method. 16. The system of claim 11 , where the second filter method is a least square regression method. 17. The system claim 11 , where the edge detection filter is selected from a group consisting of a Sobel, Canny, Difference of Gaussian, Prewitt, Scharr, or Laplacian filter. 18. The system of claim 11 , where the physical filter is an air filter. 19. The system of claim 11 , where the physical filter is a liquid filter. 20. The system of claim 11 , where determining the optimal filter replacement date, includes a predetermined historical period of data. 21. The system of claim 11 , where determining the optimal filter replacement date, includes a labor cost and a filter cost being used when the optimal filter replacement data is determined.

Assignees

Inventors

Classifications

  • Efficient control or regulation technologies, e.g. for control of refrigerant flow, motor or heating · CPC title

  • Pressure · CPC title

  • by controlling the speed of ventilators · CPC title

  • F24F11/39Primary

    Monitoring filter performance · CPC title

  • the air flow rate increasing with an increase of air-current or wind pressure · CPC title

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What does patent US11009246B2 cover?
An approach that collects sensor data associated with a building automation system having filters and determining the optimal timing of the replacement of filters that includes replacement dates based upon use, utility, and labor costs.
Who is the assignee on this patent?
Siemens Industry Inc
What technology area does this patent fall under?
Primary CPC classification F24F11/39. Mapped technology areas include Mechanical Engineering.
When was this patent published?
Publication date Tue May 18 2021 00:00:00 GMT+0000 (Coordinated Universal Time) (B2). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 5 related publications on this page (citations in our corpus or others sharing the same primary CPC).